GEOSPATIAL ASSESSMENT OF ARTIFICIAL LIGHTING IMPACTS ON SEA TURTLES IN TORTUGUERO, COSTA RICA. Nerine Constant. Dr. Andrew Read, Advisor

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GEOSPATIAL ASSESSMENT OF ARTIFICIAL LIGHTING IMPACTS ON SEA TURTLES IN TORTUGUERO, COSTA RICA By Nerine Constant Dr. Andrew Read, Advisor 11 August 2015 Masters project submitted in partial fulfillment of the requirements for the Master of Environmental Management degree in the Nicholas School of the Environment of Duke University 2015

EXECUTIVE SUMMARY Artificial lighting on sea turtle nesting beaches repels adult females searching for nest sites and disrupts hatchling seafinding, with potentially substantial effects on nesting activity and hatchling survival. Artificial lighting is one of a host of anthropogenic threats, including intentional harvest, bycatch in fisheries, interaction with marine debris, and habitat degradation, that have contributed to global sea turtle population declines. Because artificial light on nesting beaches has the potential to impact sea turtle life history stages that are essential to reproductive success, managing artificial lighting is a vital component of nesting beach protection. Furthermore, identifying nesting beach habitat vulnerable to the effects of artificial lighting is critical to guiding conservation efforts that aim to protect sea turtle populations. Green turtles (Chelonia mydas) are classified as endangered globally by the International Union for Conservation of Nature (IUCN). Tortuguero Beach in Costa Rica supports the largest green turtle nesting population in the Western Hemisphere, with more than one hundred thousand green turtle nests laid on the beach every year. The Sea Turtle Conservancy (STC) has monitored and worked to protect the nesting population since 1959, and since 2004, the organization has conducted surveys to monitor artificial lighting on the beach. The primary objective of this project was to support the Sea Turtle Conservancy s efforts by: 1) Assessing the effect of artificial lighting from adjacent development on green turtle nesting in Tortuguero, 2) Mapping artificial lighting on the beach in order to identify the brightest areas as appropriate targets for light pollution reduction efforts, and 3) Developing a geographic information system (GIS) database to facilitate future monitoring and beach protection by STC. Between June and August 2014, I conducted walking surveys to map the nesting beach and light sources using a Trimble Juno SB GPS unit, and I developed a GIS database that formed the basis for subsequent analyses and data visualization. I built STC s monitoring data from 2004 through 2014 into a polygon layer of the beach subdivided into mile sections defined by mile markers erected by STC. During the new moon in June and July 2014, I conducted brightness surveys in concert with STC s light surveys and measured brightness in units of luminance at 50-meter intervals along the beach using a Unihedron Sky Quality Meter. Using spatial data of the beach and light sources, luminance data from brightness assessments, and monitoring data from STC, I determined a mean luminance value for each mile section, examined the relationship between luminance and nesting activity, and mapped light pollution on the beach. N. Constant ii

I found that mean luminance and the total number of green turtle emergences per mile section were significantly negatively correlated. Mean luminance exceeded the minimum threshold for light pollution in 6 of the 43 mile sections, and there were significantly fewer emergences in mile sections experiencing light pollution. Mean luminance was highest in mile sections adjacent to Tortuguero Village, where sources of artificial light were concentrated. These findings were consistent with STC s light survey data, and mean light count and the total number of green turtle emergences per mile section from 2004 to 2014 were also significantly negatively correlated. Cumulatively, these results suggest that artificial lighting from adjacent development impacts green turtle utilization of nesting habitat and changes the spatial distribution of green turtle nesting activity on Tortuguero Beach. These results were consistent with the findings of previous studies conducted on sea turtle nesting beaches and support the need for a turtle-friendly lighting initiative in Tortuguero. Successful management of light pollution on Tortuguero Beach will require a coordinated effort between the Sea Turtle Conservancy, the Costa Rican Electricity Institute (ICE), and local stakeholders. I made the following recommendations for addressing light pollution in Tortuguero: 1) Light pollution management efforts should focus on Tortuguero Village, where the majority of light sources are found and luminance was highest. 2) Light pollution management should involve both restoration of native beachfront vegetation and improvements in lighting technology. 3) Future brightness surveys to document reduction of light pollution in response to STC s efforts could focus on mile sections adjacent to Tortuguero Village. Brightness data from this study provide a baseline against which to compare future brightness levels on the beach. 4) Targeted monitoring of hatchling disorientation near Tortuguero Village would provide additional insight into artificial lighting impacts on the nesting population and help identify specific lights that continue to be problematic after management actions are taken. N. Constant iii

ACKNOWLEDGEMENTS I would like to express my profound gratitude to everyone who helped me with this project. To my advisor, Dr. Andy Read, for his immensely helpful and constructive feedback, for his time and expertise, and for his thoughtful and kind support throughout this program. To Dr. Emma Harrison for her valuable advice, for providing the long-term monitoring data used in this analysis, for allowing me to conduct my research from the John H. Phipps Biological Field Station, and for introducing me to the Sea Turtle Conservancy s remarkable efforts in Tortuguero. To the Sea Turtle Conservancy and Station staff especially Raúl García Varela, Georgina Zamora Quílez, David Aparici, and Diana Horgen for helping with logistics, for joining me on brightness surveys, and for being so welcoming to me and my GPS. To the 2014 Green Turtle Season Research Assistants Hanna Brungardt, George Glen, Adelaide Lindseth, Emma McDowell, Lucas Meers, Clara Umaran, and Rob Watson for volunteering on mapping excursions, for helping with brightness surveys, and for making life at the Station wonderful. To Renato Bruno at Global Vision International Jalova for accommodating me at the Jalova Base and for accompanying me through many, many miles of mapping and lightning storms. To Ralph Pace and Kristen Delmonte for their advice, for welcoming me to Tortuguero the first time I arrived as a Research Assistant in 2013, and for encouraging me to pursue this project. Finally, to my mum and dad for their love, encouragement, and support. Thank you! Gracias! Obrigada! N. Constant iv

TABLE OF CONTENTS EXECUTIVE SUMMARY ACKNOWLEDGEMENTS TABLE OF CONTENTS ii iv v INTRODUCTION 1 Ecological Light Pollution and Global Sea Turtle Populations 1 Artificial Lighting and Sea Turtle Hatchlings 2 Artificial Lighting and Sea Turtle Nesting 3 Study Objective 6 METHODS 7 Study Area 7 Mapping Tortuguero Beach 13 Brightness Surveys 13 Sea Turtle Conservancy Light Survey and Track Survey Data 15 Identifying Light Pollution Management Targets 17 RESULTS 18 Brightness and Nesting Activity 18 Light Count and Nesting Activity 24 Light Pollution Management Targets 36 DISCUSSION 42 Addressing Light Pollution in Tortuguero 46 Conclusion 50 REFERENCES 51 APPENDIX A: Map of Brightness Survey Sampling Locations 55 APPENDIX B: Map of Interpolated Luminance and Mean Luminance 57 APPENDIX C: Map of Hatchling Disorientation Events 59 N. Constant v

INTRODUCTION Ecological Light Pollution and Global Sea Turtle Populations Humans have altered nighttime light levels around the world, with an estimated twenty percent of land surface affected by light pollution (Bird, Branch, & Miller, 2004; Cinzano, Falchi, & Elvidge, 2001). Artificial sky brightness has increased with growing human population and development, and light pollution is increasing globally at approximately six percent every year (Gaston, Davies, Bennie, & Hopkins, 2012; Hölker, et al., 2010). The term ecological light pollution refers to artificial light that changes natural light-dark cycles in ecosystems (Longcore & Rich, 2004). Because light regimes provide important spatial and temporal orientation cues to animals, ecological light pollution can alter animal behavior (Hölker, et al., 2010; Longcore & Rich, 2004). The varied effects of light pollution on wildlife have been widely documented and may critically influence fitness (Gaston, Davies, Bennie, & Hopkins, 2012; Kyba, Ruhtz, Fischer, & Hölker, 2011; Longcore & Rich, 2004). Alteration of natural light regimes impacts species migration, communication, reproduction, foraging behavior, habitat utilization, predation and other interspecies interactions, and rates of mortality (Gaston, Davies, Bennie, & Hopkins, 2012; Longcore & Rich, 2004). Consequences of light pollution have been particularly welldocumented for sea turtle species (Bird, Branch, & Miller, 2004; Longcore & Rich, 2004). Artificial lighting on sea turtle nesting beaches repels adult females searching for nest sites and disrupts hatchling seafinding, with potentially substantial effects on nesting activity and hatchling survival (Witherington & Martin, 2003; Witherington, 1992). Artificial lighting is one of a host of anthropogenic threats, including intentional harvest, bycatch in fisheries, interaction with marine debris, and habitat degradation, that have contributed to global sea turtle population declines (Salmon, 2003; Witherington & Martin, 2003; Eckert, 1995). Because stages of sea turtle life history essential to reproductive success occur on nesting beaches (Limpus & Kamrowski, 2013), the increasing exposure of this habitat to artificial light due to intensifying coastal development around the world has critical implications for sea turtle conservation (Salmon, 2003; Salmon & Witherington, 1995; Witherington, 1992). N. Constant 1

Artificial Lighting and Sea Turtle Hatchlings Artificial lighting disrupts orientation of sea turtle hatchlings on the beach and once they reach the ocean (Lorne & Salmon, 2007; Witherington, 1991). In the absence of artificial light, hatchlings typically emerge from their nests at night and crawl rapidly to the ocean, using visual cues to guide seafinding behavior (Tuxbury & Salmon, 2005; Witherington & Martin, 2003). Sea turtles are sensitive to light in the spectral range of 350 to 700 nm and are most attracted to shorter wavelengths, particularly blue, violet, and near-ultraviolet light (Berry, Booth, & Limpus, 2013; Karnad, Isvaran, Kar, & Shanker, 2009; Sella, Salmon, & Witherington, 2006; Witherington & Martin, 2003; Witherington & Bjorndal, 1991). In natural conditions, short wavelength light is most intense in the direction of the sea, allowing hatchlings to find the water (Berry, Booth, & Limpus, 2013; Kawamura, Naohara, Tanaka, Nishi, & Anraku, 2009). Once hatchlings reach the water, they begin a frenzied offshore swim guided by the direction of their travel down the beach, wave orientation, magnetic cues, and brightness (Lorne & Salmon, 2007; Salmon & Wyneken, 1987). In disturbed beach environments, hatchling orientation is determined by the competitive interaction of natural and artificial cues (Tuxbury & Salmon, 2005). High intensity, short-wavelength artificial light disrupts hatchling perception of natural cues, thereby interfering with their seafinding ability (Karnad, Isvaran, Kar, & Shanker, 2009; Lorne & Salmon, 2007). Hatchlings may become misoriented (oriented toward artificial light) or disoriented (incapable of orienting) in the presence of artificial light (Lorne & Salmon, 2007). Misorientation is predicted with intense, discrete sources of light and weakly perceived natural cues (Tuxbury & Salmon, 2005; Salmon, Tolbert, Painter, Goff, & Reiners, 1995). Both direct point sources visible from the beach and indirect light sources, visible as sky-glow from inland light reflecting off clouds and sea spray, can affect hatchlings (Berry, Booth, & Limpus, 2013; Karnad, Isvaran, Kar, & Shanker, 2009). Disrupted orientation increases rates of hatchling mortality (Salmon & Witherington, 1995; Peters & Verhoeven, 1994; Witherington & Bjorndal, 1991). Rates of hatchling survival are higher when movement from nest to water is rapid and direct, reducing likelihood of mortality due to dehydration, exhaustion, or predation (Bourgeois, N. Constant 2

Gilot-Fromont, Viallefont, Boussamba, & Deem, 2009; Witherington & Bjorndal, 1991). In the presence of artificial light, hatchlings may wander for extended periods prior to reaching the sea or they may crawl landward and die (Berry, Booth, & Limpus, 2013). Circling behavior associated with disorientation results in expenditure of limited energy stores and increased exposure to hazards (Limpus & Kamrowski, 2013). Disrupted orientation on the nesting beach also influences the survival and behavior of hatchlings once they reach the sea (Harewood & Horrocks, 2008). Disorientation depletes energy stores typically utilized in the energetically costly offshore swim, resulting in slower swimming speeds and increased vulnerability to predation in nearshore areas where the concentration of aquatic predators is high (Berry, Booth, & Limpus, 2013; Harewood & Horrocks, 2008). These effects have been documented across sea turtle species and geographic regions (e.g. loggerheads in Australia, Berry, Booth, & Limpus, 2013; leatherbacks in Gabon, Bourgeois, Gilot-Fromont, Viallefont, Boussamba, & Deem, 2009; olive ridleys in India, Karnad, Isvaran, Kar, & Shanker, 2009; hawksbills in Barbados, Harewood & Horrocks, 2008). Artificial Lighting and Sea Turtle Nesting Artificial lighting alters the nesting behavior of sea turtles (Salmon, Reiners, Lavin, & Wyneken, 1995; Witherington, 1992). Sea turtles nest on sandy beaches and deposit their eggs above the high-tide line (Witherington & Martin, 2003). Nesting occurs predominantly at night (Witherington & Martin, 2003; Hendrickson, 1995). Nesting is seasonal, and females will emerge on the beach to nest repeatedly during a single nesting season (Witherington & Martin, 2003; Hendrickson, 1995). The nesting process is similar across sea turtle species and occurs in a series of characteristic stages: 1) emerging from the sea, 2) searching for a nesting location, 3) preparing the nest site by digging a body pit, 4) digging an egg chamber, 5) laying eggs, 6) covering the eggs with sand, 7) camouflaging the nest by flinging sand, 8) orienting toward the water, and 9) returning to the sea (Witherington & Martin, 2003; Hendrickson, 1995). Nesting behavior may vary by site of emergence from the sea, where nest construction occurs, whether the attempt to nest is abbreviated or abandoned, and orientation of return to the sea (Witherington & Martin, 2003; Witherington, 1992). Changes in nesting behavior can impact the success of the N. Constant 3

nesting attempt, hatchling production, and the condition of the nesting turtle (Witherington & Martin, 2003). External stimuli, including artificial lighting, can alter the accuracy, duration, and timing of nesting behaviors (Witherington & Martin, 2003). Adult sea turtles use visual cues for navigation on land and likely use similar seafinding cues to hatchlings (Limpus & Kamrowski, 2013; Witherington, 1992). Consequently, artificial lighting can result in disorientation and failure to find the sea (Limpus & Kamrowski, 2013; Witherington & Martin, 2003; Witherington, 1992). Furthermore, artificial lighting disrupts nest site selection, most commonly by deterring nesting attempts in brightly lit areas (Witherington & Martin, 2003). The presence of artificial lighting deters females from emerging from the water to nest and can cause females to leave the beach before depositing eggs (Witherington & Martin, 2003; Woody, Horrocks, & Vermeer, 1998). Nesting activity is inversely correlated with the presence of artificial light, with females preferentially nesting on dark beaches (Mortimer, 1995; Salmon, Reiners, Lavin, & Wyneken, 1995; Witherington, 1992). The impacts of artificial light on sea turtle nesting have been directly tested through experimental manipulation of beach brightness (Witherington & Martin, 2003; Witherington, 1992). In the absence of other anthropogenic disturbance, artificial light reduces nesting activity, and this effect is dose-dependent (Salmon, Tolbert, Painter, Goff, & Reiners, 1995; Witherington, 1992). Additionally, on heavily developed beaches with high levels of artificial lighting, the distribution of nests is correlated with the presence of tall structures that serve as a barrier to light from development adjacent to the beach (Salmon, Reiners, Lavin, & Wyneken, 1995). This preferential nesting behavior has not been observed on undisturbed beaches (Salmon, Reiners, Lavin, & Wyneken, 1995). Assessment of potential nesting locations using visual cues is likely an important component of nest site selection by females (Witherington, 1992), and nest site selection is influenced by beach conditions (Salmon, Reiners, Lavin, & Wyneken, 1995). Physical and biological characteristics associated with productive sea turtle rookeries include beaches that are easily accessible from the sea, are composed of sand that fosters optimal incubation conditions, experience little erosion or wave action, have low levels of terrestrial predation, and are near oceanic currents that facilitate hatchling migration to N. Constant 4

nursery habitat (Mortimer, 1995; Salmon, Reiners, Lavin, & Wyneken, 1995). Nest site selection represents a tradeoff between these variables, with females selecting locations that have favorable conditions for safe nesting and hatchling production (Witherington & Martin, 2003; Mortimer, 1995; Salmon, Reiners, Lavin, & Wyneken, 1995). By deterring nesting emergences, artificial lighting can cause females to reemerge in less appropriate nesting areas when making subsequent nesting attempts in unlighted areas (Witherington & Martin, 2003). Because artificial lighting may lead to utilization of otherwise suboptimal nesting habitat, artificial lighting on nesting beaches constitutes loss of sea turtle habitat (Witherington & Martin, 2003). N. Constant 5

Study Objective Because artificial light on nesting beaches has the potential to impact sea turtle life history stages that are essential to reproductive success, managing artificial lighting is a vital component of nesting beach protection (Limpus & Kamrowski, 2013; Witherington & Martin, 2003). Furthermore, identifying nesting beach habitat vulnerable to the effects of artificial lighting is critical to guiding conservation efforts that aim to protect sea turtle populations (Kamrowski, Limpus, Moloney, & Hamann, 2012; Witherington & Martin, 2003). Green turtles (Chelonia mydas) are classified as endangered globally by the International Union for Conservation of Nature (IUCN) (Seminoff, 2004). Global annual female nesting populations have declined between 48 and 67 percent over the past 100 to 150 years (Troëng, Evans, Harrison, & Lageux, 2005; Seminoff, 2004). Tortuguero Beach in Costa Rica supports the largest green turtle nesting population in the Western Hemisphere, and the Sea Turtle Conservancy (STC) has monitored and worked to protect the nesting population since 1959 (Sea Turtle Conservancy, 2014; Troëng & Rankin, 2005; Carr, Carr, & Meylan, 1978). The primary objective of this project was to support the Sea Turtle Conservancy s efforts in Tortuguero by: 1) Assessing the effect of artificial lighting from adjacent development on green turtle nesting in Tortuguero, 2) Mapping artificial lighting on Tortuguero Beach in order to identify the brightest areas as appropriate targets for light pollution reduction efforts, and 3) Developing a geographic information system (GIS) database to facilitate future monitoring and beach protection by STC. N. Constant 6

METHODS Study Area Tortuguero Beach spans twenty-two miles of the northern Caribbean coast of Costa Rica and supports the largest and most important green turtle nesting colony in the Western Hemisphere (Figure 1) (Sea Turtle Conservancy, 2014; Troëng & Rankin, 2005). More than one hundred thousand nests are laid on the beach every year by an estimated 17,402 to 37,290 female green turtles (Troëng & Rankin, 2005). 1 The beach also supports leatherback (Dermochelys coriacea), hawksbill (Eretmochelys imbricata), and loggerhead (Caretta caretta) sea turtle nesting (Harrison & Meletis, 2010). The entire nesting beach and much of the adjacent land is protected from coastal development by Tortuguero National Park (Sea Turtle Conservancy, 2014). 2 However, the northern 3 3/4 miles of nesting beach are exposed to artificial lighting from Tortuguero Village and associated development (Gordon & Harrison, 2012; Prieto & Harrison, 2012). 1 An estimated total of 104,411 green turtle nests are laid on Tortuguero Beach annually, based on mean nesting from 1999 to 2003 (Troëng & Rankin, 2005). 2 Tortuguero National Park was declared by executive decree in 1970 and protected by law in 1975 (Troëng & Rankin, 2005). N. Constant 7

Figure 1. Map of study area: Tortuguero, Costa Rica. N. Constant 8

The founder of the Sea Turtle Conservancy, Dr. Archie Carr, initiated the sea turtle research program in Tortuguero in 1955, and the organization has been monitoring the sea turtle nesting population on Tortuguero Beach since 1959 (Carr, Carr, & Meylan, 1978; Sea Turtle Conservancy, 2014). 3 Presently, STC monitors approximately eighteen miles of the nesting beach, extending from the mouth of the Tortuguero River in the north to the Jalova Lagoon in the south (Sea Turtle Conservancy, 2013). Research is conducted under a permit from the Tortuguero Conservation Area (ACTo) of the Ministry of Environment and Energy of Costa Rica (MINAET) (Prieto & Harrison, 2012). The STC has erected mile markers that divide the beach into monitoring units defined by the nearest mile marker to the north, beginning with -3/8 at the Tortuguero River and ending with 18 at the Jalova Lagoon (Figure 2) (Gordon & Harrison, 2012). 4 The beach is divided into eighths of a mile until mile maker 5, half miles from 5 to 15, and eighths of a mile beyond mile marker 15 (Gordon & Harrison, 2012). The STC conducts daily track surveys and nightly tagging patrols over the northern 5 3/8 miles of beach and weekly track surveys over the entire eighteen miles (Sea Turtle Conservancy, 2013). Long-term monitoring has yielded a historical database of the spatial and temporal distribution of nesting activity, nest survivorship and hatching success, and level of illegal take (Sea Turtle Conservancy, 2013). 3 The Sea Turtle Conservancy is an international nonprofit 501(c)(3) based in Gainesville, Florida. It is the oldest sea turtle research and conservation organization. http://www.conserveturtles.org/about.php 4 The negative mile value at the river mouth is due to accretion of sand occurring after the mile marking system was established. N. Constant 9

Figure 2. Map of study area: Tortuguero Beach. N. Constant 10

Since 2004, STC has conducted regular light surveys to monitor artificial lighting and document human impacts over the northern 5 3/8 miles of nesting beach (Figure 3). Artificial lighting in Tortuguero is a concern because of the high conservation value of Tortuguero Beach and the exposure of the beach to artificial light from adjacent development. More than one hundred thousand tourists visit Tortuguero yearly, many drawn by the opportunity to observe nesting sea turtles (Harrison & Meletis, 2010; Prieto & Harrison, 2012). Rapid growth of the ecotourism industry, from a few hundred visitors in the 1990s to present annual visitation rates, is largely responsible for the expansion of Tortuguero Village and supporting infrastructure, including a number of tourist lodges and cabinas adjacent to the beach (Harrison & Meletis, 2010). Artificial lights are concentrated near Tortuguero Village, and additional lights from tourist lodges are distributed to the north of the village (Gordon & Harrison, 2012; Prieto & Harrison, 2012). There are no lights within Tortuguero National Park, which starts in mile section 3 3/8 and continues south past mile 18 (Gordon & Harrison, 2012; Prieto & Harrison, 2012). N. Constant 11

Figure 3. Map of mile sections included in Sea Turtle Conservancy light surveys. N. Constant 12

Mapping Tortuguero Beach To develop a GIS database that formed the basis for subsequent analyses and data visualization, I mapped Tortuguero Beach from the mouth of the Tortuguero River (10 35 14.822 N, 83 31 23.022 W) to the Jalova Lagoon (10 21 15.07 N, 83 23 23.498 W). Between 02 June and 11 August 2014, I collected geospatial data during walking surveys using a Trimble Juno SB Handheld GPS unit (2 to 5 meter accuracy) 5 running ArcPad 10 (Esri) and the Trimble GPScorrect extension. 6 Data were referenced to the WGS 1984 datum to minimize datum shift error. I conducted differential post-processing in Trimble GPS Pathfinder 5.40 using the VERA Continuously Operating Reference Station (CORS) from the National Geodetic Survey. 7 Using ArcGIS 10.2 (Esri), I imported data into a personal geodatabase with UTM Zone 17N projection referenced to the WGS 1984 datum. Long-term monitoring data from STC are associated with mile sections but not with specific point locations. Thus, a polygon layer of the beach was needed to build this dataset into a geodatabase. I created a polygon layer of the study area divided into mile sections, with each alongshore section of the beach between mile markers recorded as an individual polygon. Upper polygon boundaries were defined by the vegetation line, lower polygon boundaries were defined by the low water line, and alongshore divisions were defined by STC s mile markers. 8 I also collected reference layers of mile markers, artificial light sources, beach exits and trails, and other relevant landmarks. 9 I digitized reference layers of the region and Tortuguero Village using ArcGIS 10.2 (Esri) World Imagery basemap, and I obtained boundaries for Tortuguero National Park from ArcGIS Online. 10 Brightness Surveys To assess the distribution and intensity of artificial lighting on Tortuguero Beach, I conducted brightness surveys in June and July 2014 from mile -3/8 at the mouth of the 5 See Trimble Juno Series User Guide. http://trl.trimble.com/docushare/dsweb/get/document- 437119/JunoSeries_UserGuide_v1_RevB_USGU5239_ENG.pdf 6 See Trimble GPScorrect Extension Datasheet. http://trl.trimble.com/docushare/dsweb/get/document- 132235/12991AD_GPScorrect_DS_0613_HR_nc.pdf 7 See National Geodetic Survey CORS Map. http://www.ngs.noaa.gov/cors_map/ 8 The vegetation line was determined by the seaward edge of stable vegetation (Boak & Turner, 2005). 9 Beach exits and trails are maintained by Tortuguero National Park. 10 Áreas de conservación de Costa Rica Map Package by daguilar. http://www.arcgis.com/home/item.html?id=a769b169f4ec4833ab5e27058a638a0f N. Constant 13

Tortuguero River (10 35 14.822 N, 83 31 23.022 W) to mile marker 5 in Tortuguero National Park (10 31 1.134 N, 83 29 21.978 W). This survey area includes the entire extent of beach exposed to artificial lighting from adjacent development in addition to a portion of unlighted beach in Tortuguero National Park. This survey area also matches the spatial extent of the light surveys STC conducts every month to obtain a light count by mile section (Sea Turtle Conservancy, 2013). I conducted the brightness surveys in concert with STC s light surveys, which begin at the mouth of the Tortuguero River at 8:00 pm during the new moon (Sea Turtle Conservancy, 2013). Bright natural light can mitigate the effects of artificial light on sea turtles because background illumination is increased, thereby reducing the perceived intensity of artificial light (Salmon & Witherington, 1995; Tuxbury & Salmon, 2005). Thus, artificial lighting assessments are most effective during the new moon, when levels of natural light are at a minimum (Witherington & Martin, 2003). During brightness surveys conducted on the nights of 27-28 June and 26-28 July, 11 I collected point layers of brightness values along the beach. I took brightness measurements perpendicular to the vegetation using a Unihedron Sky Quality Meter (SQM) from the waterline at 50-meter intervals along the beach. This corresponded to taking five brightness measurements for each mile section (at the mile markers at each section endpoint and at three equidistant points within each section), for a total of 173 brightness sampling locations per survey (see Appendix A). 12 At each sampling location, I recorded three brightness readings to obtain a mean brightness value, 13 and I collected a point location using the Trimble GPS unit. The SQM is a handheld brightness meter that averages brightness over an approximately 84 degree arc. 14 This is a wide field of view, which is appropriate for assessing the impact of artificial light on sea turtles because sea turtles integrate brightness over a wide horizontal range (Witherington & Martin, 2003; Witherington, 1995). Because 11 Surveys required two nights to complete: one for the northern portion (mile section -3/8 to 2 4/8) and a second for the southern portion (mile section 2 5/8 to 4 7/8). Due to a storm on 27 July, mile sections 4 6/8 and 4 7/8 were completed on a third night. 12 I recorded brightness at four rather than five locations in mile section -3/8, located at the Tortuguero River Mouth, because it is shorter than the other mile sections. 13 Standard Error of the mean brightness value at each sampling point averaged 4.96%. 14 See Unihedron SQM FAQ. http://www.unihedron.com/projects/darksky/faqsqm.php N. Constant 14

brightness is a measure of the intensity of light relative to the spectral sensitivity of the detector, the spectral sensitivity of a light meter should match the target species in order to provide relevant measurements that are meaningful in the context of evaluating impacts of light pollution on a particular species (Witherington & Martin, 2003). The SQM sensor is filtered to detect wavelengths within the visible light spectrum from approximately 300 to 750 nm, 15 and this spectral response curve is similar to the wavelength sensitivity of sea turtles (Witherington & Martin, 2003). The SQM reports brightness in magnitudes per square arcsecond (mag/arcsec 2 ) with a precision of 0.10 units. 16 I converted all SQM measurements into candelas per square meter (cd/m 2 ) in Microsoft Excel using the conversion provided by Unihedron 17. These are the standard units of luminance, or the intensity of visible light emitted over a unit area (Witherington & Martin, 2003). Sea Turtle Conservancy Light Survey and Track Survey Data To assess the effect of artificial lighting from adjacent development on green turtle nesting in Tortuguero and characterize trends in light counts and nesting activity, I used luminance data from brightness surveys and obtained light survey and track survey data from 2004 to 2014 from STC. 18 Light surveys are conducted monthly during the new moon from June through October (Sea Turtle Conservancy, 2013). Observers walk the northern 5 3/8 miles of beach and record lights and light sources by mile section (Sea Turtle Conservancy, 2013). Track surveys are conducted daily during the green turtle nesting season from June through November (Sea Turtle Conservancy, 2013). Observers walk the northern 5 3/8 miles of beach and record nests and false crawls from the previous night by mile section (Sea Turtle Conservancy, 2013). 19 I built these data into the attribute table of the Tortuguero Beach mile sections polygon in ArcGIS 10.2 (Esri). To examine the relationship between brightness and green turtle nesting activity in June and July 2014, I used regression analysis in Microsoft Excel. I calculated a mean 15 See Unihedron SQM FAQ. http://www.unihedron.com/projects/darksky/faqsqm.php 16 See Unihedron SQM Instruction Sheet. http://www.unihedron.com/projects/darksky/instruction_sheet.pdf 17 Conversion: [luminance value in cd/m 2 ] = 10.8 * 10 4 * 10-0.4 * [SQM value in mag/arcsec2]. http://unihedron.com/projects/darksky/magconv.php 18 Light survey and track survey data were provided by the Sea Turtle Conservancy under a Data Use Agreement. Data remain the property of STC and may not be used without written consent. 19 A false crawl is an emergence that does not lead to nesting (Witherington & Martin, 2003). N. Constant 15

luminance value for each mile section by averaging the five brightness measurements taken for each section for both months. The resulting mean luminance for each mile section corresponded closely to values on a luminance surface interpolated using the Geostatistical Wizard in ArcGIS 10.2 (Esri), 20 which accounted for spatial autocorrelation of the brightness data (see Appendix B). 21 I used the total number of green turtle emergences (the sum of nests and false crawls) per mile section for both months in this regression. Ratios of nests and false crawls, including nesting success, 22 are not reliable indicators of the effects of artificial lighting because artificial lighting reduces both nesting and nonnesting emergences (Witherington & Martin, 2003). I also mapped the spatial distribution of luminance and emergences in ArcGIS 10.2 (Esri). To compare the mean number of emergences between mile sections that exceed and are below the brightness threshold for light pollution, I used a t-test assuming unequal variance in Microsoft Excel. When sky brightness exceeds natural background radiation by more than ten percent of natural night sky brightness, then light pollution is occurring (Schreuder, 2008; Cinzano, Falchi, & Elvidge, 2001). The accepted average value for natural background radiation, or a reference night sky brightness expected from natural light sources excluding the moon, is 0.000352 cd/m 2 (Narisada & Schreuder, 2004). Thus, I used a value of 0.0003872 cd/m 2 as a minimum threshold to define mile sections experiencing light pollution. To characterize temporal trends in light counts and nesting activity, I analyzed emergences and light count data from 2004 to 2014 using single factor ANOVAs in Microsoft Excel. To characterize spatial trends in light counts and nesting activity, I analyzed emergences and light count data from 2004 to 2014 using t-tests assuming unequal variance in Microsoft Excel. I also mapped the spatial distribution of light counts 20 The Kriging interpolation method in ArcGIS 10.2 (Esri) uses values from a set of input points to produce a surface of estimated values. This method models the statistical correlation between sample point location and value in order to estimate the surface. http://resources.arcgis.com/en/help/main/10.1/index.html#//00q90000001t000000 21 Spatial autocorrelation or dependence occurs when values of nearby points are more similar than values of distant points. The match between the interpolated luminance surface and the mean luminance values for each mile section suggests that calculating average brightness using the five sampling points was an appropriate method for producing a representative brightness value for each section. http://help.arcgis.com/en/arcgisdesktop/10.0/help/index.html#//003100000036000000 22 Nesting success is the proportion of emergences that result in nests (Witherington & Martin, 2003). N. Constant 16

and emergences in ArcGIS 10.2 (Esri). To confirm that luminance values from brightness surveys and STC s light counts were correlated and that changes in light count corresponded to changes in brightness on the beach, I used regression analysis and a t-test assuming unequal variance in Microsoft Excel. I then examined the relationship between mean light count and total number of emergences per mile section from 2004 to 2014 using regression analysis in Microsoft Excel. Identifying Light Pollution Management Targets To identify the brightest areas on Tortuguero Beach as appropriate targets for light pollution reduction efforts by STC, I mapped the intensity of artificial lighting on Tortuguero Beach using ArcGIS 10.2 (Esri). I averaged luminance values from June and July 2014 to obtain a mean brightness value for each mile section, and I mapped luminance with a reference overlay of artificial light sources. To compare mean luminance between mile sections that are adjacent to Tortuguero National Park and land outside Tortuguero National Park, I used a t-test assuming unequal variance in Microsoft Excel. To compare mean luminance between mile sections that are adjacent to Tortuguero Village and other land outside Tortuguero National Park, I used a t-test assuming unequal variance in Microsoft Excel. N. Constant 17

RESULTS Brightness and Nesting Activity Mean luminance from June to July 2014 ranged from 0.00007 cd/m 2 to 0.00746 cd/m 2 (Figure 4; Figure 6) and total number of green turtle emergences per mile section ranged from 2 to 123 emergences (Figure 5; Figure 6). Mean luminance was highest in mile sections adjacent to Tortuguero Village, from mile section 2 6/8 to 3 2/8 (Figure 4; Figure 6). Total number of emergences was highest in mile sections adjacent to Tortuguero National Park, from mile section 3 3/8 to 4 7/8 (Figure 5; Figure 6). Mean luminance and the total number of green turtle emergences per mile section from June to July 2014 were significantly correlated, with total number of emergences decreasing as mean luminance increased (n = 43, R 2 = 0.103, p = 0.036) (Figure 7). Of the 43 mile sections, 6 exceeded the minimum threshold for light pollution (Figure 4; Figure 8). Mile sections 2 7/8, 3, 3 1/8, and 3 2/8 adjacent to Tortuguero Village and mile sections -3/8 and -2/8 near the mouth of the Tortuguero River exceeded the minimum threshold for light pollution (Figure 4; Figure 9). For the 37 mile sections not experiencing light pollution, the total number of green turtle emergences per mile section did not vary significantly with mean luminance (n = 37, R 2 = 0.00004, p = 0.97) (Figure 10). Mean from June to July 2014 of total number of emergences was significantly lower in mile sections experiencing light pollution than in mile sections that did not exceed the minimum threshold for light pollution (t41 = 6.73, p < 0.0001) (Figure 11). Mean total number of emergences was 6.33 1.41 SE in mile sections experiencing light pollution and 36.38 4.23 SE in mile sections that did not exceed the minimum threshold for light pollution (Figure 11). N. Constant 18

Figure 4. Mean luminance by mile section from June to July 2014 on Tortuguero Beach. Mile sections adjacent to Tortuguero Village in red. Mile sections adjacent to Tortuguero National Park in green. Dashed horizontal bar corresponds to the minimum threshold for light pollution (0.0003872 cd/m 2 ). Figure 5. Total number of green turtle emergences by mile section from June to July 2014 on Tortuguero Beach. Mile sections adjacent to Tortuguero Village in red. Mile sections adjacent to Tortuguero National Park in green. N. Constant 19

Figure 6. Map of mean luminance and total number of green turtle emergences from June to July 2014 on Tortuguero Beach. N. Constant 20

Figure 7. Total number of green turtle emergences per mile section as a function of mean luminance from June to July 2014 on Tortuguero Beach (n = 43, p = 0.036). Figure 8. Total number of green turtle emergences per mile section as a function of mean luminance from June to July 2014 on Tortuguero Beach. Dashed vertical bar corresponds to the minimum threshold for light pollution (0.0003872 cd/m 2 ). N. Constant 21

Figure 9. Map of light pollution (mean luminance > 0.0003872 cd/m 2 ) and total number of green turtle emergences from June to July 2014 on Tortuguero Beach. N. Constant 22

Figure 10. Total number of green turtle emergences per mile section not experiencing light pollution as a function of mean luminance from June to July 2014 on Tortuguero Beach (n = 37, p = 0.97). Figure 11. Mean from June to July 2014 of total number of green turtle emergences SE in mile sections experiencing light pollution (n = 6) and mile sections that did not exceed the minimum threshold for light pollution (n = 37) on Tortuguero Beach. Mean total number of emergences per mile section was significantly lower in mile sections experiencing light pollution (p < 0.0001). N. Constant 23

Light Count and Nesting Activity Mean monthly light count from 2004 to 2014 on Tortuguero Beach did not vary significantly by month (single factor ANOVA, F4,43 = 0.12, p = 0.98) (Figure 12) or year (single factor ANOVA, F9,33 = 1.31, p = 0.27) (Figure 13). 23 The mean monthly light count averaged from June to October was 104.78 lights (Figure 12), and the mean monthly light count averaged from 2004 to 2014 was 104.70 lights (Figure 13). Mean monthly number of green turtle emergences from 2004 to 2014 on Tortuguero Beach varied significantly by month (single factor ANOVA, F4,50 = 29.50, p < 0.0001) (Figure 14) but not by year (single factor ANOVA, F10,44 = 0.66, p = 0.76) (Figure 15). Mean number of green turtle emergences peaked in August and September (Figure 14). 23 No light surveys were conducted in 2009. N. Constant 24

Figure 12. Mean monthly light count SE from 2004 to 2014 on Tortuguero Beach. No significant difference in mean light count between months (p = 0.98). Dashed horizontal bar corresponds to the mean monthly light count averaged from June to October (104.78 lights). Figure 13. Mean monthly light count SE from June to October on Tortuguero Beach. No significant difference in mean light count between years (p = 0.27). Dashed horizontal bar corresponds to the mean monthly light count averaged from 2004 to 2014 (104.70 lights). N. Constant 25

Figure 14. Mean monthly number of green turtle emergences SE from 2004 to 2014 on Tortuguero Beach. Mean number of emergences varied significantly between months (p < 0.0001). Figure 15. Mean monthly number of green turtle emergences SE from June to October on Tortuguero Beach. No significant difference in mean monthly number of emergences between years from 2004 to 2014 (p = 0.76). N. Constant 26

Mean light count from 2004 to 2014 was highest in mile sections adjacent to Tortuguero Village, from mile section 2 6/8 to 3 2/8 (Figure 16; Figure 18). Total number of green turtle emergences from 2004 to 2014 was highest in mile sections adjacent to Tortuguero National Park, from mile section 3 3/8 to 4 7/8 (Figure 17; Figure 18). Mean light count from 2004 to 2014 was significantly lower in mile sections adjacent to Tortuguero National Park than in mile sections adjacent to land outside Tortuguero National Park (t29 = -3.79, p = 0.0003) (Figure 19). Mean from 2004 to 2014 of total number of emergences was significantly higher in mile sections adjacent to Tortuguero National Park than in mile sections adjacent to land outside Tortuguero National Park. (t30 = 11.91, p < 0.0001) (Figure 20). Mean light count was significantly higher in mile sections adjacent to Tortuguero Village than in mile sections adjacent to other land outside Tortuguero National Park (t4 = -5.95, p = 0.002) (Figure 21). Mean total number of emergences was significantly lower in mile sections adjacent to Tortuguero Village than in mile sections adjacent to other land outside Tortuguero National Park (t9 = 5.94, p = 0.0001) (Figure 22). N. Constant 27

Figure 16. Mean light count by mile section from 2004 to 2014 on Tortuguero Beach. Mile sections adjacent to Tortuguero Village in red. Mile sections adjacent to Tortuguero National Park in green. Figure 17. Total number of green turtle emergences by mile section from 2004 to 2014 on Tortuguero Beach. Mile sections adjacent to Tortuguero Village in red. Mile sections adjacent to Tortuguero National Park in green. N. Constant 28

Figure 18. Map of mean light count and total number of green turtle emergences from 2004 to 2014 on Tortuguero Beach. N. Constant 29

Figure 19. Mean light count SE in mile sections adjacent to Tortuguero National Park (n = 13) and outside Tortuguero National Park (n = 30) from 2004 to 2014. Mean light count was significantly lower in mile sections adjacent to Tortuguero National Park (p = 0.0003). Figure 20. Mean from 2004 to 2014 of total number of green turtle emergences SE in mile sections adjacent to Tortuguero National Park (n = 13) and outside Tortuguero National Park (n = 30). Mean total number of emergences was significantly higher in mile sections adjacent to Tortuguero National Park (p < 0.0001). N. Constant 30

Figure 21. Mean light count SE in mile sections adjacent to Tortuguero Village (n = 5) and other land outside Tortuguero National Park (n = 25) from 2004 to 2014. Mean light count was significantly higher in mile sections adjacent to Tortuguero Village (p = 0.002). Figure 22. Mean from 2004 to 2014 of total number of green turtle emergences SE in mile sections adjacent to Tortuguero Village (n = 5) and other land outside Tortuguero National Park (n = 25). Mean total number of emergences was significantly lower in mile sections adjacent to Tortuguero Village (p = 0.0001). N. Constant 31

Mean light count from June to July 2014 was significantly correlated to mean luminance from June to July 2014, with luminance increasing as light count increased (n = 43, R 2 = 0.555, p < 0.0001) (Figure 23; Figure 24). Mean light count was significantly higher in mile sections experiencing light pollution than in mile sections that did not exceed the minimum threshold for light pollution (t5 = -3.45, p = 0.009) (Figure 25; Figure 26). Mean light count was 10.08 2.66 SE in mile sections experiencing light pollution and 0.97 0.32 SE in mile sections that did not exceed the minimum threshold for light pollution (Figure 26). Mean light count and the total number of green turtle emergences per mile section from 2004 to 2014 were significantly correlated, with number of emergences decreasing as light count increased (n = 43, R 2 = 0.379, p = < 0.0001) (Figure 27). Figure 23. Mean luminance as a function of mean light count per mile section from June to July 2014 on Tortuguero Beach (n = 43, p < 0.0001). N. Constant 32

Figure 24. Map of mean luminance and mean light count from June to July 2014 on Tortuguero Beach. N. Constant 33

Figure 25. Mean luminance as a function of mean light count per mile section from June to July 2014 on Tortuguero Beach. Dashed horizontal bar corresponds to the minimum threshold for light pollution (0.0003872 cd/m 2 ). Figure 26. Mean light count SE in mile sections experiencing light pollution (n = 6) and mile sections that did not exceed the minimum threshold for light pollution (n = 37) from June to July 2014 on Tortuguero Beach. Mean light count per mile section was significantly higher in mile sections experiencing light pollution (p = 0.009). N. Constant 34

Figure 27. Total number of green turtle emergences per mile section as a function of mean light count from 2004 to 2014 on Tortuguero Beach (n = 43, p < 0.0001). N. Constant 35

Light Pollution Management Targets Mean luminance from June to July 2014 was highest in mile sections adjacent to the mouth of the Tortuguero River (Figure 28) and Tortuguero Village (Figure 29). Mean luminance was lowest in mile sections adjacent to Tortuguero National Park, where there are no sources of artificial light adjacent to the beach (Figure 30). San Francisco Village, located on the landward side of Tortuguero River, is the light source nearest to mile sections at the mouth of the Tortuguero River (Figure 28). Between the river mouth and Tortuguero Village, there are three businesses (Tortuga Lodge, All Rankin s Lodge, Laguna Lodge, and Mawamba Lodge) and one private residence (Villa Nova) that are sources of artificial light (Figure 28; Figure 29). Sources of artificial light are concentrated in Tortuguero Village (Figure 29; Figure 31). Major light sources in Tortuguero Village are a mix of businesses, private residences, and public streetlights (Figure 31). Mean luminance from June to July 2014 was significantly lower in mile sections adjacent to Tortuguero National Park than in mile sections adjacent to land outside Tortuguero National Park (t29 = -2.28, p = 0.015) (Figure 32). Mean luminance was 0.00014 0.00002 cd/m 2 in mile sections adjacent to Tortuguero National Park and 0.00093 0.00035 cd/m 2 in mile sections adjacent to land outside Tortuguero National Park (Figure 32). Mean luminance from June to July 2014 was significantly higher in mile sections adjacent to Tortuguero Village than in mile sections adjacent to other land outside Tortuguero National Park (t4 = 3.27, p = 0.015) (Figure 33). Mean luminance was 0.00435 0.00125 cd/m 2 in mile sections adjacent to Tortuguero Village and 0.00025 0.00008 cd/m 2 in mile sections adjacent to other land outside Tortuguero National Park (Figure 33). N. Constant 36

Figure 28. Map of mean luminance from June to July 2014 on Tortuguero Beach from mile section -3/8 to 1 4/8 with reference overlay of artificial light sources. N. Constant 37

Figure 29. Map of mean luminance from June to July 2014 on Tortuguero Beach from mile section 1 4/8 to 3 3/8 with reference overlay of artificial light sources. N. Constant 38

Figure 30. Map of mean luminance from June to July 2014 on Tortuguero Beach from mile section 3 1/8 to 4 7/8 with reference overlay of artificial light sources. N. Constant 39

Figure 31. Map of mean luminance from June to July 2014 on Tortuguero Beach adjacent to Tortuguero Village with reference overlay of artificial light sources. N. Constant 40

Figure 32. Mean luminance SE in mile sections adjacent to Tortuguero National Park (n = 13) and outside Tortuguero National Park (n = 30) from June to July 2014. Mean luminance was significantly lower in mile sections adjacent to Tortuguero National Park (p = 0.015). Dashed horizontal bar corresponds to the minimum threshold for light pollution (0.0003872 cd/m 2 ). Figure 33. Mean luminance SE in mile sections adjacent to Tortuguero Village (n = 5) and other land outside Tortuguero National Park (n = 25) from June to July 2014. Mean luminance was significantly higher in mile sections adjacent to Tortuguero Village (p = 0.015). Dashed horizontal bar corresponds to the minimum threshold for light pollution (0.0003872 cd/m 2 ). N. Constant 41

DISCUSSION This study aimed to support the Sea Turtle Conservancy s efforts in Tortuguero by assessing the effect of artificial lighting from adjacent development on green turtle nesting, identifying areas on Tortuguero Beach as targets for light pollution reduction efforts, and developing a GIS database to facilitate future monitoring and beach protection. I found that mean luminance and the total number of green turtle emergences per mile section were significantly negatively correlated in June and July 2014. Mean luminance exceeded the minimum threshold for light pollution in 6 of the 43 mile sections, and there were significantly fewer emergences in mile sections experiencing light pollution. Mean luminance was highest in mile sections adjacent to Tortuguero Village and near the mouth of the Tortuguero River, and light sources were concentrated in Tortuguero Village. These findings were consistent with STC s light survey data, and mean light count and the total number of green turtle emergences per mile section from 2004 to 2014 were also significantly negatively correlated. Cumulatively, these results suggest that artificial lighting from adjacent development impacts green turtle utilization of nesting habitat and changes the spatial distribution of green turtle nesting activity on Tortuguero Beach. Mean luminance and total number of green turtle emergences per mile section in June and July 2014 were significantly negatively correlated, suggesting that artificial lighting decreases nesting activity. However, a linear model was not a good fit for the relationship. For mile sections with very low luminance values (<0.00035 cd/m 2 ), total number of emergences ranged from 5 to 123, and there was no significant correlation between luminance and emergences. In contrast, for all mile sections with higher luminance values, total number of emergences were uniformly low and did not exceed 11 emergences. Using the luminance threshold for light pollution provided a meaningful way to quantify the impact of artificial lighting on nesting activity. Total number of emergences was almost six times lower in mile sections experiencing light pollution than in mile sections with luminance values below the threshold. Furthermore, the threshold value used in this analysis was a conservative estimate of light pollution. The value for natural background radiation (0.000352 cd/m 2 ) used to calculate the light pollution threshold N. Constant 42

(0.0003872 cd/m 2 ) is an accepted global average value for the lower observational limit of luminance (Schreuder, 2008; Narisada & Schreuder, 2004). Not only were 37 of the 43 mile sections below the light pollution threshold, but they were also below the average natural background luminance value, suggesting that natural background radiation on Tortuguero Beach is darker than the average value. Furthermore, the impact of light pollution is not constant, and a source of light pollution in a protected area is predicted to cause a greater level of disturbance than a source of light pollution in a developed area (Schreuder, 2008). Tortuguero Beach has been protected as part of Tortuguero National Park since the 1970s (Troëng & Rankin, 2005), and intensified development adjacent to the beach is relatively recent (Harrison & Meletis, 2010). Consequently, the number of mile sections experiencing the impacts of light pollution likely exceeds the 6 mile sections identified as priority management targets. The negative correlation between luminance and emergences in June and July 2014 is consistent with the relationship between light counts from STC s light surveys and emergences from 2004 to 2014. Mean light count and the total number of green turtle emergences per mile section from 2004 to 2014 were significantly negatively correlated, again suggesting that artificial lighting decreases nesting activity. The correlation between light counts and emergences from 2004 to 2014 was stronger than the correlation between luminance and emergences in 2014. The difference in strength between the correlations might have been due to the timing of the surveys. Due to logistic constraints, brightness surveys were conducted in June and July rather than throughout the nesting season, while light surveys are conducted from June through October. An examination of temporal trends in light counts revealed that light counts did not vary significantly between months, suggesting that surveying luminance in June and July provided a representative measure of brightness on the beach throughout the nesting season. However, nesting activity is lower in June and July, and this might have contributed to the difference between the two correlations. As expected, mean luminance and light count in June and July 2014 were significantly positively correlated, and the spatial distribution of luminance and light counts were similar, with the highest light counts recorded in mile sections adjacent to N. Constant 43

Tortuguero Village. Number of lights did not perfectly predict luminance, and this is unsurprising given the differing ability of light counts and luminance measurements to capture variation in brightness on the beach and their differing susceptibility to sources of error. Luminance measurements are potentially impacted by the presence of lightning or cloud cover, though brightness surveys in this study were halted during storms. Light counts do not provide an indication of variation in the intensity of the lights counted, and not all light sources emit the same intensity of light. Light counts do not distinguish between lights based on their proximity to the beach, and distance from the beach alters the contribution of a light source to brightness on the beach. Light counts do not capture brightness contributions from lights that are not directly visible from the beach, and these lights may still contribute to sky-glow. Lights counts also do not capture the influence of lights on brightness in other mile sections, which was evident when comparing the spatial distribution of light counts and luminance. Even though there are no lights adjacent to the beach within Tortuguero National Park, luminance values within the park reveal an increase in brightness moving northward towards the limit of Tortuguero Village. Similarly, there were two mile sections, -3/8 and -2/8, in which light counts were relatively low yet luminance values exceeded the threshold for light pollution. Because these mile sections are located at the mouth of the Tortuguero River, adjacent land is free of vegetation. Consequently, these mile sections have very little protection from light sources located adjacent to other mile sections, on the other side of the river, or to the north of the study area. Despite these potential sources of error, there was a significant difference in the number of lights in mile sections experiencing light pollution and in mile sections that did not exceed the threshold for light pollution, and when mean light count exceeded 10 lights within a mile section, mean luminance predictably exceeded the light pollution threshold. The negative correlation between brightness and nesting activity on Tortuguero Beach is consistent with the findings of previous studies investigating the impact of artificial lighting on sea turtle nesting beaches (Witherington & Martin, 2003; Woody, Horrocks, & Vermeer, 1998; Mortimer, 1995; Witherington, 1992). However, nest placement has been associated with a number of beach characteristics (Salmon, Reiners, Lavin, & Wyneken, 1995; Mortimer, 1995), and correlative studies do not separate the N. Constant 44

impact of artificial lighting from other anthropogenic activities or environmental variables. Sea turtles nesting in mile sections near Tortuguero Village are not only exposed to more artificial light, but they are also more likely to be exposed to human activity on the beach. It was not uncommon to see tourists and locals on the beach near the village during nightly tagging patrols, when the beach is legally closed to the public. Human movement can disturb sea turtle nesting behavior and increase rates of abbreviation and abandonment (Witherington & Martin, 2003). However, even if human traffic on the beach was part of the reason fewer emergences were recorded adjacent to the village, artificial lighting increases the likelihood that a nesting turtle will see and be disturbed by movement (Witherington & Martin, 2003). Whether artificial lighting repels females by increasing sea turtle perception of human movement or directly by increasing brightness, artificial light may have negative consequences on fitness and hatchling production. If depressed nesting activity adjacent to Tortuguero Village is indicative of females selecting alternative nesting locations, females may be emerging and nesting in areas with less appropriate nesting and incubation conditions (Witherington & Martin, 2003). Thus, the possibility that human traffic is also deterring emergences does not diminish the importance of addressing light pollution in Tortuguero Village. Furthermore, Witherington (1992) manipulated brightness in order to directly test the effect of artificial lighting on nesting activity in the absence of other human impacts, and he conducted these experiments on Tortuguero Beach in addition to a beach in Florida. In order to avoid the confounding effects of human disturbance from Tortuguero Village, he selected a site within Tortuguero National Park approximately nine miles south of the village (Witherington, 1992). He randomly assigned one of three consecutive nights to one of three treatments and repeated this for fourteen three-night trials (Witherington, 1992). From sunset to sunrise, he subjected a 350-meter central area within a 1450-meter portion of beach to one of three treatments: illumination with mercury vapor luminaires (broadspectrum white light), illumination with low pressure sodium vapor luminaires (long wavelength yellow light), or an unlighted control condition (Witherington, 1992). The following morning, he totaled tracks and nests in 50-meter intervals to assess green turtle nesting activity (Witherington, 1992). He demonstrated that illumination of the beach with N. Constant 45

broad-spectrum white light significantly reduced both nesting and non-nesting emergences in the absence of other human impacts (Witherington, 1992). Ultimately, Witherington s study provides strong support for the ability of broad-spectrum white artificial lighting to alter the spatial patterns of green turtle nesting activity on Tortuguero Beach and corroborates the findings of the assessment I conducted. Addressing Light Pollution in Tortuguero The findings of this study emphasize the need to address the problem of artificial lighting on Tortuguero Beach. Tortuguero Beach supports one of the two largest green turtle nesting populations in the world, and protection of this nesting population has the potential to benefit marine ecosystems throughout the wider Caribbean region (Troëng, Evans, Harrison, & Lageux, 2005; Troëng & Rankin, 2005). The Sea Turtle Conservancy s long-term beach protection efforts in Tortuguero have met with remarkable success. From 1971 to 2003, STC documented a 471% increase in nesting on Tortuguero Beach, suggesting that conservation efforts are contributing to the recovery of this green turtle nesting population (Troëng & Rankin, 2005). Managing artificial lighting is a vital component of nesting beach protection (Limpus & Kamrowski, 2013; Witherington & Martin, 2003), and continued protection of the Tortuguero nesting population will include measures to reduce the impact of artificial lighting on Tortuguero Beach. I recommend the following actions to address light pollution in Tortuguero. Focus light pollution management efforts on Tortuguero Village Luminance was highest in mile sections adjacent to Tortuguero Village, and this is where the majority of light sources are located. According to Witherington & Martin (2003), if light from an artificial source is visible to a person standing anywhere on a beach, then that light is likely to cause problems for the sea turtles that nest there (p. 1). Though all light sources visible on Tortuguero Beach are a potential threat, managing light pollution can be both time-intensive and expensive (Kamrowski, Limpus, Moloney, & Hamann, 2012). Therefore, allocating limited time and financial resources to the brightest areas will increase the effectiveness of management efforts. N. Constant 46

The STC engages in environmental education and community outreach activities in Tortuguero Village, typically through a dedicated Outreach and Education Coordinator (Prieto & Harrison, 2012). A preliminary step in reducing light pollution on the beach will be compiling a list of key facts about the negative impacts of light pollution and the environmental and economic benefits of turtle-friendly lighting and disseminating that information in the community as part of a turtle-friendly lighting initiative. Because light sources in Tortuguero Village are a mix of businesses, private residences, and public streetlights, successful management of light pollution will require a coordinated effort between STC and a number of local stakeholders. In particular, the Costa Rican Electricity Institute (ICE), which is responsible for the public streetlights in the village, has supported STC s efforts to address this problem in the past (Gordon & Harrison, 2012; Prieto & Harrison, 2012). Restore native beachfront vegetation and improve lighting technology Detailed information on effective methods for managing light pollution on sea turtle nesting beaches is widely available (Witherington & Martin, 2003). Two critical aspects of light pollution management on sea turtle nesting beaches are improving lighting technology and restoring native beachfront vegetation (Witherington & Martin, 2003). Improving lighting technology generally involves 1) replacing white lights with amber, yellow, or red lights that emit long wavelengths and are less attractive to sea turtles, 2) shielding lights so they focus specifically on areas humans want illuminated, 3) using the lowest-wattage bulb that serves the intended function of the light, and 4) mounting lights lower to the ground to reduce the area illuminated (Barshel, et al., 2014; Witherington & Martin, 2003). These methods are employed by STC in lighting retrofits conducted in Florida and have proven highly effective at reducing impacts on sea turtles (Barshel, et al., 2014; Oberholtzer, 2014). However, the initial investment required to replace existing lights with alternative lighting technology is a potential barrier to implementation in Tortuguero. Protecting and restoring native beachfront vegetation is a potential alternative to retrofits, though a combination of improved lighting technology and vegetation restoration would be most effective (Witherington & Martin, 2003). Vegetation growing between N. Constant 47

developed land and nesting beaches serves as a natural barrier to light pollution and reduces the visibility of lights on the beach (Witherington & Martin, 2003). Vegetation clearing by beachfront property owners is a persistent problem in Tortuguero, and outreach efforts should be made to discourage this practice (Prieto & Harrison, 2012). Salmon et al. (1995) suggested that restoring vegetation could be used to increase nesting densities in areas experiencing light pollution. This method could be employed in Tortuguero as an activity coordinated by STC with the cooperation of ICE staff, who have expressed an interest in supporting a revegetation program (Prieto & Harrison, 2012). Document reduction of light pollution in response to management efforts This assessment not only identifies targets for light pollution reduction efforts, but it also provides baseline data against which to compare future brightness levels on the beach. Because conducting brightness surveys on the entire northern 5 3/8 miles of nesting beach is time-intensive, incorporating brightness surveys into regular monitoring efforts is not logistically feasible. However, future brightness surveys could focus on mile sections adjacent to Tortuguero Village in order to assess changes in light pollution in response to management efforts and confirm that methods used in the most problematic areas have been effective. Additionally, demonstrating the effectiveness of management actions can be used to garner support from the community and motivate continued participation in conservation efforts. Monitor impacts of light pollution on sea turtle hatchlings This study focused on impacts of artificial light on nesting female sea turtles. Nesting females are less sensitive to artificial lighting than hatchlings, but the impacts of light pollution on nesting females are easier to document as part of regular track surveys (Witherington & Martin, 2003). Though there are significantly fewer emergences in mile sections experiencing light pollution on Tortuguero Beach, nesting activity is not reduced to zero in these areas, and hatchlings emerging from nests in these mile sections face elevated mortality risk (Bourgeois, Gilot-Fromont, Viallefont, Boussamba, & Deem, 2009; Witherington & Bjorndal, 1991). The STC records data on hatchling disorientation events, but this information is collected incidentally (Sea Turtle Conservancy, 2013) (Appendix C). N. Constant 48

Targeted monitoring of hatchling disorientation near Tortuguero Village would provide additional insight into artificial lighting impacts on the nesting population and help identify specific lights that continue to be problematic after management actions are taken. Documenting hatchling mortality has also been used as a powerful tool to gain public support for light pollution reduction efforts (Witherington, 2002). N. Constant 49

Conclusion Artificial light on nesting beaches has the potential to impact sea turtle life history stages that are essential to reproductive success, and managing light pollution is a critical component of protecting nesting beaches and conserving sea turtle populations (Limpus & Kamrowski, 2013; Witherington & Martin, 2003). On Tortuguero Beach, increased brightness associated with artificial lighting from adjacent development is correlated with reduced green turtle emergences, suggesting that light pollution is altering the spatial distribution of green turtle nesting activity. Of the anthropogenic threats facing sea turtles, light pollution is one of the most manageable because it does not persist in the environment once the source has been addressed (Witherington & Martin, 2003). Continued protection of the Tortuguero green turtle nesting population will include measures to reduce the impact of artificial lighting on Tortuguero Beach. Successful management of light pollution on Tortuguero Beach should be a coordinated effort between the Sea Turtle Conservancy and local stakeholders that focuses light pollution management efforts on Tortuguero Village, restores native beachfront vegetation and improves lighting technology, documents reduction of light pollution in response to management efforts, and monitors impacts of light pollution on sea turtle hatchlings. N. Constant 50

REFERENCES Barshel, N., Bruce, R., Grimm, C., Haggitt, D., Lichter, B., McCray, J.,... Shudes, K. (2014). Sea Turtle Friendly Lighting: A Model Ordinance for Local Governments & Model Guidelines for Incorporation into Governing Documents of Planned Communities: Condominiums, Cooperatives and Homeowners Associations. Gainesville, FL: The Conservation Clinic at the University of Florida s Levin College of Law & the Sea Turtle Conservancy. Berry, M., Booth, D. T., & Limpus, C. J. (2013). Artificial lighting and disrupted sea-finding behaviour in hatchling loggerhead turtles (Caretta caretta) on the Woongarra coast, south-east Queensland, Australia. Australian Journal of Zoology, 61(2), 137-145. Bird, B. L., Branch, L. C., & Miller, D. L. (2004). Effects of coastal lighting on foraging behavior of beach mice. Conservation Biology, 18(5), 1435-1439. Boak, E. H., & Turner, I. L. (2005). Shoreline definition and detection: A review. Journal of Coastal Research, 21(4), 688-703. Bourgeois, S., Gilot-Fromont, E., Viallefont, A., Boussamba, F., & Deem, S. L. (2009). Influence of artificial lights, logs and erosion on leatherback sea turtle hatchling orientation at Pongara National Park, Gabon. Biological Conservation, 142(1), 85-93. Carr, A., Carr, M. H., & Meylan, A. B. (1978). The ecology and migrations of sea turtles, 7. The West Caribbean green turtle colony. Bulletin of the American Museum of Natural History, 162, 1-46. Cinzano, P., Falchi, F., & Elvidge, C. D. (2001). The first World Atlas of the artificial night sky brightness. Monthly Notices of the Royal Astronomical Society, 328(3), 689-707. Eckert, K. L. (1995). Anthropogenic threats to sea turtles. In K. A. Bjorndal (Ed.), Biology and Conservation of Sea Turtles, Revised Edition (pp. 611-612). Washington, D. C.: Smithsonian Institution Press. Gaston, K. J., Davies, T. W., Bennie, J., & Hopkins, J. (2012). Reducing the ecological consequences of night-time light pollution: options and developments. Journal of Applied Ecology, 49, 1256-1266. Gordon, L. G., & Harrison, E. (2012). Report on the 2011 Leatherback Program at Tortuguero, Costa Rica. San Pedro, Costa Rica: Sea Turtle Conservancy. Harewood, A., & Horrocks, J. (2008). Impacts of coastal development on hawksbill hatchling survival and swimming success during the initial offshore migration. Biological Conservation, 141(2), 394-401. Harrison, E., & Meletis, Z. (2010). Tourists and turtles: Searching for a balance in Tortuguero, Costa Rica. Conservation and Society, 8(1), 26-43. Hendrickson, J. R. (1995). Nesting behavior of sea turtles with emphasis on physical and behavioral determinants of nesting success or failure. In K. A. Bjorndal (Ed.), Biology and Conservation of Sea Turtles, Revised Edition (pp. 53-57). Washington, D.C.: Smithsonian Institution Press. N. Constant 51

Hölker, F., Moss, T., Griefahn, B., Kloas, W., Voigt, C. C., Henckel, D.,... Tockner, K. (2010). The dark side of light: a transdisciplinary research agenda for light pollution policy. Ecology and Society, 15(4), 13. Kamrowski, R. L., Limpus, C., Moloney, J., & Hamann, M. (2012). Coastal light pollution and marine turtles: assessing the magnitude of the problem. Endangered Species Research, 19(1), 85-98. Karnad, D., Isvaran, K., Kar, C. S., & Shanker, K. (2009). Lighting the way: Towards reducing misorientation of olive ridley hatchlings due to artificial lighting at Rushikulya, India. Biological Conservation, 142(10), 2083-2088. Kawamura, G., Naohara, T., Tanaka, Y., Nishi, T., & Anraku, K. (2009). Near-ultraviolet radiation guides the emerged hatchlings of loggerhead turtles Caretta caretta (Linnaeus) from a nesting beach to the sea at night. Marine and Freshwater Behaviour and Physiology, 42(1), 19-30. Kyba, C. C., Ruhtz, T., Fischer, J., & Hölker, F. (2011). Cloud coverage acts as an amplifier for ecological light pollution in urban ecosystems. PLoS ONE, 6(3), 1-9. Limpus, C., & Kamrowski, R. L. (2013). Ocean-finding in marine turtles: the importance of low horizon elevation as an orientation cue. Behaviour, 150(8), 863-893. Longcore, T., & Rich, C. (2004). Ecological light pollution. Frontiers in Ecology and the Environment, 2(4), 191-198. Lorne, J. K., & Salmon, M. (2007). Effects of exposure to artificial lighting on orientation of hatchling sea turtles on the beach and in the ocean. Endangered Species Research, 3(1), 23-30. Mortimer, J. A. (1995). Factors influencing beach selection by nesting sea turtles. In K. A. Bjorndal (Ed.), Biology and Conservation of Sea Turtles, Revised Edition (pp. 45-51). Washington, D. C.: Smithsonian Institution Press. Narisada, K., & Schreuder, D. (2004). Light Pollution Handbook. Dordrecht, Netherlands: Springer. Oberholtzer, G. (2014). Managing the Impacts of Artificial Light for Sea Turtles. Velador: Sea Turtle Conservancy Newsletter(2). Retrieved from http://www.conserveturtles.org/velador.php?page=velart113 Peters, A., & Verhoeven, K. J. (1994). Impact of artificial lighting on the seaward orientation of hatchling loggerhead turtles. Journal of Herpetology, 28(1), 112-114. Prieto, C. G., & Harrison, E. (2012). Report on the 2011 Green Turtle Program at Tortuguero, Costa Rica. San Pedro, Costa Rica: Sea Turtle Conservancy. Salmon, M. (2003). Artificial night lighting and sea turtles. Biologist, 50(4), 163-168. Salmon, M., & Witherington, B. E. (1995). Artificial lighting and seafinding by loggerhead hatchlings: Evidence for lunar modulation. Copeia, 1995(4), 931-938. N. Constant 52

Salmon, M., & Wyneken, J. (1987). Orientation and swimming behavior of hatchling loggerhead turtles Caretta caretta L. during their offshore migration. Journal of Experimental Marine Biology and Ecology, 109(2), 137-153. Salmon, M., Reiners, R., Lavin, C., & Wyneken, J. (1995). Behavior of loggerhead sea turtles on an urban beach. I. Correlates of nest placement. Journal of Herpetology, 29(4), 560-567. Salmon, M., Tolbert, M. G., Painter, D. P., Goff, M., & Reiners, R. (1995). Behavior of loggerhead sea turtles on an urban beach. II. Hatchling orientation. Journal of Herpetology, 29(4), 568-576. Schreuder, D. (2008). Outdoor Lighting: Physics, Vision and Perception: Physics, Vision and Perception. Dordrecht, Netherlands: Springer. Sea Turtle Conservancy. (2013). Monitoring Protocol for the 2013 Green Turtle Program. San Pedro, Costa Rica: Sea Turtle Conservancy. Sea Turtle Conservancy. (2014). STC Programs: Research: Tortuguero, Costa Rica. Retrieved from Sea Turtle Conservancy: http://www.conserveturtles.org/costarica.php?page=research Sella, K. N., Salmon, M., & Witherington, B. E. (2006). Filtered streetlights attract hatchling marine turtles. Chelonian Conservation and Biology, 5(2), 255-261. Seminoff, J. A. (2004). Marine Turtle Specialist Group Review 2004 Global Status Assessment Green turtle (Chelonia mydas). Marine Turtle Specialist Group, The World Conservation Union (IUCN) Species Survival Commission Red List Programme. Troëng, S., & Rankin, E. (2005). Long-term conservation efforts contribute to positive green turtle Chelonia mydas nesting trend at Tortuguero, Costa Rica. Biological Conservation, 121(1), 111-116. Troëng, S., Evans, D. R., Harrison, E., & Lageux, C. J. (2005). Migration of green turtles Chelonia mydas from Tortuguero, Costa Rica. Marine Biology, 148, 435-447. Tuxbury, S. M., & Salmon, M. (2005). Competitive interactions between artificial lighting and natural cues during seafinding by hatchling marine turtles. Biological Conservation, 121(2), 311-316. Witherington, B. E. (1991). Orientation of hatchling loggerhead turtles at sea off artificially lighted and dark beaches. Journal of Experimental Marine Biology and Ecology, 149(1), 1-11. Witherington, B. E. (1992). Behavioral responses of nesting sea turtles to artificial lighting. Herpetologica, 48(1), 31-39. Witherington, B. E. (1995). Hatchling Orientation. In K. A. Bjorndal, Biology and Conservation of Sea Turtles, Revised Edition (pp. 577-578). Washington, D. C.: Smithsonian Institution Press. Witherington, B. E. (2002). Chapter 13: The problem of photopollution for sea turtles and other nocturnal animals. In J. R. Clemmons, & R. Buchholz (Eds.), Behavioral N. Constant 53

Approaches to Conservation in the Wild (pp. 303-328). Cambridge: Cambridge University Press. Witherington, B. E., & Bjorndal, K. A. (1991). Influences of artificial lighting on the seaward orientation of hatchling loggerhead turtles Caretta caretta. Biological Conservation, 55(2), 139-149. Witherington, B. E., & Frazer, N. B. (2003). Social and Economic Aspects of Sea Turtle Conservation. In P. L. Lutz, J. A. Musick, & J. Wyneken (Eds.), The Biology of Sea Turtles, Vol. II (pp. 355-384). Boca Raton, FL: CRC Press. Witherington, B. E., & Martin, R. E. (2003). Understanding, Assessing, and Resolving Light- Pollution Problems on Sea Turtle Nesting Beaches (Technical Report TR-2). Florida Marine Research Institute, St. Petersburg, Florida. Woody, K. K., Horrocks, J. A., & Vermeer, L. A. (1998). Factors influencing within-beach nest distribution in hawksbill turtles. Proceedings of the 18th International Symposium on Sea Turtle Biology and Conservation (pp. 170-171). Mazatlán, Sinaloa, Mexico: National Oceanic and Atmospheric Administration. N. Constant 54

APPENDIX A: Map of Brightness Survey Sampling Locations This map shows sampling locations from brightness surveys conducted in June and July 2014. I surveyed mile sections -3/8 to 2 4/8 on 27 June and 26 July and mile sections 2 5/8 to 4 7/8 on 28 June and 27-28 July. During each brightness survey, I recorded three brightness readings at each sampling location using a Unihedron Sky Quality Meter (SQM) to obtain a mean brightness value at each point. Sampling locations are located at 50-meter intervals along the waterline. There are a total of 173 sampling locations and 346 sampling points. N. Constant 55

N. Constant 56

APPENDIX B: Map of Interpolated Luminance and Mean Luminance The following map shows the luminance surface predicted using the Ordinary Kriging interpolation method in the Geostatistical Wizard in ArcGIS 10.2 (Esri) and the mean luminance (cd/m 2 ) per mile section calculated by averaging the five brightness measurements taken for each mile section during June and July 2014 brightness surveys. The interpolated surface is clipped to the extent of the mile sections for ease of comparison. N. Constant 57

N. Constant 58