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Modeling activity patterns of wildlife using time‐series analysis
Authors:Jindong Zhang  Vanessa Hull  Zhiyun Ouyang  Liang He  Thomas Connor  Hongbo Yang  Jinyan Huang  Shiqiang Zhou  Zejun Zhang  Caiquan Zhou  Hemin Zhang  Jianguo Liu
Institution:1. Key Laboratory of Southwest China Wildlife Resources Conservation, China West Normal University, Ministry of Education, Nanchong, Sichuan 637009, China;2. Center for Systems Integration and Sustainability, Department of Fisheries and Wildlife, Michigan State University, East Lansing, MI 48823, USA;3. Department of Wildlife Ecology and Conservation, University of Florida, Gainesville, FL 32611, USA;4. State Key Laboratory of Urban and Regional Ecology, Research Center for Eco–environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China;5. National Meteorological Center, Beijing 100081, China;6. Conservation and Research Center for the Giant Panda (CCRCGP), Wolong Nature Reserve, Sichuan 623006, China
Abstract:The study of wildlife activity patterns is an effective approach to understanding fundamental ecological and evolutionary processes. However, traditional statistical approaches used to conduct quantitative analysis have thus far had limited success in revealing underlying mechanisms driving activity patterns. Here, we combine wavelet analysis, a type of frequency‐based time‐series analysis, with high‐resolution activity data from accelerometers embedded in GPS collars to explore the effects of internal states (e.g., pregnancy) and external factors (e.g., seasonal dynamics of resources and weather) on activity patterns of the endangered giant panda (Ailuropoda melanoleuca). Giant pandas exhibited higher frequency cycles during the winter when resources (e.g., water and forage) were relatively poor, as well as during spring, which includes the giant panda's mating season. During the summer and autumn when resources were abundant, pandas exhibited a regular activity pattern with activity peaks every 24 hr. A pregnant individual showed distinct differences in her activity pattern from other giant pandas for several months following parturition. These results indicate that animals adjust activity cycles to adapt to seasonal variation of the resources and unique physiological periods. Wavelet coherency analysis also verified the synchronization of giant panda activity level with air temperature and solar radiation at the 24‐hr band. Our study also shows that wavelet analysis is an effective tool for analyzing high‐resolution activity pattern data and its relationship to internal and external states, an approach that has the potential to inform wildlife conservation and management across species.
Keywords:animal behavior  external and internal influences  giant panda (Ailuropoda melanoleuca)  GPS collar  time‐series analysis
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