Behavioral Ethogram and PAE Coding System of Tianshan Red Deer Based on Infrared Camera Technology
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1.Xinjiang Key Laboratory for Ecological Adaptation and Evolution of Extreme Environment Biology, College of Life Sciences, Xinjiang Agricultural University, Urumqi 830052; 2.State Key Laboratory of Desert and Oasis Ecology, Xinjiang Institute of Ecology and Geography, Key Laboratory of Ecological Safety and Sustainable Development in Arid Lands, Chinese Academy of Sciences, Urumqi 830011;3.Sino-Tajikistan Joint Laboratory for Conservation and Utilization of Biological Resources, Urumqi 830011; 4.Xinjiang Key Laboratory of Biodiversity Conservation and Utilization in Arid Lands, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011;5.Tianchi Bogda Peak Nature Reserve Administration, Fukang 831500;6.University of Chinese Academy of Sciences, Beijing 100049, China

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    Abstract:

    [Objectives] A behavioral ethogram is a comprehensive catalog that encompasses the behaviors of a specific species or group of animals under investigation. Each species exhibits a unique behavioral ethogram, which aids in the systematic study of animal behaviors. The development of an animal behavior classification system within the realm of behavioral ecology facilitates researchers in conveniently examining relevant behaviors. By deconstructing the continuous variations in animal behavior into fundamental units, deeper insights into the complexities of these behaviors can be attained. The Tianshan Red Deer Cervus elaphus songaricus, recognized as a second-level national key protected wild animal and classified as endangered (EN) on the Red List of Chinese Vertebrates, has not been extensively studied in terms of its behavioral ethogram. [Methods] This study was conducted from July 2019 to September 2021 in Bogda Nature Reserve, Tianchi, Xinjiang, utilizing infrared camera monitoring technology to capture a total of 4 218 independently valid photographs and 881 videos of Tianshan Red Deer. Centering on ‘posture-movement-environment’, a behavioral classification coding system based on ecological functions was established to elucidate the behavioral ecology of the Tianshan Red Deer. In this system, the letters B, P, A, and E denote the behavioral set, gesture set, movement set, and environment set of the study species, respectively, while bi, pi, ai, and ei represent the elements or subsets of the sets B, P, A and E. The PAE coding classification is defined as follows: ; ; . This coding system is anchored in the ecological functions of the PAE framework. [Results] The research documented a total of 11 distinct postures (Table 1), 71 actions (Table 2), and 13 environment types (Table 3) observed in Tianshan Red Deer. By assigning PAE codes to the various environments, postures, and actions involved, a total of 75 behaviors were identified (Appendix 1), reflecting the species’ primary behavioral repertoire. [Conclusion] This study represents the first comprehensive construction of the behavioral spectrum and PAE coding system for Tianshan Red Deer. Notably, no image data was obtained for mating and parturition behaviors, likely due to the infrequency and brief duration of these events, as well as the deer’s preference for secluded locations, which minimises detection by infrared cameras. By establishing the behavioral ethogram and PAE coding system for Tianshan Red Deer, this research provides a scientific basis for their management and conservation efforts.

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MA Xue-Jun, GAO Feng, MU Yu-Qin, XU Feng. 2025. Behavioral Ethogram and PAE Coding System of Tianshan Red Deer Based on Infrared Camera Technology. Chinese Journal of Zoology, 60(1): 1-11.

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  • Received:May 20,2024
  • Revised:
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  • Online: March 04,2025
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