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Clemson University TigerPrints All Theses Theses 5-2015 Variability in Movement Patterns and Habitat use of Two Species of Pelecaniformes Caroline Poli Clemson University Follow this and additional works at: http://tigerprints.clemson.edu/all_theses Part of the Aquaculture and Fisheries Commons, and the Biology Commons Recommended Citation Poli, Caroline, "Variability in Movement Patterns and Habitat use of Two Species of Pelecaniformes" (2015). All Theses. Paper 2161. This Thesis is brought to you for free and open access by the Theses at TigerPrints. It has been accepted for inclusion in All Theses by an authorized administrator of TigerPrints. For more information, please contact [email protected]. VARIABILITY IN MOVEMENT PATTERNS AND HABITAT USE OF TWO SPECIES OF PELECANIFORMES ___________________________________________________________________ A Thesis Presented to the Graduate School of Clemson University ___________________________________________________________________ In Partial Fulfillment of the Requirements for the Degree Master of Science Wildlife and Fisheries Biology ___________________________________________________________________ by Caroline Poli May 2015 ___________________________________________________________________ Accepted by: Patrick Jodice, Committee Chair Patrick Gerard Autumn-Lynn Harrison William Mackin ABSTRACT Information regarding movement patterns of seabirds is useful for understanding prey abundance and distribution, predicting overlap between bird activity and anthropogenic stressors, and assessing the effectiveness of reserves at protecting nesting or foraging habitat(Cairns 1992, Weimerskirch 2007, Weimerskirch et al. 2010). I examined movement patterns of 40 brown pelicans (Pelecanus occidentalis) satellite tagged in December 2010 in South Carolina, USA, and tracked until July 2013. Birds exhibited individual variability in movement patterns and 25% of individuals remained near the breeding colony during nonbreeding. Birds captured in South Carolina that did migrate wintered as far south as Guatemala, prospected and used other breeding colonies both south and north of the capture location, and exhibited prebreeding and postbreeding dispersal. Overlap between brown pelican home ranges and protected areas in South Carolina was low compared to availability of protected habitat; brown pelicans frequently used unprotected nearshore pelagic areas. The percentage of offshore locations within 10 km of the coast was high (98%), suggesting that brown pelican movements may overlap with future offshore wind development and should be accounted for during spatial planning. I also examined foraging behavior and habitat use of 77 masked boobies (Sula dactylatra) tracked with GPS units during May and November 2013 at a regionally important breeding colony in the southern Gulf of Mexico. Birds exhibited individual variability in foraging behavior and searched for prey at nested hierarchical scales ii ranging from 60 m - 30 km. Characteristics of foraging trips and foraging behavior did not differ between sexes but did differ between stages; behavior in incubating birds was more variable compared to chick-rearing birds. The oceanographic variables that were related to foraging behavior at small scales (at the prey patch level) varied widely between individuals, suggesting that individual masked boobies use different foraging strategies. Sea surface height and velocity of water corresponded to foraging most frequently (44% and 38% of birds respectively), a finding that is consistent with the characterization of the Gulf of Mexico as a highly dynamic system strongly influenced by currents and eddies. The two data chapters included in this thesis represent a substantial enhancement to our understanding of movement patterns and spatial ecology of Pelecaniformes in the north Atlantic system. Data sets from both chapters can provide valuable information for marine spatial planning efforts and provide a baseline for anthropogenic based threats such as development, pollution, and commercial fisheries. iii ACKNOWLEDGEMENTS Thank you foremost to my advisor Dr. Patrick Jodice for the opportunity to conduct research that I am passionate about, and for spending valuable time and energy to provide insightful guidance in all aspects of building a career as a scientist. I also thank my committee members, Dr. Autumn-Lynn Harrison, Dr. Patrick Gerard, and Dr. Will Mackin for scientific comments and suggestions, engaging discussions, and encouragement throughout my graduate study. I am grateful to Dr. Adriana Vallarino Moncada for the wonderful opportunity to work at Arrecife Alacranes as part of her team. Each of you has helped me become a more versatile scientist. I acknowledge the USGS South Carolina Cooperative Fish and Wildlife Research Unit, particularly Carolyn Wakefield who offered essential support, Dr. Kate McFadden who provided strong mentorship early in my graduate study, and lab-mates and officemates who helped me focus my ideas by listening through hours of caffeine-induced chatter. This project would not have been possible without major funding from South Carolina Department of Natural Resources, and small grants from Sacramento Zoological Society and Clemson University Graduate Student Government. I thank my family and friends from near and far who encouraged me to pursue graduate study, championed me during my research, and will undoubtedly continue to support me in the future. Three resources in particular helped me build a stronger thesis, All In Coffee Shop, Roget's 21st Century Thesaurus, and Google. iv TABLE OF CONTENTS Page TITLE PAGE ....................................................................................................................I ABSTRACT .................................................................................................................... II ACKNOWLEDGEMENTS ........................................................................................... IV LIST OF TABLES ....................................................................................................... VII LIST OF FIGURES ....................................................................................................... IX LIST OF APPENDICES ............................................................................................. XIV CHAPTER ONE .............................................................................................................. 1 INTRODUCTION ..................................................................................................... 1 CHAPTER TWO ............................................................................................................. 5 VARIABILITY IN HOME RANGE SIZE, MIGRATION STRATEGY, AND PROTECTED AREA USE OF EASTERN BROWN PELICANS (PELECANUS OCCIDENTALIS) ALONG THE US ATLANTIC COAST ...... 5 Introduction .................................................................................................. 5 Methods ......................................................................................................... 8 Deployment of satellite tags ..................................................................... 8 Data processing ....................................................................................... 9 Home range estimation .......................................................................... 10 Migration strategy ................................................................................. 12 Habitat use ............................................................................................. 12 Reserve use............................................................................................. 13 Results ......................................................................................................... 14 Tag functionality .................................................................................... 14 Distribution and home ranges ............................................................... 17 Migration strategy ................................................................................. 21 Habitat use ............................................................................................. 26 Reserve use............................................................................................. 31 Discussion.................................................................................................... 34 Distribution and home ranges ............................................................... 34 Migration ............................................................................................... 36 Habitat use ............................................................................................. 39 v Reserve use............................................................................................. 41 CHAPTER THREE ....................................................................................................... 43 VARIABILITY IN FORAGING BEHAVIOR OF MASKED BOOBIES (SULA DACTYLATRA) BREEDING AT ISLA MUERTOS, MEXICO ........ 43 Introduction ................................................................................................ 43 Methods ....................................................................................................... 46 Study area .............................................................................................. 46 Data collection ....................................................................................... 48 Habitat use ............................................................................................. 49 Statistical analysis ................................................................................. 54 Results ......................................................................................................... 57 Scales of area restricted search ............................................................. 59 At-sea movements and foraging behavior.............................................. 61 Oceanographic habitat use .................................................................... 67 Discussion.................................................................................................... 71 At-sea movements and foraging behavior.............................................. 71 Sex-specific foraging behavior .............................................................. 73 Oceanographic habitat use .................................................................... 75 Scales of ARS ......................................................................................... 78 Reserve use............................................................................................. 79 CONCLUSIONS............................................................................................................ 81 APPENDICES ............................................................................................................... 83 Appendix A ................................................................................................. 84 Appendix B ................................................................................................. 86 Appendix C ................................................................................................. 88 REFERENCES .............................................................................................................. 90 vi LIST OF TABLES Table Page 2.1 Areal extent (mean ± sd km2) of focal region (50% utilization distribution, UD), home range (95% UD), and percent overlap in successive years (an estimate of site fidelity) during breeding and nonbreeding seasons for brown pelicans satellite tagged December 2010 in South Carolina, USA, and tracked until July 2013. Home range and focal region were logtransformed. n = number of birds, W = Wilcoxon rank-sum test, Significant results appear in bold; alpha = 0.1. .................................................20 2.2 Discrete migration strategies of brown pelicans satellite tagged in South Carolina, December 2010. Satellite tags transmitted locations for 3 months - 3.5 years. Four groupings were identified for birds with at least four months of location data and strategies were classified as highly migratory, migratory, semi-migratory, and stationary based on Ward hierarchical clustering analysis of the latitudinal range for each individual. At the 0.05 significance level, stationary individuals were significantly different from all other groups. ................................................................................................23 2.3 Proportional overlap of undesignated habitat and six protected areas in South Carolina with individual home ranges of 20 brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Available area is defined as the total area of coastal, wetland, estuarine, and riverine habitat in South Carolina where pelicans are commonly seen. Estimated parameters include the percentage of the total available area that is located within each area of interest and the mean percentage of each individual pelican’s 95% utility distribution that overlaps with each area of interest. Compositional analysis was used to test whether the percent of overlap of pelican home ranges with each area of interest was proportional to the area’s availability; each area of interest was ranked from greatest use (1) to least use (7)................................................................................................................30 vii List of Tables (Continued) Table Page 3.1 Foraging parameters of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Wilcoxon rank-sum tests were used to compare characteristics of foraging trips between seasons (May and November; n = 77 birds), sexes (n = 77 birds), and stages (incubating and chick-rearing in November; n = 41 birds). Watson's Two-Sample Test of Homogeneity was used to compare circular statistics. Values are presented as mean ± 1 standard deviation. Ranges are in parenthesis. Significant results appear in bold; alpha = 0.05 .............................................................................................63 3.2 Foraging behavior of masked boobies nesting at Isla Muertos, Mexico during May and November 2013. Wilcoxon rank-sum tests were used to compare characteristics of foraging behavior between seasons (May and November; n = 72 birds), sexes (n = 72 birds), and stages (incubating and chick-rearing in November; n = 41 birds). Watson's Two-Sample Test of Homogeneity was used for circular statistics. Values are presented as mean ± 1 standard deviation. Ranges are in parenthesis. Significant results appear in bold; alpha = 0.05. ARS: area restricted search ................................66 3.3 Physical oceanographic characteristics considered in random forest analysis and the hypothesized link with foraging behavior of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Frequency and percent of models represent the number and percent of individual models (n = 72 birds) in which a particular variable was considered important for predicting foraging behavior. Temporal scale and spatial resolution refer to the scale and resolution at which the environmental variables were measured (see Methods) ...................................69 viii LIST OF FIGURES Figure Page 2.1 Number of satellite tags transmitting each month from 4 December 2010 (initial deployment) - 1 July 2013 (final tag ceased transmitting) for 40 brown pelicans satellite tagged in South Carolina, USA ..................................16 2.2 Distribution of 40 brown pelicans captured during the nonbreeding season near Charleston, SC, USA, satellite-tagged December 2010 and tracked until July 2013. Kernel density estimates of breeding (orange) and nonbreeding (blue) distribution. Within each stage, home range (95% utilization distribution) is light-colored and focal region (50% utilization distribution) is dark-colored. .............................................................................19 2.3 Movements of four individual brown pelicans satellite tagged December 2010 in South Carolina, USA, illustrating examples of different migration patterns and non-breeding destinations. For each individual, the location of the breeding colony used during tracking is marked with an arrow; the capture location for all birds is marked with a star in the upper left panel. The breeding colony for bird 291 is unknown because the satellite tag stopped transmitting before onset of the breeding season. Bird 291 = highly migratory, destination = Guatemala. Bird 292 = migratory, destination = southern Florida. Bird 279 = semi-migratory, destination = Georgia. Bird 298 = stationary, destination = South Carolina..........................33 2.4 Pre-breeding movements of five brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. The start of each track is marked by individual bird id number. Bird 292 arrived at the breeding colony but then dispersed south before returning to the colony for the breeding season. All other individuals dispersed north beyond the colony then moved south for the breeding season .................................................................................................25 ix List of Figures (Continued) Figure Page 2.5 Distribution of brown pelicans satellite tagged December 2010 in South Carolina, USA, in relation to biogeography (marine provinces which are subdivided into ecoregions) as described by Spalding et al. (2007). Satellite tags transmitted locations for 3 months - 3.5 years. Identifiers of ecoregions within the range of all satellite locations are as follows: 41 Virginian, 42 Carolinian, 70 Floridian, 63 Bahamian, 65 Greater Antilles, 67 Southwestern Caribbean ..............................................................................27 2.6 Generalized additive mixed models were used to examine trends in annual occupancy of marine ecoregions described by Spalding et al. (2007) for brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Dark lines represent model predictions and translucent areas represent 95% confidence intervals. Probability of occupancy was estimated separately for three frequently-used ecoregions described by Spalding et al. (2007) as follows: a) Virginian, b) Floridian ....................................................................28 2.7 Generalized additive mixed models were used to examine trends in annual occupancy of the Chesapeake Bay/Delmarva Peninsula region for brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Dark grey line represents model predictions and light-gray areas represent 95% confidence intervals. Probability of occupancy was highest from July October, corresponding to post-breeding and molt periods ..............................30 2.8 Coastal parks and protected areas (dark gray) in South Carolina, USA, that encompass marine, estuarine, swamp, or riverine habitat potentially occupied by brown pelicans 2010 - 2013. Protected areas that overlapped with a relatively high proportion of individual pelican home ranges are labeled and highlighted. NERR = National Estuarine Research Reserve, NWR = National Wildlife Refuge ....................................................................32 x List of Figures (Continued) Figure Page 3.1 Location of Isla Muertos, the largest breeding colony for masked boobies in the north Atlantic region, in relation to the boundary of Arrecife Alacranes National Park and the prominent bathymetry of the Campeche Bank, Mexico. At-sea foraging movements of 77 breeding masked boobies were recorded with GPS loggers during May and November 2013 ....47 3.2 Sample analysis of a GPS track illustrating delineation of locations that correspond to area restricted search (ARS) behavior. Scale bar in (a) also applies to panels (b) and (d). (a) A portion of a GPS track (line) with individual locations (points). (b) For each location along the track, the amount of time required to cross a circle of a given radius (in this case radius = 2 km) is calculated (the first passage time; FPT). Red arrows indicate direction of travel. The circle on the left contains an example of direct movement at a moderate speed, resulting in short FPT. In contrast, the circle on the right contains an example of tortuous movement at slow speed, resulting in long FPT and potentially corresponding to ARS behavior. (c) FPT analysis is repeated multiple times, using circles with incrementally increasing radii (x-axis). For each radius, the variance log(FPT) of the calculated FPT values is plotted and those points are connected via an interpolated line for optimal visualization. The radius that corresponds to the peak log(variance) is the dominant scale of ARS. In this example, maximum variance log(FPT) corresponds to a search radius of 1980 meters. (d) Once the scale of ARS is identified, the penalized contrast method of Lavielle is used to cut the track into segments consisting of sets of locations with similar FPT values (range 0 23 h). Segments with overall high FPT values correspond to ARS behavior (blue points); segments with low FPT values correspond to non-ARS behavior (gray points) .......................................................................................51 xi List of Figures (Continued) Figure Page 3.3 Arrecife Alacranes National Park boundary (black oval) in relation to locations of small-scale area restricted search behavior (colored points) identified from first passage time analysis. Foraging trips (gray lines; n = 129; multiple trips per bird are pictured) were recorded from masked boobies nesting at Isla Muertos (black star), Mexico, May and November 2013...................................................................................................................58 3.4 An example of multiple scales of area restricted search (ARS) behavior during a single foraging trip recorded for a masked booby nesting at Isla Muertos (star), Mexico, May 2013. Multiple scales of ARS were identified from the variance log(first passage time) plot (inset box) which has four prominent local maxima, each indicated by a dotted line. Within the track, the locations which correspond to foraging at each scale (large map; delineated by colors that correspond with the dotted lines on the plot) are nested from largest to smallest. Points indicate interpolated GPS locations, circles indicate search radii, arrows indicate direction of travel .......................60 3.5 Distribution of azimuth from the colony during foraging trips of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Departure and arrival: angle between the colony and the location of the bird when it was two km from the colony. ARS: angle between the colony and locations of area restricted search. Numbers and dashed circles inside each plot correspond to the number of individuals included in each bar. n = 77 birds ..........................................................................................................62 xii List of Figures (Continued) Figure 3.6 Page Generalized additive mixed models (GAMM) were used to examine the relationship between area restricted search (ARS) behavior and physical oceanography in foraging masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Different groups of individuals that showed similar trends for a particular environmental variable of interest were used to build each working model. N for each curve is listed near the y axis of each plot, and the total number of birds that showed a strong relationship for a particular environmental variable (as determined by random forest analysis) and could have potentially contributed to GAMM formation was sea surface height anomaly = 32 and velocity of water = 27. The colored line represents model predictions and light-gray areas represent 95% confidence intervals ..................................................................70 xiii LIST OF APPENDICES Appendix Page A Individual satellite-tag functionality and latitudinal movements for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Raw data were cleaned by retaining only locations with accuracies ≤ 1.5 km and applying a speed filter of 25 m/s .......................................................................84 B Individual breeding locations, focal region, and home ranges (in km2) for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Mean percent overlap between successive breeding or successive nonbreeding seasons was calculated for each individual. OHCI = Old House Channel Island. A hyphen (-) indicates that the satellite tag stopped transmitting before enough locations could be collected to estimate the parameter of interest .........................................................................................86 C Description of individual migration strategies and dispersal locations for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Birds used six distinct ecoregions. Proportions were calculated using the range-wide 95% UD for each individual. Only parks and protected areas up to 50 km inland containing marine, estuarine, swamp, or riverine habitat were considered. A hyphen (-) indicates that the satellite tag stopped transmitting before enough locations could be collected to estimate the parameter of interest. NA indicates that a dispersal location was not identified ..............................................................................................88 xiv CHAPTER ONE INTRODUCTION Habitat use, the process in which an animal occupies an area (Johnson 1980), influences individual behavior, body condition, mortality risk, and reproductive success in the short-term (Cody 1985, Stephens 1986, Aubry et al. 2013). In the long term, habitat use may impact survival, fitness, and population dynamics (Cody 1985, Kristan Iii 2003, Pärt et al. 2011, DeCesare et al. 2013). Selective decisions that determine habitat use occur dynamically as an animal attempts to achieve an optimal balance between numerous interacting factors (Stephens 1986). During foraging for instance, mechanisms that drive habitat use may include, but are not limited to, food availability (Suryan et al. 2006), physiology (Sommerfeld 2013), reproductive constraints (Preatoni et al. 2011), risk (Freitas et al. 2008, DeCesare et al. 2013), competition (Wakefield et al. 2013), and social facilitation (Weimerskirch et al. 2010). Adding complexity, memory and learning may contribute to selective decisions at multiple timescales (Hutto 1985, Fronhofer et al. 2013, Janmaat et al. 2013), and an animal may repeat trips to desirable habitat in subsequent hours, days, or years. In marine habitat, prey are often patchily distributed in space and time within a heterogeneous matrix (Clarke 1977, Ricklefs 1990), and the mechanisms that influence 1 habitat use by individuals in this environment may be complex and difficult to discern or quantify. Furthermore, directly observing the behavior of marine vertebrates is costly in terms of time and resources. The study of marine habitat use, long possible only through airplane or vessel-based observational surveys, has advanced rapidly due to the advent of tracking technology (Ainley et al. 2012), allowing scientists to expand the scope of their research to include both terrestrial and marine habitat use by individuals from known colonies of origin. Therefore, tracking information linking foraging locations of known individuals to physiological and environmental factors may provide an enhanced perspective on the mechanisms that underlie habitat use. For many seabird species, behaviors that influence reproductive success, adult survival, and population dynamics occur at sea (Furness and Tasker 2000, Croxall et al. 2002), but the mechanisms that drive at-sea habitat use are not well understood, thus there is a need for research regarding seabird foraging ecology (Boersma et al. 2001, Croxall et al. 2012, Lewison et al. 2012). For example, birds may adjust regional foraging movements in response to dynamic prey distribution (Santora et al. 2009), and decisions made by individual birds regarding the duration and location of foraging trips may affect energy expenditure and impact physical condition (Chaurand and Weimerskirch 1994, Weimerskirch et al. 1997, Pichegru et al. 2007). During breeding, flexible foraging strategies may help seabirds to simultaneously meet the energetic demands of offspring and maintain adult body condition (Chaurand and Weimerskirch 1994, Welcker et al. 2009). When prey are scarce, however, competing energetic demands may result in 2 reduced reproductive success as birds trade-off chick condition for self-maintenance (Hamer et al. 2007, Chivers et al. 2012). Understanding factors that influence seabird habitat use can help natural resource managers predict foraging locations and therefore estimate spatial and temporal overlap between bird activity and threats. For example, foraging seabirds may encounter a range of threats and are susceptible to mortality or morbidity originating from exposure to pollutants (Votier et al. 2005), collisions with wind-energy turbines, and entanglement in abandoned fishing gear (Croxall et al. 1990), as well as altered breeding biology resulting from fisheries interactions such as reduced availability of key forage fish species (Cury et al. 2011, Bertrand et al. 2012), and increased availability of potentially low-energy fisheries discards (James and Stahl 2000, Pichegru et al. 2007). Marine habitat use models derived from seabird tracking data can describe the movements and behavior of individual birds at multiple spatial and temporal scales, enabling comparison between seabird behavior and biological, ecological, or anthropogenic features of interest. At-sea locations of seabird movements have been used as an indicator of fish activity (Cairns 1992, Weimerskirch 2007, Weimerskirch et al. 2010), a predictor of bird exposure to pollutants in the marine environment (Croxall et al. 1990, Votier et al. 2005), and a scientific basis for decisions regarding the design and placement of marine reserves and protected areas (Le Corre et al. 2012, Ludynia et al. 2012). My goal was to investigate habitat use as it relates to the at-sea movements of seabirds. I conducted research on two species of Pelecaniformes and examined 1) interannual variation in movements of brown pelicans (Pelecanus occidentalis) and 2) 3 short-term habitat use by individual masked boobies (Sula dactylatra) constrained to a central place. The first data chapter is titled “Variability in Home Range Size, Migration Strategy, and Protected Area Use of Eastern Brown Pelicans (Pelecanus occidentalis) Along the US Atlantic Coast”, and the second data chapter is titled “Variability in Foraging Behavior of Masked Boobies (Sula dactylatra) Breeding at Isla Muertos, Mexico”. 4 CHAPTER TWO VARIABILITY IN HOME RANGE SIZE, MIGRATION STRATEGY, AND PROTECTED AREA USE OF EASTERN BROWN PELICANS (PELECANUS OCCIDENTALIS) ALONG THE US ATLANTIC COAST Introduction Marine spatial planning in the southeast and mid-Atlantic region of the United States is a complex endeavor requiring negotiation of political, administrative, and biological factors at the local, regional, and national levels. Interest in development of offshore wind energy within the region is high, and to date most US states along the Atlantic coast have initiated assessments of wind availability and potential profitability (Michel 2013). Ecological information is necessary in order to assess the extent to which facility construction and operation may alter oceanographic conditions, increase turbidity and levels of pollutants, and impact wildlife (Fox et al. 2006, Furness et al. 2013). For example, pelagic and nearshore seabirds may be affected directly from collisions with offshore turbines or indirectly from changes in the quality of foraging habitat and altered availability of prey species (Fox et al. 2006, Perrow et al. 2011). Predicting the impact of construction and operation of an offshore wind energy facility on populations of interest is facilitated by detailed knowledge of the spatial ecology of individual birds (Fox et al. 5 2006), however, movement patterns of seabirds within the southeast and mid-Atlantic region are largely unknown and understudied (Jodice et al. 2013), leading to a lack of information on which to inform marine spatial planning. Within the southeast and mid-Atlantic region, knowledge of individual movements in nearshore seabirds has accrued mainly through banding studies (Stefan 2008), but information is often limited to one or two sightings and biased towards areas with regular human use and hence increased opportunities for band resightings. Band recoveries do not provide comprehensive information on individual migratory routes or wintering destinations (Guilford et al. 2009) which represent important habitat as threats, interactions, and conditions that occur during nonbreeding may affect individual survival, adult condition, or reproduction (Gill et al. 2001, Sorensen et al. 2009). Modern tracking studies have the power to provide detailed information on individual movements in species that range widely, readily cross ecological and political boundaries, and frequent inaccessible habitat. Tracking data can be combined with other spatial data such as oceanography, political boundaries, and ship traffic to examine the context within which individual birds operate at relatively fine temporal scales. The coastal region of the southeastern United States and Florida supports a significant proportion of the breeding population of the eastern subspecies of brown pelican (Pelecanus occidentalis). Brown pelicans declined in the late 1970s and the species remains vulnerable to oil pollution (Shields 2002). Although delisted federally, the species maintains various levels of state listing throughout its range (Jodice et al. 2013). The breeding range has expanded during the previous 40 years along the coast of 6 the eastern United States northward to New Jersey and southward to southern Florida (Shields 2002). Detailed data on annual movements in the region are limited to band returns from relatively few studies (Mason 1945, Schreiber 1976, Stefan 2008), and the species is regularly found in nearshore and estuarine habitats, both protected and unprotected, throughout its range (Shields 2002, Wickliffe and Jodice 2010, King et al. 2013). Large gaps in basic scientific understanding of brown pelican behavior include lack of information regarding at-sea distribution, and movements within and between seasons and years (Jodice et al. 2013). Application of data from other regions (e.g. Gulf of Mexico, Pacific coast) is not ideal because brown pelican behavior may vary widely between geographic locations as birds respond to fundamental regional differences in landscape type, prey availability, human disturbance, and oceanographic conditions. Current management actions that benefit the species occur primarily on colonies within parks and protected areas, with loafing sites and wintering sites often receiving less protection. I examined movements of adult brown pelicans tracked with satellite tags for up to three years. My objectives were to 1) determine home ranges during breeding and nonbreeding, 2) examine individual site fidelity and timing of migration between years, and 3) investigate the extent to which pelicans use parks and protected areas. I predicted that, at an individual level, brown pelicans would exhibit behavioral differentiation, resulting in diverse movement strategies among individuals and overall high site fidelity across seasons within individuals. These data represent the broadest and longest term assessment of movements to date for the species and as such can be used to inform 7 marine spatial planning and management decision-making along the east coast of the Atlantic US. Methods Deployment of satellite tags The study was initiated as a component of the Natural Resources Damage Assessment (NRDA) to the Deepwater Horizon oil spill (Evers et al. 2011). Brown pelicans along the coast of South Carolina were targeted for deployment of satellite tags to act as a comparison and reference for birds tagged in the northern Gulf of Mexico. All birds were captured at coastal sites in South Carolina, USA, within 20 km of Charleston Harbor. The area is comprised primarily of tidal creeks, estuaries, salt marshes, and the Atlantic Intracoastal Waterway, which is a navigable channel ca. 100 -300 m wide. Between December 2010 and August 2013, battery powered satellite platform terminal transmitters (PTTs; North Star Science and Technology) tracked via Argos satellites at 401.65 MHz were used to monitor the movements of 40 individual brown pelicans. From 4 - 19 December, 2010, nonbreeding adult pelicans were captured opportunistically from the water with a hand-held net gun using bait fish as an attractant, or alternatively, from loafing areas on wooden pilings using a padded leghold trap (Evers et al. 2011). Twenty-five PTT assemblies weighing 110 grams and 15 PTT assemblies weighing 68 grams (corresponding respectively to 3.7% and 2.3% of the mass of the lightest adults) were attached to individual birds (n.b., permission was given by the 8 USGS Bird Banding lab for attachments to weigh ≤ 5% of body mass). All PTTs were programmed to transmit for eight hours on and 16 hours off for the first 90 days postcapture and then eight hours on and 137 hours (approximately six days) off until the batteries were depleted, for a predicted longevity of 40 months for 110 g units and 22 months for 68 g units (Evers et al. 2011). PTTs were attached to the back using a harness constructed from Teflon tubing and secured for fit with copper crimps (Evers et al. 2011). During initial capture, adults were weighed, measured for culmen, and examined visually for external oil; no birds showed signs of external or visible oiling. Birds were released at the capture site after approximately 45 minutes. Data processing Analyses of data were performed using R (R Development Core Team 2014) unless otherwise specified. Locations were archived daily by Argos and downloaded remotely as individual files. Data were subsequently extracted from files (package trip; Sumner 2013), resulting in 28088 locations from all deployed tags. Positional accuracy of each individual location depends on the number of messages transmitted from the PTT to the passing satellite and is provided by Argos based on seven levels. Location classes 3, 2, 1, and 0 were collected using at least four messages and have an estimated radius-oferror of < 250, < 500, <1500, and > 1500 meters respectively. Location classes A (three messages), B (two messages), and Z (location process failed) have no error estimates. I discarded duplicate locations and locations of low or indeterminate accuracy, retaining 17835 locations of class 3, 2, and 1 (sensu Davis et al. 2001, Pütz et al. 2007). To remove 9 locations that represented unrealistic movements, I applied a speed filter of 25 m/s, corresponding to moderate flight speed for brown pelicans (Schnell and Hellack 1978; 17050 locations retained). Tracks for individual birds were cut into distinct segments if the time between transmission of two locations exceeded 19 days, an event that occurred infrequently but resulted in large data gaps. Segments with less than 5 locations could not be used in analysis and were discarded (17042 locations retained). For each individual bird, I classified locations into annual stages (e.g. breeding, non-breeding, migration) based on a combination of movement patterns and time of year. Breeding activity was not confirmed through direct observation, therefore, to determine breeding activity and hence breeding locations I used a combination of timing (April 1-Sept 30 was considered breeding; Schreiber 1980, Shields 2002) and range restriction of less than 200 km from a central place (many species of seabirds have a contracted range during the breeding season as they are constrained to the breeding colony or nest site). All averages are specified as mean ± standard deviation. Home range estimation For use in individual-based analysis, I calculated 2-dimensional Gaussian kernels for each bird with location data that spanned > 300 days. I extracted 50% and 95% UD contours separately for each breeding and nonbreeding stage using package adehabitatHR (Calenge 2006) with an ad-hoc bandwidth selection (Wand and Jones 1994, Calenge 2011b). To assess site fidelity between years within individuals, I calculated mean percent overlap of 95% UD contours between successive breeding 10 seasons and successive nonbreeding seasons. To test for seasonal differences in the distribution of the areal extent of the focal region, home range, and home range overlap I used Wilcoxon rank-sum tests and Kruskal Wallis tests. To determine a combined distribution for all study birds, I calculated 2dimensional Gaussian kernels using the plug-in bandwidth matrix on a 0.005° grid (package ks; Duong 2007). Individual PTTs recorded variable numbers of locations over different time-spans within and between individuals. To evenly weight locations collected from 40 individuals, during two stages (breeding/nonbreeding), and six seasons (breeding 2011, 2012, 2013; nonbreeding 2010/2011, 2011/2012, 2012/2013), I divided the data into groups of individuals and seasons with similar numbers of locations. I tallied the number of locations collected for each season by individual (six seasons per individual were considered). I examined the distribution of the number of locations by individual*season combination separately for breeding and nonbreeding stages. Within each stage, I delineated groups of individuals and seasons with similar numbers of locations (breeding season, two groups; nonbreeding season, three groups), and calculated separate kernel densities for each group. Each group included > 1000 locations, ensuring robust kernel estimation. I extracted the utilization distribution (UD) contours of the 95% (home range) and 50% (focal region; as defined in Hyrenbach et al. 2002) areas for each group and merged contours together by stage to produce separate breeding and nonbreeding distributions. 11 Migration strategy To coarsely quantify the extent of movements that occurred during the nonbreeding season, I calculated the span of latitude covered for each individual by subtracting the lowest recorded latitude from the highest recorded latitude. To group individuals into distinct migration strategies I used Ward’s method of hierarchical clustering (Ward 1963) with Euclidean distance and a k-value = 4 (indicating the number of means or clusters to extract). Ward’s method merges similar values, one at a time, and minimizes the total variance within a cluster. I tested for differences between clusters using multi-scale bootstrap resampling (package pvclust; Suzuki and Shimodaira 2006), which assigns a p-value to clusters supported by data that are tightly grouped. Habitat use I used generalized additive mixed models (GAMM) to investigate timing of occupancy for three specific ecoregions that were most frequently used by brown pelicans during this study (Virginian, Carolinian, and Floridian; Spalding et al. 2007), and the Chesapeake Bay/Delmarva Peninsula (CBDP) area of the mid-Atlantic coast. Shapefiles for marine ecoregions of the world (MEOW) were downloaded from www.marineregions.org (Claus et al. 2014), imported into ArcGIS (ESRI 2014), and overlaid on brown pelican locations. The ecoregion corresponding to each location was extracted using the tool near. Locations within the CBDP were identified using the tool select. A binomial GAMM (package gamm4; Wood and Scheipl 2013) was applied separately for each of the four areas. The binomial dependent variable indicated whether 12 or not pelicans were located within an area for each location. Day of year was the explanatory variable, and individual was included as a random effect. Cyclic penalized cubic regression splines were specified as the smooth and are appropriate for periodic data, including daily or annual patterns (Wood 2006). Reserve use A high percentage of all locations were recorded in South Carolina (58%), compared to other locations (Florida, 20%; North Carolina, 8%; Georgia, 6%; Virginia, 5%, Maryland, 2%, Outside US, 1%), thus I used compositional analysis to examine whether brown pelican use of protected areas in South Carolina was proportional to area size, adopting methods described in Adams et al. (2012). Compositional analysis compares used to available habitat and is based on assumptions that individual animal ranges are independent and that all animals have equal access to all areas of interest (Aebischer et al. 1993). “Available area,” defined as coastal, wetland, estuarine, and riverine habitat in South Carolina located <50 km inland and <20 km offshore (the maximum inland and offshore distances recorded for brown pelicans in this study) was delineated from satellite imagery and corroborated by assessing locations where pelicans were commonly seen from 2004-2014 (eBird 2012). Protected area shapefiles were downloaded from www.protectedplanet.net (IUCN and UNEP-WCMC 2014), imported into ArcGIS, and overlaid on 95% UD contours for individual birds. All data were transformed to two-dimensional Cartesian coordinates using a Robinson projection. I calculated the proportion of each 95% UD area that overlapped with undesignated areas 13 and each protected area located within the available area. I used a subset of six protected areas that had the highest mean proportion of overlap with 95% UDs in subsequent analyses. To determine whether brown pelicans were distributed disproportionately within any given protected area, I compared the relative proportion of each individual’s 95% UD area that overlapped each area of interest using a randomization test (R package AdehabitatHS, function compana; Calenge 2006). The test was conducted with 500 replicates and an alpha level of 0.05; values of zero were replaced with a default value of 0.01. Results Tag functionality Tags reported locations from 4 December, 2010 - 1 July, 2013. Duration of PTT activity was 357 ± 303 days per tag from deployment to cease-function resulting in 426 ± 280 locations per tag (Fig. 2.1; Appendix A). Of the 40 tags deployed, 88% were still transmitting one month post-deployment, 66% three months post-deployment, 50% one year post-deployment, and 20% two years post deployment. Tags weighing 110 grams collected significantly more locations (525 ± 292) than 68-gram tags (261 ± 163; Wilcoxon rank-sum test, W = 283, P = 0.007), but did not necessarily transmit over a longer time period (pooled mean 358 ± 303 days; Wilcoxon rank-sum test, W = 238, P = 0.16) despite being programmed to follow the same duty cycle. Duty cycling was daily 14 through the 2010/2011 nonbreeding season and switched to weekly coincident with the onset of breeding in 2011. 15 Figure 2.1 Number of satellite tags transmitting each month from 4 December 2010 (initial deployment) 1 July 2013 (final tag ceased transmitting) for 40 brown pelicans satellite tagged in South Carolina, USA. 16 Distribution and home ranges Throughout the annual cycle, brown pelicans primarily used coastal areas along the Atlantic coast from Maryland to south Florida and along the Gulf coast in southwest Florida (Fig. 2.2). Birds used coastal habitat almost exclusively throughout the annual cycle. The few locations recorded inland (n < 613) occurred near large rivers or lakes (e.g. St. Johns River in northeast Florida; Lake Okeechobee in south Florida). Marine locations typically occurred within 10 km of land (98%), though offshore distances of up to 80 km (n = 60) were recorded (e.g. west of Charleston, South Carolina; between western Cuba and the northeast Yucatán peninsula). The distribution of brown pelicans during nonbreeding was diffuse compared to breeding and covered a wider range of latitudes with a greater number of use areas (Fig. 2.2). Satellite tags were operational during at least one breeding season for 26 of the 40 individuals. Breeding locations included two colonies in South Carolina (Crab Bank = 22%, Marsh Island = 19%), four colonies in North Carolina (Beacon Island, Pelican Island, and Old House Channel Island = 11% each, New Dump Island = 7%), two colonies in Virginia (Wreck Island = 7%, Fisherman Island = 4%), and one colony in Maryland (Smith Island = 4%). Based on movement data as defined above, 4% of birds with operational tags during the breeding season did not appear to breed. The areal extent of individual home ranges was similar for breeding and nonbreeding (Table 2.1), however, the focal region was significantly smaller during nonbreeding (Table 2.1). For birds with tags that transmitted for multiple years (n = 21) mean home range size was consistent between years within seasons (Kruskal Wallis test, χ2 = 3.7, df = 5, 17 P= 0.6). Individual site fidelity was high between years, especially considering the small home range size yet large latitudinal distribution of birds, and only one individual switched breeding colonies in successive years from Old House Channel Island in North Carolina to Wreck Island in Virginia, a distance of 165 km. During breeding, home range overlap within individuals between years was > 0.3 (1 = complete overlap, 0 = no overlap) for 90% of individuals and > 0.6 for 40% of individuals (Appendix B). Nonbreeding home range overlap was also high: > 0.3 for 81% of individuals and > 0.6 for 38% of individuals. 18 Figure 2.2 Distribution of 40 brown pelicans captured during the nonbreeding season near Charleston, SC, USA, satellite-tagged December 2010 and tracked until July 2013. Kernel density estimates of breeding (orange) and nonbreeding (blue) distribution. Within each stage, home range (95% utilization distribution) is light-colored and focal region (50% utilization distribution) is dark-colored. 19 Focal region (50UD; km2) 25 25 52.8 ± 23.3 3492.0 ± 2253.2 626.4 ± 433.0 21 40 40 55.0 ± 21.3 2847.9 ± 1718.8 453.2 ± 229.9 98 579 635 W value 0.79 0.29 0.07 P-value n Home range (95UD; km2) 10 Breeding mean ± sd n Non-breeding mean ± sd 20 Overlap in successive years (%) Table 2.1 Areal extent (mean ± sd km2) of focal region (50% utilization distribution, UD), home range (95% UD), and percent overlap in successive years (an estimate of site fidelity) during breeding and nonbreeding seasons for brown pelicans satellite tagged December 2010 in South Carolina, USA, and tracked until July 2013. Home range and focal region were logtransformed. n = number of birds, W = Wilcoxon ranksum test, Significant results appear in bold; alpha = 0.1. Migration strategy Brown pelicans demonstrated substantial individual variability in migration movement patterns (Appendix C). Patterns were classified into one of four broad strategies based on the difference in latitude between the northernmost and southernmost locations for each individual (Fig. 2.3; Table 2.2). Of the 28 birds tracked for at least 4 months, stationary individuals (25% of birds) dispersed little from the capture location over subsequent seasons or years, and latitudinal extent ranged from 15 - 362 km. In the remaining classifications, latitudinal extent ranged from 525 - 792 km for semi-migratory individuals (29% of birds), 894 - 1103 km for migratory individuals (35% of birds), and 1443 - 1831 km for highly migratory individuals (6% of birds). Individuals generally adopted a single movement strategy and used it consistently over multiple years. Birds that switched strategies between years (33%, n = 21 birds with multiple years of data) made small strategic shifts, i.e. from stationary to semi-migratory or from migratory to semi-migratory. Breeding home range was significantly smaller for stationary individuals (1983 ± 1189 km2) compared to two other categories of migratory individuals (sample size for highly migratory birds was not large enough for statistical testing; pooled mean for semi-migratory and migratory birds, 4619 ± 2373 km2; Kruskal Wallis test, χ2 = 11.1, df = 2, P = 0.004). 21 Figure 2.3 Movements of four individual brown pelicans satellite tagged December 2010 in South Carolina, USA, illustrating examples of different migration patterns and nonbreeding destinations. For each individual, the location of the breeding colony used during tracking is marked with an arrow; the capture location for all birds is marked with a star in the upper left panel. The breeding colony for bird 291 is unknown because the satellite tag stopped transmitting before onset of the breeding season. Bird 291 = highly migratory, destination = Guatemala. Bird 292 = migratory, destination = southern Florida. Bird 279 = semi-migratory, destination = Georgia. Bird 298 = stationary, destination = South Carolina. 22 Table 2.2 Discrete migration strategies of brown pelicans satellite tagged in South Carolina, December 2010. Satellite tags transmitted locations for 3 months - 3.5 years. Four groupings were identified for birds with at least four months of location data and strategies were classified as highly migratory, migratory, semi-migratory, and stationary based on Ward hierarchical clustering analysis of the latitudinal range for each individual. At the 0.05 significance level, stationary individuals were significantly different from all other groups. Latitudinal extent (km) Migration strategy n Range of latitude (deg) Cluster mean ± sd Highly migratory 2 1637.2 ± 274.3 15.6 - 38.1 a Migratory 11 1008.1 ± 80.8 25.9 - 38.3 a Semi-migratory 9 669.5 ± 25.8 25.8 - 38.4 a Stationary 7 193.1 ± 128.1 30.3 - 35.9 b 23 Timing of dispersal from the breeding colony and migratory movements varied among individuals (Fig. 2.3). Five areas were regularly used by multiple birds during migratory movements including Cape Lookout, North Carolina, Charleston harbor, South Carolina, Doboy Sound, Georgia, St. John’s River, Florida, and Cape Canaveral, Florida. Birds moved gradually southward along the coast postbreeding, spending time in multiple locations before arriving at a winter destination. For example, one individual migrated from the capture location and spent 12 days in Cape Canaveral, Florida, but wintered south of the US, traveling for ten days from Florida to coastal Guatemala (Fig. 2.3). During migration, some individuals appeared to cross large areas of land including continental Cuba (moving from NNE to WSW, 170 km over land) and Florida (moving from west to east, > 200 km over land). Birds initiated movement northward towards the breeding grounds between mid-February and mid-April (median date = 24 March, n = 41), arriving between mid-March and late May (median date = 7 April, n = 36). Five individuals initiated a pre-breeding dispersal in late February to early April; dispersing birds reached the breeding colony, continued to a different location and remained there for 18-31 days, then returned to the colony (Fig. 2.4). Birds departed the breeding colony between mid-June and late October (median date = 25 Sept, n = 27). Seven individuals dispersed north post-breeding. 24 Figure 2.4 Pre-breeding movements of five brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. The start of each track is marked by individual bird id number. Bird 292 arrived at the breeding colony but then dispersed south before returning to the colony for the breeding season. All other individuals dispersed north beyond the colony then moved south for the breeding season. 25 Habitat use Brown pelicans occupied six ecoregions which occur within three marine provinces (Cold Temperate Northwest Atlantic, Warm Temperate Northwest Atlantic, and Tropical Northwestern Atlantic; Fig. 2.5). The majority of locations occurred within three of the six ecoregions (Fig. 2.5): Virginian (41; 12% of locations), Carolinian (42; 71% of locations), and Floridian (70; 15% of locations). One individual migrated through two additional ecoregions, Bahamian (63; 0.02% of locations) and Greater Antilles (65; 0.05% of locations), and spent the rest of the nonbreeding season in the Southwest Caribbean ecoregion (67; 1.3% of locations). The probability of brown pelicans occurring in the three most commonly used ecoregions was nonlinear with respect to time of year (Fig. 2.6). Birds were likely to use cold temperate waters from April - December, warm temperate waters year-round, and tropical waters December - April. 26 Figure 2.5 Distribution of brown pelicans satellite tagged December 2010 in South Carolina, USA, in relation to biogeography (marine provinces which are subdivided into ecoregions) as described by Spalding et al. (2007). Satellite tags transmitted locations for 3 months - 3.5 years (dark gray circles). Identifiers of ecoregions within the range of all satellite locations are as follows: 41 Virginian, 42 Carolinian, 70 Floridian, 63 Bahamian, 65 Greater Antilles, 67 Southwestern Caribbean. 27 Figure 2.6 Generalized additive mixed models were used to examine trends in annual occupancy of marine ecoregions described by Spalding et al. (2007) for brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Dark lines represent model predictions and translucent areas represent 95% confidence intervals. Probability of occupancy was estimated separately for two frequently-used ecoregions described by Spalding et al. (2007) as follows: a) Virginian, b) Floridian. 28 The probability of brown pelicans occurring in the CBDP region of Virginia and Maryland was nonlinear with respect to time of year (Fig. 2.7). Brown pelicans that used the CBDP region were more likely to do so during post-breeding from late June November than other times of the year. Probability of occupancy of the CBDP region during breeding in May - late June, was highly variable. 29 Figure 2.7 Generalized additive mixed models were used to examine trends in annual occupancy of the Chesapeake Bay/Delmarva Peninsula region for brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Dark grey line represents model predictions and light-gray areas represent 95% confidence intervals. Probability of occupancy was highest from July October, corresponding to post-breeding and molt periods. 30 Reserve use Within South Carolina, use of protected areas by brown pelicans varied among individuals (Appendix C). The mean percent area of individual home ranges within South Carolina that overlapped spatially with protected areas in the state was 15.0 ± 9.5%. Four of 20 brown pelicans had >20% overlap with protected areas. Two birds visited all five of the protected areas within the state considered in compositional analysis (birds had 21% and 24% overlap). The proportion of an individual’s home range that overlapped protected areas was not influenced by migration strategy (Kruskal Wallis test, χ2 = 2.6, df = 2, P = 0.3). Brown pelicans did not visit all reserves within the available area; 19 of the 61 protected areas considered (31%) did not overlap brown pelican home ranges, 36 protected areas (59%) had a mean overlap < 0.5%; six protected areas had a mean overlap ≥ 0.5% (Fig. 2.8). The two protected areas that were largest in size, Ashepoo-CombaheeEdisto Basin National Estuarine Research Reserve (ACE) Basin (525 km2) and Cape Romain National Wildlife Refuge (CRNWR, 228 km2; Table 2.3), appeared to greatly influence the observed relationships. Home range overlap > 10% was observed for seven individuals that used the ACE Basin and for six individuals that used CRNWR. 31 Figure 2.8 Coastal parks and protected areas (dark gray) in South Carolina, USA, that encompass marine, estuarine, swamp, or riverine habitat potentially occupied by brown pelicans 2010 - 2013. Protected areas that overlapped with a relatively high proportion of individual pelican home ranges are labeled and highlighted. NERR = National Estuarine Research Reserve, NWR = National Wildlife Refuge. 32 Table 2.3 Proportional overlap of undesignated habitat and six protected areas in South Carolina with individual home ranges of 20 brown pelicans satellite tagged December 2010 in South Carolina, USA. Satellite tags transmitted locations for 3 months - 3.5 years. Available area is defined as the total area of coastal, wetland, estuarine, and riverine habitat in South Carolina where pelicans are commonly seen. Estimated parameters include the percentage of the total available area that is located within each area of interest and the mean percentage of each individual pelican’s 95% utility distribution that overlaps with each area of interest. Compositional analysis was used to test whether the percent of overlap of pelican home ranges with each area of interest was proportional to the area’s availability; each area of interest was ranked from greatest use (1) to least use (7). 33 Among the five protected areas used in compositional analysis, brown pelican home ranges overlapped most with the ACE Basin (ca. 6% mean overlap) and least with Capers Island Heritage Preserve (ca. 0.5% mean overlap). However, birds utilized the undesignated area (all area that is not protected) and Capers Island Heritage Preserve in greater proportions relative to the availability of these areas within brown pelican habitat in coastal South Carolina, (compositional analysis, Wilkes Lambda = 0.22, P = 0.002; Table 2.3). Undesignated areas ranked highest according to utilization vs. available area, followed by Capers Island Heritage Preserve. Differences among the remaining sanctuaries were small, and rankings are likely to be less resilient. Discussion Distribution and home ranges This is the first study to quantify brown pelican home ranges along the Atlantic coast of the US. The results of this study suggest that although some brown pelicans demonstrate high fidelity to a specific site year-round, many birds range widely along the Atlantic coast and Florida Gulf coast throughout the year, and some move beyond US national waters to tropical ecoregions. The overall distribution of satellite-tagged brown pelicans captured along the central coast of South Carolina revealed several regions of concentrated use including estuarine and marine habitat near Charleston, South Carolina, Cape Canaveral, Florida, and three areas north of the capture location near Cape Fear, North Carolina, Pamlico Sound, North Carolina, and the CBDP in Virginia and 34 Maryland. Stefan (2008) also documented a high incidence of band recoveries near Charleston and Cape Canaveral from chicks banded in South Carolina between 1931 and 2005, suggesting both sites have been consistently important for pelicans for several decades. Satellite tag data revealed that birds captured in South Carolina also wintered at distant locations including Guatemala and along the east coast of the Yucatán peninsula. Satellite-tag locations in coastal Georgia occurred more commonly during nonbreeding than band encounters reported by Stefan (2008). Home range sizes reported during this study suggest that the foraging range of brown pelicans during the breeding season may be greater than 20 - 30 km, the distance originally estimated for the species (Briggs et al. 1983, Wickliffe and Jodice 2010). For example, individuals during this study regularly were located 20 - 150 km from the colony. Other species of Pelecaniformes including boobies (Weimerskirch et al. 2009b, Kappes et al. 2011) and spoonbills (El-Hacen et al. 2013) forage at similar distances from colonies. Home range size within individual brown pelicans was similar between breeding and nonbreeding, which suggests that birds may have adjusted to site-based or seasonal differences in prey availability by spending more time searching a given area rather than expanding their radius of travel. The extent of the focal region was larger during breeding compared to nonbreeding, which could have been due to intraspecific competition with other breeders for prey or increased demand for food from chicks. 35 Migration Timing and distance of migration varied among individuals, and some birds remained near the breeding colony year round. In other bird species, competition for early arrival on breeding territories, combined with individual quality leads to diverse migration strategies such as those I observed (Myers 1981, Kokko 1999). Stationary birds that remain near the breeding colony year-round may gain a competitive advantage by conserving energy that might otherwise be spent traveling to a nonbreeding location, and they may procure higher quality breeding territories before migratory birds arrive at the colony. For example, in Cory’s shearwaters (Calonectris diomedea), resident birds occupied nesting burrows on the breeding grounds during the nonbreeding season and were more likely attempt breeding compared to long-distance migrants (Pérez et al. 2013). Theoretically, stationary individuals that remain near the breeding colony during nonbreeding may be more efficient at locating resources during breeding and therefore also may have smaller home ranges compared to migratory individuals (Van Moorter et al. 2009). In seabird species with partial residency, competition for nesting habitat is sexbased and occurs most often among males (Pérez et al. 2013). Partial residency on the breeding grounds has been observed in brown pelicans (King et al. 2013), and male brown pelicans invest more effort in nest site selection and territorial defense compared to females (Shields 2002). In this study, breeding home range was significantly smaller for stationary birds compared to migratory birds, although information on the sex of tagged individuals was not available. Whether reproductive success of stationary birds differs from migratory birds is unknown. 36 Breeding site fidelity appeared high during this study and also appears to be high in other species of seabirds and coastal waterbirds (Aebischer 1995, Cézilly et al. 2000). High fidelity to breeding sites within individuals may conserve energy that birds would otherwise invest searching for new colonies (Switzer 1993), competing for space or resources (Kokko et al. 2004), and locating prey (Irons 1998). Individual fidelity to wintering sites has also been observed in some seabird species (Croxall et al. 2005, Phillips et al. 2005, Hatch et al. 2010), but a high degree of plasticity has been observed in others (Croxall et al. 2005, Dias et al. 2010). In this study, within individuals, most birds returned to the same nonbreeding sites in successive years. However, the Atlantic coast is a dynamic system and islands or other coastal habitat used by brown pelicans may be unstable over long periods of time, requiring birds to shift among sites occasionally (Jodice et al. 2007). Development of coastal habitat may further affect site availability over the long term. Therefore, management of breeding and wintering habitat for brown pelicans may require more than protection of currently used sites. Interactions between fisheries and seabirds may broadly impact movement patterns and home range size as birds adjust the timing and location of foraging movements to fishing activity (Tew Kai et al. 2013). The commercial shrimp fishery is of major economic importance in the southeastern US, and ports are regularly located along the southeast Atlantic coast. Studies from within the region indicate that during the breeding season, brown pelicans and other seabirds commonly scavenge bycatch discarded from commercial shrimp trawlers (Wickliffe and Jodice 2010, Jodice et al. 2011). In South Carolina, the energetic value of discarded fish was comparable to natural 37 prey (Jodice et al. 2011), thus birds may benefit by scavenging discards if availability is predictable and consistent. The commercial shrimp fishery in the southeastern US Atlantic operates June - January and peaks in intensity September - October, therefore availability of discards to brown pelicans increases during the postbreeding and early winter seasons. It is unclear if or to what extent the availability of discards may influence movement strategies of individual birds, but the timing of southward movements of satellite tagged individuals does appear to increase coincident with the decline of the commercial shrimping season in South Carolina (Fig. 2.6). Approximately 20% of birds in this study undertook a brief exodus from the colony after arriving there at the end of migration but before initiating breeding. These trips tended to last 8 - 32 days and reach a maximum distance of 350 - 420 km from the breeding colony. Similar pre-breeding, post-arrival trips have been documented in shearwaters (Catry et al. 2009, Guilford et al. 2009), but pre-breeding movements of species in the family Pelecaniformes are not well understood. It is possible that female brown pelicans disperse temporarily to locations where they can efficiently build up reserves and thereby recover or buffer the energetic cost of egg-laying, as observed in Manx shearwaters (Guilford et al. 2009). Alternatively, brown pelicans may prospect other colonies and search for territories or mates before the onset of the breeding season, as has been observed in gannets (Votier et al. 2011), kittiwakes (Cadiou et al. 1994), and cormorants (Schjorring et al. 1999). Prospecting in colonial breeding birds is common and may occur throughout the year, allowing birds to gather information on nest site and resource availability (Harris 38 and Wanless 1989, Péron and Grémillet 2013). In this study, brown pelicans that migrated were regularly observed near other breeding colonies during nonbreeding and may have prospected other colonies and foraging areas. Variation in individual migration strategies, heterogeneity in migratory stopover sites between individuals, and prospecting behavior could drive range expansion for brown pelicans, including the current distribution. Schreiber and Schrieber (1982) suggest that colonization of breeding habitat occurs progressively over seasons and years as loafing areas used during nonbreeding transition to roosting areas used year-round, and finally to fully realized breeding sites. Such a process may have occurred for brown pelicans in the CBDP region, leading to a breeding range expansion from 1978 - present (Shields 2002). Satellite-tagged birds in this study used the CBDP during prebreeding and postbreeding, and observations of juveniles in the region during nonbreeding are common (eBird 2012), though a relatively cold winter climate may restrict brown pelicans from occupying the CBDP region yearround. Habitat use Probability of occupancy of the CBDP for brown pelicans was highest from July October, corresponding to postbreeding and molt periods, and 25% of tagged birds from this study used that area. Brown pelicans undergo an energetically demanding, complete, postbreeding molt (Shields 2002) in which they replace all of their flight feathers. It is therefore important that prey quality and availability at molting sites be relatively high. Extended use of the CBDP region has been observed for diving ducks during winter 39 (Perry et al. 2007), and satellite-tagged common loons (Gavia immer) during postbreeding migration (Paruk et al. 2014), also suggesting this region may provide suitable conditions for migratory waterbirds. During this study, pelicans transitioned to the Floridian ecoregion in December, suggesting that they move south after molt is mostly complete. The CBDP was used by dispersing birds during prebreeding and postbreeding, and is also the site of recent breeding range expansion (Brinker et al. 2007). Active use of the area by top predators such as brown pelicans during important phenological stages suggests that the quality of the CBDP in terms of nesting habitat or forage fish availability is high. However, high levels of pesticides, industrial contaminants, and lead have been recorded in waterbirds collected recently from within the region (Rattner and McGowan 2007), and brown pelicans that spend time in the CBDP may also be exposed to pollutants. Throughout the annual cycle, brown pelicans crossed large marine provinces and smaller ecoregions, encountering habitat types ranging from cold temperate to tropical waters. A generalist foraging strategy in which birds opportunistically dive into schools of fish may enable individuals to access resources in a variety of fundamentally different habitats such as these ecoregions. Brown pelicans are susceptible to mortality and morbidity from cold weather events (Shields 2002), and climate could therefore impact the timing of movements and proportional ecoregion use. Importantly, individual movement data indicated that although birds were captured in South Carolina, many of them spent time in other ecoregions where they may have encountered threats not found 40 in the breeding locations including, but not limited to hunting, fisheries, energy development, or pollution (Jodice and Suryan 2010). Reserve use Use of non-protected areas by brown pelicans was relatively high. Compared to protected areas, unprotected areas are more susceptible to development, and may have higher risk of predation and levels of human disturbance. Brown pelicans in this study spent a large amount of time in nearshore areas and therefore outside the boundaries of existing protected areas, which were primarily terrestrial. Percent of overlap of pelican home ranges with five of the protected areas of interest was low compared to each area’s availability. In contrast, Capers Island Heritage Preserve, along the central South Carolina coast, was used frequently during both breeding and nonbreeding by satellitetagged pelicans. Estimates of overlap between individual home ranges and reserve area could become inflated as a result of nesting activity within a protected area, but breeding colonies were located at least 16 km outside the boundaries of Capers Island Heritage Preserve, suggesting that the observed relationship was influenced by habitat features including undeveloped beach, salt marsh, and brackish water that likely supported foraging, loafing, or roosting within the protected area. Given the abundance of brown pelicans as apex predators, and their association with productive nearshore and estuarine habitats, future marine spatial planning or design of important bird areas could benefit from inclusion of information regarding brown pelican habitat use. 41 Satellite telemetry greatly improved understanding of the movements of brown pelicans in nearshore pelagic areas. Results of this study indicate that the offshore distribution of pelicans, which ranged from 1 - 80 km but was most dense 0 - 10 km offshore, overlaps generally with areas most likely to support wind or other offshore energy development in the southeastern US (Jodice et al. 2013). However, in this study, locations were collected at low temporal resolution and 36% of locations were collected at night when brown pelicans are roosting on land (Shields 2002). To better assess potential overlap with wind energy structures, location data could be collected more frequently and during the day when birds are most likely to be foraging. Doing so would result in kernel estimates with increased accuracy. Spatial data collected at a finer resolution (e.g. via GPS PTTs) would provide better insight into foraging locations and therefore improved understanding of potential overlap between brown pelican home ranges and planned sites for offshore wind and other energy development. Finally, interactions that occur away from the breeding colony, (i.e. on the wintering grounds, on the foraging grounds) may influence breeding success, individual survival, and population dynamics in brown pelicans. Population recovery range-wide is an issue since the species is still listed as one of concern in several states. Therefore, a holistic approach to management of areas that are important for brown pelicans yearround, rather than an approach based solely at an individual breeding colony, may more comprehensively address the ecological needs of the species. 42 CHAPTER THREE VARIABILITY IN FORAGING BEHAVIOR OF MASKED BOOBIES (SULA DACTYLATRA) BREEDING AT ISLA MUERTOS, MEXICO Introduction Within populations, patterns in resource use may vary widely among individuals such that the summarized behavior of the population does not accurately represent interactions that are ecologically important at an individual level (Van Valen 1965, Bolnick et al. 2003). For example, species that are typically characterized as generalists may consist of individuals with specialized behaviors (Bolnick et al. 2003) leading to a wide array of foraging strategies that are challenging to describe at the population level. These diverse foraging strategies may, however, serve to reduce intraspecific competition, perhaps via mechanisms such as the expansion of diet breadth in a portion of the population (Goss-Custard et al. 1984, Golet et al. 2000). Individual variability in foraging behavior also may mitigate the effects of intraspecific competition when resources are patchy and ephemeral (Goss-Custard et al. 1984), and may therefore increase the resiliency of a population to changes in prey availability in space and time (Durell 2000). 43 In marine environments, variable foraging strategies within populations of apex predators may be a reflection of the patchy distribution of prey fish (Golet et al. 2000, Staniland and Boyd 2003). In pelagic systems, features of the environment drive prey distribution (Cushing 1990, Anderson and Rodhouse 2001, Stevens et al. 2003); for instance, sea surface temperature and productivity influence geochemistry that subsequently can affect the abundance of prey (Ryther 1969), and water circulation and mixing regimes transport and aggregate prey (Lobel and Robinson 1986). Prey can respond to these features across a wide range of spatial and temporal scales (e.g. hours to decades, single meters to hundreds of km) and these responses can differ depending on species, density, and behavioral patterns of prey, resulting in prey that are patchy and vary in their associations with features of the environment (Haury et al. 1978, Sanvicente-Añorve et al. 2000, Pattrick and Strydom 2014). Apex predators must therefore efficiently process environmental cues derived from physical habitat features to locate prey, and variability and patchiness of the environment may be reflected in foraging behavior among individuals. Habitat associations in seabirds have been commonly studied, and foraging behavior of groups of individuals within species has been linked to a variety of oceanographic features including but not limited to sea surface temperature (Kappes et al. 2010), mesoscale currents (Kai et al. 2009), and depth of the thermocline (Spear et al. 2001). The masked booby (Sula dactylatra) is a predatory seabird with a pantropical distribution that seizes prey by plunge-diving into schools of fish (Anderson 2009), and foraging behavior in the species therefore may be linked to oceanography that influences 44 the distribution of prey. Masked boobies forage on a variety of prey species (Anderson 2009), and it is possible that the average or typical behavior that characterizes populations does not fully describe the variability in prey-sensing behavior that may occur among individuals. Approximately 60% of the north Atlantic population of masked boobies breeds at Isla Muertos, which is located in the southern Gulf of Mexico. Little is known about the birds’ habitat use in relation to the marine areas in and adjacent to Isla Muertos or the Gulf of Mexico in general, particularly as it may relate to environmental features that correspond to foraging. Studies of masked boobies in other systems suggest that foraging behavior during breeding varies between populations and locations (Asseid et al. 2006, Weimerskirch et al. 2008, Weimerskirch et al. 2009a, Young et al. 2010, Kappes et al. 2011, Sommerfeld 2013). Foraging behavior also varies among individuals within a population in similar species including northern gannets (Morus bassanus) during migration (Kubetzki et al. 2009), and cape gannets (Morus capensis) during chick provisioning (Mullers and Tinbergen 2009). Information on individual variability in prey searching behavior of masked boobies in relation to oceanography of the Gulf of Mexico may provide a new perspective on foraging behavior in the species. I examined at-sea movements of breeding masked boobies tracked with GPS tags. My objectives were to 1) describe locations of foraging trips and determine foraging behavior, 2) examine prey-searching behavior among individuals, and 3) investigate oceanography of foraging locations and therefore prey patches. I predicted that, at an individual level, masked boobies would exhibit behavioral differentiation, resulting in diverse search behaviors, and that variability in the environmental characteristics 45 associated with foraging habitat would be high between individuals. These data represent the first assessment of movements to date for the species in the Atlantic region and as such can be used to understand how top predators respond to oceanography in the Gulf of Mexico and to provide a template for the study of the other seabirds nesting in the region. Methods Study area Data were collected 17-29 May 2013 and 1-15 November 2013 on Isla Muertos (22.4 N 89.7 W) at Arrecife Alacranes National Park (AANP), which is located on Campeche Bank in the southern Gulf of Mexico (Fig. 3.1). Isla Muertos is approximately 0.5 km2 and consists of coral sand platform reef (Chávez and Hidalgo 1988), with bare ground surrounding a core of low-lying succulent vegetation, grasses, and shrubs (Protegidas 2007). All seabird species that breed on the island also share nesting habitat with masked boobies, including ca. 350 pairs of magnificent frigatebirds (Fregata magnificens), ca. 200 pairs of sooty terns (Sterna fuscata), ca. 13 pairs of red-footed boobies (Sula sula), and ca. 9 pairs of laughing gulls (Leucophaeus atricilla). There are 2500-3000 breeding pairs of masked boobies and ca. 100 additional pairs breed on other islands in AANP (A.V. Moncada unpublished data). Masked boobies at AANP breed year-round with peak nesting activity in May-June and November-December (A.V. Moncada unpublished data). 46 Figure 3.1 Location of Isla Muertos, the largest breeding colony for masked boobies in the north Atlantic region, in relation to the boundary of Arrecife Alacranes National Park and the prominent bathymetry of the Campeche Bank, Mexico. At-sea foraging movements of 77 breeding masked boobies were recorded with GPS loggers during May and November 2013. 47 Data collection I used archival GPS loggers (Mobile Action I-gotU g120) to record the foraging tracks of individual masked boobies. Tags were removed from the commercial casing and repackaged in heat-shrink tubing. The frequency with which tags recorded locations was adjusted several times during the study (one location every 10, 33, 50, or 100 sec) to optimize battery life. Birds were captured from opportunistically selected nests with a handheld net, and tags were attached to the underside of three central retrices with 4-5 strips of Tesa tape. The total attachment (GPS tag and tape) weighed 20.6 grams, corresponding to 1.7% of the mass of the lightest adult measured. During initial capture, adults were sexed by vocalization (Nelson 1978), weighed (± 10 g), measured for culmen and tarsus (± 0.1 mm), and colormarked on the chest with non-toxic paint to facilitate detection of tagged individuals on nests; chicks were weighed (± 1 g) and measured for relaxed wing chord (± 1 mm), head-bill, and tarsus (± 0.1 mm). Birds were released at the nest and in all cases quickly resumed attendance. In May, all tagged birds were attending chicks ranging in development from ca. 1 - 10 weeks post-hatch based on feather development (e.g. feathering ranged from unfeathered to body feathers and partially grown wing feathers). In November, few chicks were present, and tagged birds were incubating or brooding young chicks that ranged in age from ca. 1 - 4 weeks post hatch (e.g. unfeathered to body down and no wing feathers). GPS-tagged individuals were recaptured 37 - 101 hours after deployment. Upon recapture, GPS tags were removed and birds were examined for condition. Tag data were downloaded and data were grouped into individual trips beginning with the location 48 immediately prior to colony departure and ending with the location immediately following colony return. Only complete trips with regular locations from colony departure to colony return were included in analyses. Each foraging trip, or track, was processed using the R package adehabitatLT (Calenge 2011a). Locations that represented unrealistic flight speeds over 90 km/h were removed (< 20 locations), and tracks were interpolated at 100-second intervals. Overnight trips were subdivided to exclude nocturnal locations where birds appeared to be loafing on the water (Sommerfeld et al. 2013a). For each individual trip, I calculated trip duration (hours between colony departure and return), total distance traveled (sum of the displacements between adjacent locations), and maximum distance from the colony (largest Euclidean distance from a location off of the colony to the colony). Outbound and inbound azimuths were calculated by measuring the angle between the colony and the location of the bird when it was 2 km from the colony. Habitat use GPS data can be used to infer locations which correspond to active foraging (i.e., area restricted search, ARS) by identifying areas in which the rate of turning is increased and the rate of speed is reduced (Tinbergen et al. 1967). I applied a first passage time (FPT) analysis (Fauchald and Tveraa 2003) to each trip (Fig. 3.2) to delimit locations which correspond to ARS. One location from a trip was centered within a circle of a fixed radius, and the time required for an animal to traverse forward and backward along 49 the track from that location until it exited the circle was measured. The measurement was repeated for each location along the track. The entire iteration was repeated for circles of radii ranging from 10 m (the approximate accuracy of GPS locations) to 35000 m (1/2 the average distance from the colony for all recorded locations), at 10 m increments. The difference between the FPT backwards and forwards through each circle from the central point was log-transformed so that the variance was independent of the magnitude of the mean (Fauchald and Tveraa 2003), which improved detection of maxima. The maxima in variance(log(FPT)) correspond to radii at which search effort is concentrated, and this measure was used to identify prominent scales of ARS. To designate locations as ARS or non-ARS for each identified scale I used the penalized contrast method of Lavielle (Lavielle 2005, Barraquand and Benhamou 2008) to group locations that have high FPT values and are close to each other along the track. The method is a non-parametric segmenting function based on a contrast matrix. The number of possible segments that could be formed from a track (k-value) was set to a minimum of two and a maximum of 20. Analysis was completed using the R package adehabitatLT (Calenge 2011a). In some cases, FPT analysis identified multiple ARS radii within a single trip. For fine-scale analysis of foraging behavior and oceanographic habitat use, I selected only the smallest scale for each trip. I also eliminated ARS scales over seven km that likely corresponded to mesoscale search behavior rather than targeted prey-capture. 50 Figure 3.2 Sample analysis of a GPS track illustrating delineation of locations that correspond to area restricted search (ARS) behavior. Scale bar in (a) also applies to panels (b) and (d). (a) A portion of a GPS track (line) with individual locations (points). (b) For each location along the track, the amount of time required to cross a circle of a given radius (in this case radius = 2 km) is calculated (the first passage time; FPT). Red arrows indicate direction of travel. The circle on the left contains an example of direct movement at a moderate speed, resulting in short FPT. In contrast, the circle on the right contains an example of tortuous movement at slow speed, resulting in long FPT and potentially corresponding to ARS behavior. (c) FPT analysis is repeated multiple times, using circles with incrementally increasing radii (x-axis). For each radius, the variance log(FPT) of the calculated FPT values is plotted and those points are connected via an interpolated line for optimal visualization. The radius that corresponds to the peak log(variance) is the dominant scale of ARS. In this example, maximum variance log(FPT) corresponds to a search radius of 1980 meters. (d) Once the scale of ARS is identified, the penalized contrast method of Lavielle is used to cut the track into segments consisting of sets of locations with similar FPT values (range 0 - 23 h). Segments with overall high FPT values correspond to ARS behavior (blue points); segments with low FPT values correspond to non-ARS behavior (gray points). 51 Environmental variables were extracted for each individual location at the smallest available spatial scale and linearly interpolated in ArcGIS using Duke University’s Marine Geospatial Ecology Tools (Roberts et al. 2010) unless otherwise specified. A blended product of daily sea surface temperature (SST; °C) was derived at three scales; daily SST at spatial resolution of 0.01°, 8-day composites at a spatial resolution of 0.05°, and monthly composites at a spatial resolution of 0.05°. Daily data were compiled from various sensors and a Global 1 km SST (G1SST) analysis by the Group for High Resolution Sea Surface Temperature (GHRSST). Eight-day and monthly data were gathered through NASA’s Jet Propulsion Laboratory and published by the Physical Oceanography Distributed Active Archive Center (PO.DAAC). Sensors that gathered measurements included the Advanced Very High Resolution Radiometer (AVHRR), the Advanced Along Track Scanning Radiometer (AATSR), the Spinning Enhanced Visible and Infrared Imager (SEVIRI), the Advanced Microwave Scanning Radiometer-EOS (AMSRE), the Tropical Rainfall Measuring Mission Microwave Imager (TMI), the Moderate Resolution Imaging Spectroradiometer (MODIS), the Geostationary Operational Environmental Satellite (GOES) Imager, the Multi-Functional Transport Satellite 1R (MTSAT-1R) radiometer, and in situ units attached to buoys. Monthly values of chlorophyll-a (mg/m3) were derived at a spatial resolution of 0.05° from standard mapped images provided by the Moderate Resolution Imaging Spectroradiometer (MODIS) sensor carried onboard NASA’s Aqua satellite. Velocity (m/s) of flowing water was calculated as the sum of eastward (u) and northward (v) sea water velocity and interpolated in five-day increments at a spatial resolution of 0.33° from 52 satellite observations from altimeters, scatterometers, and SST sensors by the National Oceanic and Atmospheric Administration’s (NOAA) Ocean Surface Current Analyses Real Time (OSCAR) project. Bathymetric data (m) were obtained at a spatial resolution of 0.016° from NOAA’s National Geophysical Data Center ETOPO1 Global Relief Model (Amante and Eakins 2009) using the R package marmap (Pante and SimonBouhet 2013), and extracted for each GPS location using R package raster (Hijmans and van Etten 2012). Fourteen-day oceanic front probability was generated at a spatial resolution of 0.05° through the NOAA CoastWatch Program by applying an edge detection algorithm to daily SST datasets acquired onboard NASA’s Geostationary Operational Environmental Satellites (GOES) (Breaker et al. 2005). The dataset was accessed by querying ERDDAP (http:// coastwatch. pfel.noaa. gov/erddap/). I calculated distance from GPS locations to nearest front. Daily sea surface height anomaly (SSH; m above a reference sphere) and mixed layer depth (MLD; m; the depth at which the temperature is 0.2° C cooler than the temperature at the surface) were derived at a spatial resolution of 0.05° from data from sensors and the Hybrid Coordinate Ocean Model (HYCOM; Cummings and Smedstad 2013) Gulf of Mexico analysis. Analysis and data collection are performed by the Navy Coupled Ocean Data Assimilation (NCODA), which assimilates data from satellite sensors collected by the Naval Oceanographic Office (NAVOCEANO) Altimeter Data Fusion Center, satellite and in situ SST measurements, and in situ vertical temperature 53 and salinity profiles from ship-based expendable bathythermographs (XBTs), freedrifting Argo floats, and moored buoys. Statistical analysis All statistical analyses were conducted in R 3.0.3 (R Development Core Team 2014). A variable number of trips were recorded for each bird, therefore, to achieve even representation across individuals I randomly selected one trip per bird for all subsequent analyses, resulting in 77 trips (32 in May and 45 in November). Wilcoxon rank-sum tests, Student’s t-tests, Kruskal-Wallis tests, and generalized linear mixed models (GLMM) with individual bird identity as a random effect were used to compare characteristics of foraging trips and ARS behavior between seasons, sexes, and stages (i.e., incubation and chick-rearing). Comparison of stages was conducted for November only as May data included only chick-rearing birds and November data included chick-rearing and incubating birds. Circular statistics for comparing azimuths of departure, arrival, and ARS between seasons, sexes, and stages were calculated using package circular (Agostinelli and Lund 2013). Watson's Two-Sample Test of Homogeneity was used to compare azimuths between groups. The level of significance for each test was set to 0.05 although p-values are reported throughout. I used a bootstrapped classifier algorithm, the random forest (RF) analysis (Breiman 2001, Cutler et al. 2007), to determine the extent to which individual environmental variables of interest predicted ARS behavior. For a single trip consisting of a series of locations, I generated a classification tree with ARS as a binomial 54 dependent variable (ARS, non ARS) and nine environmental variables of interest as predictor variables. At each branch, the environmental variable and corresponding value that resulted in the most accurate split of locations into ARS and non-ARS behavior was selected. The process continued until as many locations as possible were classified, resulting in a final model. The tree was built using a random selection of two-thirds of the locations from each trip; the remaining one-third of the locations was used for model validation. To build a RF, the process was iterated 1000 times, resulting in 1000 possible trees. At a given branch, RF analysis randomly selected and considered only three predictors of interest from the pool of nine (the number of predictors used at each branch was calculated as the square-root of the total number of predictors; Breiman 2001). Correlation between environmental variables differed between trips, however, during permutation of trees, variables were often subsetted so they were separate from one another and thus could be evaluated for performance independently. The Gini Index, a measure of the relative contribution of each variable towards formulation of a complete model (a.k.a. reduction in node impurity), was computed across all trees. To identify environmental conditions that correspond to foraging behavior on an individual level, I conducted a separate RF analysis for each trip using package randomForest (Liaw and Wiener 2002). I extracted the Gini index for nine environmental variables for each of 72 trips. To consolidate each of the 72 models, I considered only environmental variables with a Gini index that was greater than 15% of the total reduction in node impurity for each model. This resulted in a majority of models with an 55 optimal amount of complexity (1-3 variables), and few models with no complexity (0 variables) or a high degree of complexity (4-5 variables). I used generalized additive mixed models (GAMM) to investigate and visualize the shape of several of the prevalent relationships (as identified by RF analysis) between ARS behavior and environmental characteristics. I chose to focus on three environmental characteristics that contributed frequently to the separation of ARS and non-ARS behavior in RF models and were important for a large number of individuals: SSH, velocity, and distance to front. A binomial GAMM (package mgcv; Wood 2011) was applied separately for each of the three environmental variables, with ARS behavior at a given location as the dependent variable (1, ARS; 0, no ARS), and SSH, velocity, or distance to nearest front as the explanatory variable (adding more complexity and variables decreased the likelihood that models would converge). Individual was included as a random effect, and a first-order autoregressive time series structure was incorporated to account for non-independence of locations within a trip. Cubic regression splines are flexible for modeling a variety of nonlinear relationships (Zuur et al. 2009) and were specified as the smooth. Models were built using the following steps: 1) choose a variable of interest (SSH, velocity, or distance to front), 2) select only the birds that extensively used the environmental variable under consideration (extensive use was defined earlier as a contribution to reduction of node impurity of over 15% in RF models), 3) plot and examine the overall shape of the nonlinear relationship for each bird, 4) pool data for birds with a similar-looking relationship (n.b. this occurred without accounting for 56 season, sex, or stage since the goal is to identify trends in behavior), 5) apply the GAMM to the pooled data, 6) if the model converges and has small confidence intervals, increase complexity by including more birds, 7) repeat steps 3 - 6 with that goal of building several models for one variable that illustrate different types of trends (e.g. positive, negative). Results Birds primarily traveled south-southeast of the colony towards the Yucatán peninsula during foraging trips in both May and November (Fig. 3.3). Several birds foraged west or north of the colony, and two individuals traveled northwest to the edge of the Campeche Bank shelf (Fig. 3.3). Birds ranged beyond the park boundary in 87% of trips, and 86.4% of foraging locations occurred outside of the park. Movements from the colony to ARS zones and from ARS zones back to the colony were usually direct, though a few birds meandered extensively. 57 Figure 3.3 Arrecife Alacranes National Park boundary (black oval) in relation to locations of small-scale area restricted search behavior (colored points) identified from first passage time analysis. Foraging trips (gray lines; n = 129; multiple trips per bird are pictured) were recorded from masked boobies nesting at Isla Muertos (black star), Mexico, May and November 2013. 58 Scales of area restricted search Overall, one-hundred twenty-nine complete foraging trips were recorded from 77 individuals (Fig. 3.3). From the subset of trips which were selected for further study (i.e., one trip from each bird, complete trips only, n = 77), Masked Boobies displayed nested, hierarchical scales of ARS (Fig. 3.4). Plots of variance of log(FPT) indicated ARS occurred at a single scale in 35% of birds (i.e., single and distinct peak) but at multiple scales (i.e., 2 - 5 localized peaks) in 65% of birds. FPT analysis identified at least one scale of ARS in 97% of birds. In the remainder of trips (three out of 77), no ARS was identified suggesting that birds did not concentrate search effort at any particular scale. 59 Figure 3.4 An example of multiple scales of area restricted search (ARS) behavior during a single foraging trip recorded for a masked booby nesting at Isla Muertos (star), Mexico, May 2013. Multiple scales of ARS were identified from the variance log(first passage time) plot (inset box) which has four prominent local maxima, each indicated by a dotted line. Within the track, the locations which correspond to foraging at each scale (large map; delineated by colors that correspond with the dotted lines on the plot) are nested from largest to smallest. Points indicate interpolated GPS locations, circles indicate search radii, arrows indicate direction of travel. 60 At-sea movements and foraging behavior ARS behavior regularly occurred at the furthest distance from the colony during each trip (Spearman’s rho = 0.83, p < 0.001), which was near the temporal midpoint of foraging trips. The variability in the direction of approach to the colony during inbound legs of foraging trips was relatively low (CV = 0.18; Fig. 3.5; Table 3.1). 61 Figure 3.5 Distribution of azimuth from the colony during foraging trips of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Departure and arrival: angle between the colony and the location of the bird when it was two km from the colony. ARS: angle between the colony and locations of area restricted search. Numbers and dashed circles inside each plot correspond to the number of individuals included in each bar. n = 77 birds. 62 11.3 ± 9.9 (1.0 - 49.0) 459 565 W or χ2 0.01 0.01 0.1 P 493 884 913 878 W or χ2 0.49 0.01 0.14 0.07 0.16 P - - 292 184 177 130 W 0.47 - - 0.16 0.26 0.20 0.01 P Stage effect 205.1 ± 115.8 (22. 9 - 557.0) 473 < 0.01 1.4 0.16 261 0.41 Sex effect 74.1 ± 38.4 (10.2 - 211.0) 1080 0.96 3.7 0.77 940 Season effect Maximum distance from colony (km) 9:25 ± 3:47 (3:40 - 18:06) 0.7 0.05 765 0.92 mean ± sd (range) Time of colony departure (hh:mm) 190.7 ± 57.7 (17.2 - 349.7) 6.2 0.91 2605 Trip duration (h) Azimuth from colony at departure (°) 207.0 ± 37.1 (102.6 - 286.7) 731 0.03 Number of nested ARS scales Total distance traveled (km) Azimuth from colony at arrival (°) 1.9 ± 0.9 (1 - 5) 1977 63 5.3 ± 5.5 (0.1 - 26.0) Size of ARS zones (km) Table 3.1 Foraging parameters of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Wilcoxon rank-sum tests were used to compare characteristics of foraging trips between seasons (May and November; n = 77 birds), sexes (n = 77 birds), and stages (incubating and chick-rearing in November; n = 41 birds). Watson's TwoSample Test of Homogeneity was used to compare circular statistics. Values are presented as mean ± 1 standard deviation. Ranges are in parenthesis. Significant results appear in bold; alpha = 0.05. Within-season variability in trip duration, total distance traveled, maximum distance from the colony, and size of ARS zones was greater in May compared to November. Birds traveled longer total distances in November (228.4 ± 102.6 km) compared to May (172.4 ± 126.7 km; Table 3.1). Additionally, a higher percentage of birds traveled west in November (40%) compared to May (26%; Fig. 3.5), and birds that traveled west in November also ranged farther from the colony than birds that traveled west in May (Wilcoxon rank sum test W = 12, P < 0.001). ARS scales were larger in November (6.1 ± 5.6 km) compared to May (4.2 ± 5.2 km), and ARS zones were located farther from the colony in November (79.5 ± 32.3 km) compared to May (60.0 ± 35.6 km). Upon return from foraging trips, the distribution of angles at which birds approached the colony differed slightly between May (204.5 ± 43.9°) and November (209.4 ± 31.7°; Watson's Two-sample test of homogeneity χ2 = 6.2, P = 0.05). Birds left the colony primarily during daylight, though a small percentage departed prior to civil dawn, (3% in May, 22% in Nov; no birds departed after civil twilight). Birds departed the colony later in May (11:07 ± 3:46 hours) compared to November (08:14 ± 3:11 hours; Table 3.1). Females departed the colony earlier (08:31 ± 3.18 hours) compared to males (10:30 ± 3:54 hours). Birds that initiated trips earlier in the day traveled significantly farther distances from the colony (GLMM t = -3.8, P = 0.0003) and spent more time in small-scale ARS (GLMM t = -3.0, P = 0.004) but did not significantly increase the total duration of trips (GLMM t = -0.5, P = 0.62) compared to birds that initiated trips later in the day. Birds spent the night away from the colony during 21% of foraging trips (males 16% of trips, females 24% of trips) and appeared to 64 rest on the water (based on periods of little movement observed in GPS tracks) from after civil twilight until just before civil dawn. Trip duration in November was longer and more variable in incubating birds (14.1 ± 10.2 h) compared to chick-rearing birds (7.7± 4.8 h; Table 3.1). Additionally, at the smallest ARS scale measured for each bird (< 7 km), the size and number of ARS zones, and the distance traveled and time spent in ARS was more variable in incubating birds compared to chick-rearing birds. Birds spent significantly more time in ARS during incubation (3.3 ± 2.0 h) compared to chick-rearing (1.8 ± 0.8 h; Table 3.2). 65 1.4 ± 0.7 (1 - 4) 1.9 ± 1.4 (0.1 - 6.1) 511 651 534 W or χ2 0.85 0.16 0.83 0.25 P 683 704 778 662 647 W or χ2 0.82 0.70 0.53 0.14 0.84 0.99 P - 157 222 96 136 246 W - 0.26 0.57 0.01 0.31 0.22 P mean ± sd (range) 2.6 ± 1.8 (0.2 - 8.1) 618 < 0.01 0.4 Size of ARS zones (km) 12.6 ± 10.6 (1.0 - 60.9) 335 0.81 Number of ARS zones per trip Distance traveled in ARS (km) 64.6 ± 32.6 (1.8 - 140.9) 0.4 Time spent in ARS (h) Distance from colony to ARS (km) 170.5 ± 61.8 (12.6 - 328.0) Season effect Sex effect Stage effect 66 Azimuth from colony to ARS (°) Table 3.2 Foraging behavior of masked boobies nesting at Isla Muertos, Mexico during May and November 2013. Wilcoxon rank-sum tests were used to compare characteristics of foraging behavior between seasons (May and November; n = 72 birds), sexes (n = 72 birds), and stages (incubating and chickrearing in November; n = 41 birds). Watson's Two-Sample Test of Homogeneity was used for circular statistics. Values are presented as mean ± 1 standard deviation. Ranges are in parenthesis. Significant results appear in bold; alpha = 0.05. ARS: area restricted search. Oceanographic habitat use Of the nine environmental variables that I assessed, there was a high degree of variability in the number and identity that were identified as important predictors of foraging behavior for each of the 74 birds (three individuals with no identifiable scale of ARS were excluded from analysis). The relative contribution of each variable to reduction in node impurity tended to be low to moderate, ranging from range 0 - 37.8%. SSH and velocity independently appeared in the greatest number of individual models (44.4% and 37.5% of models, respectively; Table 3.3) and had the highest percent reduction in node impurity within each model (23.6 ± 6.3%, 23.4 ± 6.2%, respectively). Distance to front contributed less frequently to individual models (26.4%; Table 3.3) compared to other variables, but the percent reduction in node impurity within models (22.0 ± 5.7%) was similar to levels achieved by SSH and velocity. In 42% of trips, two environmental variables were identified as important predictors of foraging behavior; in 43% of trips, three variables were identified as important predictors of foraging behavior. Two-variable combinations that appeared frequently were SSH + velocity (21%), SSH + MLD (11%), and SSH + 8-day SST (8%). There was little consistency between birds in the identity of variables appearing in the three-variable models, however, three-variable combinations that appeared most frequently were SSH + velocity + distance to front and SSH + velocity + chlorophyll-a (5% each). Validation of the random forest models indicated that the percentage of locations correctly classified for each model from the reserved data was high (99.0 ± 1.1%). Sensitivity (the percentage of ARS locations correctly classified) and specificity (the 67 percentage of non-ARS locations correctly classified) of individual models was also high (sensitivity: 98.9 ± 1.4%; specificity: 98.6 ± 2.1%). The probability of a bird engaging in ARS behavior based on SSH, velocity, distance to front) was nonlinear for 92% of birds (Fig. 3.6). I detected both negative and positive trends in the probability of ARS behavior occurring in relation to SSH, velocity, and distance to front. 68 0.05° Speed, direction, and magnitude of water movement linked to prey distribution Physical forcing influences prey distribution and turbulence influences detection of prey by MABO 20 27 32 26.4 27.8 37.5 44.4 Frequency Percent of models Daily 0.33° Biogeochemical regime linked to prey distribution and abundance 19 20.8 Hypothesized link Sea surface height anomaly Five-day 0.05° Proximity to features that aggregate prey and influence production; visual cue for MABO 15 Spatial resolution Velocity of moving water Monthly 0.05° Influences activity of subsurface predators and prey and therefore accessibility of prey for MABO Temporal scale Chlorophyll-a concentration Fourteen-day 0.05° 69 Variable Distance to nearest SST front Daily 11.1 Mixed layer depth 8 11.1 19.4 Recent thermal conditions linked to prey activity level and abundance 8 8.3 14 0.05° Water circulation and mixing regime influences prey community composition and prey abundance 6 Immediate thermal conditions linked to prey activity level Eight-day 0.016° Thermal regime linked to prey abundance 0.01° Sea surface temperature None 0.05° Daily Bathymetry Monthly Sea surface temperature Sea surface temperature Table 3.3 Physical oceanographic characteristics considered in random forest analysis and the hypothesized link with foraging behavior of masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Frequency and percent of models represent the number and percent of individual models (n = 72 birds) in which a particular variable was considered important for predicting foraging behavior. Temporal scale and spatial resolution refer to the scale and resolution at which the environmental variables were measured (see Methods). Figure 3.6 Generalized additive mixed models (GAMM) were used to examine the relationship between area restricted search (ARS) behavior and physical oceanography in foraging masked boobies nesting at Isla Muertos, Mexico, May and November 2013. Different groups of individuals that showed similar trends for a particular environmental variable of interest were used to build each working model. N for each curve is listed near the y axis of each plot, and the total number of birds that showed a strong relationship for a particular environmental variable (as determined by random forest analysis) and could have potentially contributed to GAMM formation was sea surface height anomaly = 32 and velocity of water = 27. The colored line represents model predictions and light-gray areas represent 95% confidence intervals. 70 Discussion At-sea movements and foraging behavior Variability in foraging behavior and foraging locations was high among individuals during this study, both within and between seasons and breeding stages. The timing and duration of foraging trips, the number and size of scales at which birds searched for prey, and the environmental features that characterized small-scale search locations were all highly variable. High levels of individual variability in movement patterns have been observed in other species of Pelecaniformes at multiple spatial and temporal scales, including the timing and location of migratory movements in northern gannets (Morus bassanus; Kubetzki et al. 2009), the duration of foraging trips in breeding Cape gannets (Morus capensis; Mullers and Tinbergen 2009), and the depth and frequency of foraging dives in king cormorants (Phalacrocorax atriceps; Kato et al. 2000). The breeding population at Isla Muertos is large (2500 - 3000 pairs), and birds may compete for resources with conspecifics from a neighboring colony 170 km to the west (Cayo Arenas; 100 - 300 pairs), which is within the foraging range for masked boobies described in this study. Colony size and productivity of water surrounding the colony may interact to shape foraging behavior in seabirds (Ashmole 1963). For example, Grémillet et al. (2004) suggested that competition between two neighboring colonies of Cape gannets lead to colony-based differences in habitat use. Similarly, Wakefield et al. (2013) found that foraging ranges in northern gannets were greater when competition 71 within colonies was high and when colonies were large. Individual variability in foraging behavior and foraging locations may be a mechanism by which intraspecific competition is reduced (Van Valen 1965), particularly in colonial species (Bolnick et al. 2003), especially when there is little differentiation in foraging behavior between sexes. The variable foraging behavior observed among individuals in this study and the lack of consistent differentiation in foraging strategies between sexes may therefore be a reflection of intraspecific competition. High individual variability in foraging behavior and foraging locations may also increase the rate of detection of prey patches among individuals where the diet is not homogeneous and where prey availability is ephemeral in time and space. In combination with visual flock recruitment, a common behavior in Sulids (Nelson 1978, Haney et al. 1992, Tremblay et al. 2014), variability in foraging behavior may improve foraging efficiency among individuals (Buckley 1997). For example, in social ants, individual variability in foraging strategies lead to efficient search coverage of the area surrounding the colony and fast identification of food patches (Deneubourg et al. 1983, Portha et al. 2002). Regurgitated fish collected from masked boobies at Isla Muertos comprised six species in five families, with no single species appearing in more than 35% of samples (A. Moncada, unpublished data), supporting the concept that different individuals from the same colony capture a variety of prey and may therefore be employing different foraging strategies. Foraging behavior during incubation was more variable and trips were longer in duration compared to chick-rearing. Trade-offs associated with meeting the energetic 72 demands of both parent and offspring during chick-rearing may result in a detectable shift in behavioral patterns between incubation and chick-rearing stages resulting in more consistency in foraging trip duration when chicks are being provisioned (Robertson et al. 2014). Attendance at the nest, and hence the duration of foraging trips, also can be influenced by predation rates at the nest. In situations where predation at the nest is high, parents may invest more time in nest or chick guarding (Rothenbach and Kelly 2012). At Isla Muertos, predation of masked booby chicks (but not eggs) by breeding magnificent frigatebirds is common (personal observation), and unguarded chicks could also be attacked by masked boobies from neighboring territories (Weimerskirch et al. 2009a). Nest defense during chick-rearing may therefore be an important component of individual reproductive success and a strong driver of differences in foraging behavior between incubating and chick-rearing birds, leading to foraging behavior that is less flexible during the chick-rearing stage. Sex-specific foraging behavior Characteristics of foraging trips (i.e., range, duration) and foraging behavior within trips (i.e., size and number of ARS zones, and time spent in ARS) did not differ between sexes. Studies of breeding masked boobies in the western Indian Ocean (Kappes et al. 2011), central Pacific (Young et al. 2010), and eastern Pacific (Weimerskirch et al. 2009a) also found little evidence for differentiation in foraging behavior between sexes. Young et al. (2010) posit that lack of food resources may limit foraging locations within commuting distance from the colony to one area, subsequently resulting in males and 73 females foraging in the same location. In environments where productivity is high and broadly distributed, foraging behavior may differ between the sexes. Abundant or widespread productive areas may allow for higher flexibility in behavior between males and females, resulting in division of labor, as is the case for blue-footed boobies (Sula nebouxii) and brown boobies (Sula leucogaster) in the Gulf of California (Weimerskirch et al. 2009b). Sex-based differences in foraging behavior may also be masked by resource depletion near breeding colonies, resulting in both sexes increasing foraging ranges. Hence, differentiation in foraging behavior between sexes may be more likely to occur at small colonies in productive areas where competition is low. Studies of masked boobies that have found little evidence of differentiation in foraging behavior between the sexes are restricted to small colonies (10 - 300 pairs) in unproductive environments (Young et al. 2010, Kappes et al. 2011, Sommerfeld 2013), or extremely large colonies (> 100,000 pairs) in highly productive environments (Weimerskirch et al. 2009a). In the former, low intraspecific competition but limited places to forage results in overlapping use of a small area. In the latter, an abundance of suitable foraging locations may allow for flexibility in behavior between sexes, but high intraspecific competition could result in lack of differentiation. Productivity in the southern Gulf of Mexico is moderate (Longhurst 2010), and foraging trips recorded during this study were distributed across multiple locations (Fig. 3.3). Prey availability may therefore be adequate to support flexibility in parental roles, however high intraspecific competition may have limited the extent of differentiation between the sexes. Finally, differentiation during foraging at Isla Muertos 74 may occur within, rather than among foraging patches as female masked boobies rearing chicks in the eastern and western Pacific dive deeper and more frequently than males (Weimerskirch et al. 2009a, Sommerfeld et al. 2013b), and also deliver significantly more food to the chick (Weimerskirch et al. 2009a). Comparative studies between colonies of varying sizes and in different oceanographic regimes could provide further information regarding factors that may influence partitioning of labor between the sexes during foraging. Oceanographic habitat use In this study, direct measures of dynamic oceanographic topography such as SSH and velocity were most often associated with foraging behavior, suggesting that search and detection of prey was influenced by physical oceanographic processes to some extent. SSH is a measure of topography of the ocean’s surface as influenced by tidal forces, ocean circulation, and salinity, therefore conditions may vary widely based on geographic location. Ocean currents circulate around and within peaks and troughs created by areas of high and low SSH resulting in formation of small and large-scale features of ocean surface topography, including eddies, currents, and gyres. The Gulf of Mexico is a topographically dynamic ecosystem dominated by frequent mixing (Longhurst 2010), and the connection between seabird foraging and SSH may therefore be geographically and species specific, though little is known. SSH was strongly linked to foraging movements of gray-headed albatross in the dynamic south Indian ocean (Nel et al. 2001), and several possible mechanisms may link 75 SSH and velocity nonlinearly to masked booby foraging behavior. First, the physical motion of horizontal currents creates habitat that influences the distribution of prey. Second, boobies appear to possess color and near-ultraviolet vision (Reed 1987) which suggests they can see currents and fronts, and they may use visual cues such as areas of low turbulence and slow-moving currents to locate prey. Fish may colonize areas with turbulence regimes (e.g. areas where SSH is low) to which they are adapted, or surface currents may passively transport and collect fish eggs, larvae, and adults. In flying fish (family Exocoetidae), a major prey item for masked boobies, turbulence and currents such as those associated with areas of lower velocity may influence spawning and dynamic suspension of eggs or larvae within the water column (Stevens et al. 2003). Habitat preferences and local abundance of predatory fish (e.g. tuna) and dolphins (family Delphinidae) that drive prey to the surface (i.e., within reach of plunge-diving seabirds) may also influence the link between dynamic topography and masked boobies. For instance, thermocline depth, which is dependent on dynamic processes and influences the distribution of subsurface predators, was strongly linked to abundance of boobies, tropicbirds, petrels, and storm-petrels in the eastern tropical Pacific (Au and Pitman 1986, Vilchis et al. 2006). Data from fisheries and plankton tows would provide insight into the hypothetical connections between regional currents, fish distribution, and seabird habitat use. The relationship between masked booby foraging behavior and oceanographic habitat characteristics may not be consistent within and between systems, and other factors aside from SSH and velocity may affect ARS. These could include biological or visual cues that indicate the presence of prey. Visual flock recruitment in Cape gannets, 76 for example, significantly reduces the amount of time individual birds spend searching for prey (Thiebault et al. 2014). Individuals may also develop a framework for locating prey by learning from experience gained during foraging trips and may therefore remember and anticipate the location of productive foraging habitat within and between years (Irons 1998). Seabirds may be influenced by large-scale features and processes related to SST, such as the North Pacific Transition Zone (Kappes et al. 2010), the Atlantic Gulf Stream (Haney 1986), or mesoscale convergence zones in the Indian Ocean (Weimerskirch et al. 2004). SST has been linked to seabird habitat use at multiple time scales (i.e., daily, annual, decadal), in temperate and tropical ecosystems, and is widely used to evaluate habitat use and distribution of seabirds (Tremblay et al. 2009). Nonetheless, SST was not a strong or consistent predictor of masked booby foraging behavior relative to other variables during this study, even when considered at multiple temporal scales (daily, 8day, and monthly). Little is known about how SST affects seabirds in the Gulf of Mexico, however, frequent mixing by the loop current and associated eddies may limit the longterm persistence of large-scale SST features, leading to an ecosystem that is highly dynamic and resulting in a weak or inconsistent relationship between SST and foraging behavior. In this study, direct measures of dynamic oceanographic topography predicted foraging behavior more often than habitat descriptors such as SST. SST is a complex measurement which is influenced by dynamic topography and integrates factors including solar heating, runoff, and precipitation (Longhurst 2010) that may not necessarily be linked to prey. It is similarly possible that a time-lag, other than those considered in this 77 study, and intrinsic to the chain of production in the Gulf of Mexico, from nutrient mixing to prey maturation, lead to a temporal mismatch between SST and foraging locations of masked boobies which correspond to prey presence (Grémillet et al. 2008, Suryan et al. 2012, Sommerfeld 2013). Scales of ARS The nested ARS scales observed within individual foraging trips are consistent with hierarchical organization of patches within a given environment and multiscale search behavior of foraging seabirds. For example, Kotliar and Wiens (1990) described a framework for understanding the scales at which patches occur within a given landscape in which individual fish are distributed within fine-scale aggregations of prey, which are distributed within coarse-scale patches, which are in turn nested within large-scale regions. Additionally, Fauchald and Tveraa (2006) predicted that foraging seabirds would search for prey at multiple scales, following the structure of nested patches within the environment. For example, large scales of 10 - 40 km may correspond to the farthest distance at which masked boobies can search. Haney et al. (1992) provide evidence that such a range would correspond closely to the radius of visibility for a seabird from a given altitude. Scales between 1 and 10 km may correspond to search effort within an area of suitable habitat where prey encounter is likely. Small search scales < 1 km may correspond to the approximate size of the moving prey patch as fish are chased by predators and try to escape capture. Tremblay et al. (2014) suggest relatively similar scales of movement based on empirical observations of foraging behavior in Cape 78 gannets. During foraging, each nested scale may correspond to a different set of sensory cues which are used stepwise with changing search scales to locate prey. FPT analysis did not identify a consistent scale of search for all birds, suggesting that birds with no determinable scale either did not forage or adjusted the amount of time spent at each scale of search evenly and continuously during foraging trips. Conversely, birds that searched at multiple nested scales may have done so concurrently, integrating multiple environmental and sensory cues. Foraging seabirds may, for example, scan the proximate eddy for prey and at the same time search the distant horizon for conspecifics. Large gaps exist in scientific understanding of seabird perception and sensing of the environment and prey (but see Nevitt et al. 2008, Machovsky-Capuska et al. 2012). Reserve use Masked boobies nesting at Isla Muertos did not forage regularly within the park buffer zone, suggesting that critical habitat for this species may not be protected to the extent intended during configuration of the park. The objectives for managing AANP include protecting locally important species and the community-level ecological interactions with which they are associated (Protegidas 2007). Protection of land and management of waters close to the breeding colony may not entirely address the breadth of ecological interactions related to masked booby reproduction and maintenance of the population, especially since reproductive performance and population dynamics are strongly linked to resource availability in boobies (Ancona et al. 2012, Bertrand et al. 2012, Weimerskirch et al. 2012, Danckwerts et al. 2014) and in many other species of 79 seabirds. Furthermore, the extent to which foraging habitat of masked boobies within and around the park may be influenced by climate change, fisheries interactions, or energy development remains unclear. Finally, understanding variation in behavior among individuals may enhance understanding of biological systems, leading to the creation of models that explain population activity by integrating individual components, and improving management plans by considering the range of behavior within a population (Bolnick et al. 2003). 80 CONCLUSIONS This thesis examined movement patterns of seabirds at a range of spatial and temporal scales. Habitat use in seabirds may include fine-scale features of the environment as birds search for and capture prey, as well as coarse-scale occupancy of distinct environmental regions. Understanding spatial ecology at multiple scales is important because movement patterns may impact animal life histories in both the shortterm and long-term, influencing, for example, reproduction and survival of individuals, and population dynamics. Results from chapter two demonstrated that brown pelicans exhibit substantial variability in movement patterns and are capable of long-distance migration. Approximately 25% of individuals remain near the breeding colony year-round, which may indicate that birds are territorial. At coarse scales, brown pelicans occupied and moved between tropical and temperate ecoregions, and multiple individuals used the Chesapeake Bay/Delmarva Peninsula region during prebreeding and postbreeding dispersal. At fine scales, brown pelicans primarily used nearshore pelagic habitat outside of protected areas, and offshore habitat within 10 km of the coast; further and more detailed study would improve understanding of potential overlap between brown pelican movements and future offshore wind energy development. Results from chapter three demonstrated that breeding masked boobies initiate foraging trips that range widely in distance, duration, and direction from the colony. During foraging trips, birds used multiple search radii ranging in size from 30 km to 60 81 m, which suggests that birds perceive large-scale features of the environment as well as small-scale features that may be directly related to individual schools of prey. Accordingly, fine-scale foraging behavior corresponded with a variety of oceanographic conditions, suggesting that individual masked boobies use a range of environmental cues to locate prey; further study may improve understanding of whether foraging strategies that appear to vary among individuals are consistent within individuals. Taken together, the two data chapters included in this thesis represent a substantial enhancement to our understanding of movement patterns of Pelecaniformes in the north Atlantic system. The results presented in this thesis can provide valuable information for marine spatial planning efforts and serve as a baseline for anthropogenic based threats such as development, pollution, and commercial fisheries. 82 APPENDICES 83 Appendix A. Individual satellite-tag functionality and latitudinal movements for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Raw data were cleaned by retaining only locations with accuracies ≤ 1.5 km and applying a speed filter of 25 m/s. Bird ID PTT mass (g) Stop Date Duration (days) # Filtered Locations Latitudinal Extent (km) 268 110 May-11 178 409 15.1 269 110 Jun-11 191 429 58.7 270 110 Apr-12 486 493 250.7 271 110 Feb-13 794 728 137.5 272 110 Dec-12 754 814 607.8 273 110 May-11 175 394 25.1 274 110 Mar-12 475 594 297.9 275 110 Feb-11 61 151 123.5 276 110 Jul-11 223 426 1082.0 277 110 Dec-10 17 65 4.3 278 110 Mar-12 454 768 193.7 279 110 Oct-11 306 604 663.7 280 110 Jan-11 42 205 62.9 281 110 Oct-12 668 793 992.6 282 110 Feb-13 807 978 525.5 283 110 Jan-11 39 106 30.9 284 110 Feb-13 783 680 1034.4 285 110 Feb-11 59 254 27.9 286 110 Jan-11 16 92 64.1 287 110 Mar-13 819 872 333.3 288 110 Feb-13 795 907 631.8 289 110 Mar-11 86 328 267.4 290 110 Jun-13 916 981 1443.3 291 110 Apr-11 106 308 1831.2 292 110 Jun-13 915 746 894.2 293 68 Mar-12 457 440 942.5 294 68 Apr-11 124 314 362.1 295 68 Dec-10 15 39 560.4 296 68 Jan-11 28 67 10.0 297 68 Dec-10 12 34 171.9 298 68 Jan-12 408 462 62.3 299 68 Feb-11 61 121 393.2 300 68 Feb-12 438 409 759.6 301 68 Jun-12 547 435 1102.9 84 302 68 Apr-12 481 401 791.9 303 68 Aug-12 612 220 312.9 304 68 Mar-12 439 414 773.5 305 68 Feb-11 71 158 16.7 306 68 Jan-11 35 97 25.3 307 68 Feb-12 420 306 602.6 85 Appendix B. Individual breeding locations, focal region, and home ranges (in km2) for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Mean percent overlap between successive breeding or successive nonbreeding seasons was calculated for each individual. OHCI = Old House Channel Island. A hyphen (-) indicates that the satellite tag stopped transmitting before enough locations could be collected to estimate the parameter of interest. Focal Region (50UD) ID 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 Home Range (95UD) Breeding Colony Crab Bank, SC Marsh Is, SC Crab Bank, SC Crab Bank, SC Beacon Is, NC Crab Bank, SC Marsh Is, SC Pelican Is, NC Crab Bank, SC Beacon Is, NC Beacon Is, NC OHCI, NC OHCI, NC; Wreck Is, VA Crab Bank, SC New Dump Is, NC Fisherman's Is, VA Pelican Is, NC Pelican Is, NC Did not breed - Mean Home Range Overlap BR NB BR NB Between BR Seasons Between NB Seasons 260.9 419.0 201.6 303.4 994.3 185.8 759.0 515.9 211.5 2308.7 530.8 482.3 276.8 238.0 325.3 192.8 318.9 196.5 812.4 689.2 307.2 160.5 501.0 624.2 808.2 701.2 379.2 398.6 674.6 996.2 1964.7 1112.8 1986.5 5540.4 798.5 4421.6 4686.5 1006.1 11587.8 2738.6 3338.5 1071.2 1060.1 1606.8 998.3 2003.1 847.0 3588.6 3603.8 6186.3 700.3 3711.8 4863.2 2934.0 5087.4 2063.0 1793.6 5011.2 0.57 0.71 0.42 0.43 0.10 0.72 0.86 0.63 0.79 0.64 0.45 0.23 0.72 0.49 539.6 1343.1 428.9 581.8 810.4 600.9 - 370.9 907.9 220.5 598.9 412.4 463.5 416.0 332.7 698.7 329.4 243.6 179.9 689.2 3195.2 7130.6 2805.8 3084.8 4103.4 4627.2 - 1608.1 3772.6 990.0 4651.0 2363.8 5818.9 2199.9 2767.2 4680.8 1818.5 1339.7 769.5 3360.2 0.73 0.45 0.83 0.56 - 0.93 0.59 0.31 0.44 0.28 - 86 298 299 300 301 302 303 304 305 306 307 Marsh Is, SC New Dump Is, NC Wreck Is, VA Marsh Is, SC Marsh Is, SC Smith Is, MD OHCI, NC 340.0 950.7 713.6 648.3 511.9 478.3 539.6 484.4 202.1 393.1 557.6 746.9 331.2 1128.9 227.0 348.8 241.0 87 1794.8 4888.1 3495.6 2755.4 2348.2 2429.2 4463.2 1864.2 1395.0 3143.0 6391.4 5465.5 2019.7 5981.8 1010.3 1608.1 1769.1 0.70 - 0.92 0.31 0.19 0.49 0.26 0.37 0.46 Appendix C. Description of individual migration strategies and dispersal locations for brown pelicans satellite tagged in South Carolina, USA, 2010 - 2013. Birds used six distinct ecoregions. Proportions were calculated using the range-wide 95% UD for each individual. Only parks and protected areas up to 50 km inland containing marine, estuarine, swamp, or riverine habitat were considered. A hyphen (-) indicates that the satellite tag stopped transmitting before enough locations could be collected to estimate the parameter of interest. NA indicates that a dispersal location was not identified. Chspk Bay = Chesapeake Bay ID Dispersal location Migration strategy Pre-breeding Post-breeding # Ecoregions utilized Prop of HR in SC Prop of SC HR in SC parks 268 Stationary NA NA 1 - - 269 Stationary NA NA 1 - - 270 Stationary NA NA 2 1.00 0.01 271 Stationary NA NA 1 1.00 0.11 272 Semi-migratory Chspk Bay, MD/VA Chspk Bay, MD/VA 2 0.24 0.00 273 Stationary NA NA 1 - - 274 Semi-migratory Onslow Bay, NC NA 2 0.87 0.25 275 - NA NA 1 - - 276 Migratory Chspk Bay, MD/VA NA 3 - - 277 - NA NA 1 - - 278 Stationary NA NA 1 0.66 0.15 279 Semi-migratory NA NA 2 - - 280 - NA NA 1 - - 281 Migratory NA NA 2 0.13 0.17 282 Semi-migratory NA Chspk Bay, MD 2 0.32 0.01 283 - NA NA 1 - - 284 Migratory NA NA 3 0.06 0.14 285 - NA NA 1 - - 286 - NA NA 1 - - 287 Stationary NA NA 1 1.00 0.16 288 Semi-migratory NA Chspk Bay, MD/VA 2 0.30 0.14 289 Stationary NA NA 1 - - 290 Highly Migratory NA NA 3 0.10 0.13 291 Highly Migratory NA NA 5 - - 292 Migratory Savannah, GA Pamlico Sound, NC 3 0.15 0.23 293 Migratory NA NA 3 0.20 0.14 294 Stationary Pamlico Sound, NC NA 2 - - 88 295 - NA NA 2 - - 296 - NA NA 1 - - 297 - NA NA 1 - - 298 Stationary NA NA 1 1.00 0.38 299 - NA NA 1 - - 300 Semi-migratory NA Chspk Bay, MD/VA 2 0.33 0.14 301 Migratory NA NA 3 0.12 0.33 302 Semi-migratory NA NA 2 0.46 0.19 303 Stationary NA NA 1 - - 304 Semi-migratory NA NA 2 0.48 0.13 305 - NA NA 1 - - 306 - NA NA 1 - - 307 Semi-migratory NA Chspk Bay, MD/VA 2 0.27 0.02 89 REFERENCES Adams, J., C. 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