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Estimating range expansion of wildlife in heterogeneous landscapes: A spatially explicit state‐space matrix model coupled with an improved numerical integration technique

机译:异构景观中野生动物的范围扩展:具有改进数值集成技术的空间显式状态空间矩阵模型

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Dispersal as well as population growth is a key demographic process that determines population dynamics. However, determining the effects of environmental covariates on dispersal from spatial‐temporal abundance proxy data is challenging owing to the complexity of model specification for directional dispersal permeability and the extremely high computational loads for numerical integration. In this paper, we present a case study estimating how environmental covariates affect the dispersal of Japanese sika deer by developing a spatially explicit state‐space matrix model coupled with an improved numerical integration technique (Markov chain Monte Carlo with particle filters). In particular, we explored the environmental drivers of inhomogeneous range expansion, characteristic of animals with short dispersal. Our model framework successfully reproduced the complex population dynamics of sika deer, including rapid changes in densely populated areas and distribution fronts within a decade. Furthermore, our results revealed that the inhomogeneous range expansion of sika deer seemed to be primarily caused by the dispersal process (i.e., movement barriers in fragmented forests) rather than population growth. Our state‐space matrix model enables the inference of population dynamics for a broad range of organisms, even those with low dispersal ability, in heterogeneous landscapes, and could address many pressing issues in conservation biology and ecosystem management.
机译:分散和人口增长是确定人口动态的关键人口过程。然而,由于定向分散渗透率的模型规范和用于数值集成的极高计算负荷的模型规范的复杂性,确定来自空间 - 时间丰富代理数据的环境协变量对分散的影响是挑战。在本文中,我们展示了一种案例研究,估计环境协变量如何通过开发与改进的数值积分技术(Markov Chain Monte Carlo与颗粒过滤器)耦合的空间显式的状态空间矩阵模型来影响日本Sika鹿的分散。特别是,我们探讨了不均匀范围扩张的环境驱动因素,具有短分散的动物的特征。我们的模型框架成功地复制了Sika鹿的复杂人口动态,包括十年内密集地区和分销前沿的快速变化。此外,我们的结果表明,西卡鹿的不均匀范围扩张似乎主要由分散过程(即碎片森林中的运动障碍)而不是人口增长。我们的状态空间矩阵模型使人口动态的推动能够为广泛的生物,即使是具有低分散能力的人,也可以解决保护生物学和生态系统管理中的许多压迫问题。

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