Particle algorithms for animal movement modelling in autonomous receiver networks

Edward Lavender, Andreas Scheidegger, Carlo Albert, Stanisław Biber, Janine Illian, James Thorburn, Sophie Smout, Helen Moor
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Abstract

1. Particle filters and smoothers are powerful sequential Monte Carlo algorithms used to fit non-linear, non-Gaussian state-space models. These algorithms are well placed to fit process-orientated models to animal-tracking data, especially in autonomous receiver networks, but to date they have received limited attention in the ecological literature. 2. Here, we introduce a Bayesian filtering–smoothing algorithm that reconstructs individual movements and patterns of space use from animal-tracking data, with a focus on passive acoustic telemetry systems. Within a sound probabilistic framework, the methodology uniquely integrates the movement process and the observation processes of disparate datasets, while correctly representing uncertainty. In a comprehensive simulation-based analysis, we compare the performance of our algorithm to the prevailing, heuristic methods used in passive acoustic telemetry systems and analyse algorithm sensitivity. 3. We find the particle smoothing methodology outperforms heuristic methods across the board. Particle-based maps consistently represent simulated movements more accurately, even in dense receiver networks, and are better suited to analyses of home ranges, residency and habitat preferences. 4. This study sets a new state-of-the-art for movement modelling in autonomous receiver networks. Particle algorithms provide a flexible and intuitive modelling framework with potential applications in many ecological settings.
自主接收器网络中动物运动建模的粒子算法
粒子滤波器和平滑器是强大的连续蒙特卡洛算法,用于拟合非线性、非高斯状态空间模型。这些算法可以很好地将过程导向模型拟合到动物追踪数据中,特别是在自主接收器网络中,但迄今为止,它们在生态学文献中受到的关注有限。2.在此,我们介绍一种贝叶斯滤波平滑算法,该算法可从动物追踪数据中重建个体运动和空间使用模式,重点是被动声学遥测系统。在合理的概率框架内,该方法独特地整合了不同数据集的运动过程和观测过程,同时正确地表达了不确定性。在基于模拟的综合分析中,我们比较了我们的算法与被动声学遥测系统中常用的启发式方法的性能,并分析了算法的敏感性。3.我们发现粒子平滑方法全面优于启发式方法。即使是在密集的接收器网络中,基于粒子的地图也能更准确地表示模拟运动,更适合分析家域、居住地和栖息地偏好。4.这项研究为自主接收器网络中的运动建模树立了新的标杆。粒子算法提供了一个灵活、直观的建模框架,有望应用于多种生态环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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