Identifying signals of memory from observations of animal movements.

IF 3.4 1区 生物学 Q2 ECOLOGY
Dongmin Kim, Peter R Thompson, David W Wolfson, Jerod A Merkle, L G R Oliveira-Santos, James D Forester, Tal Avgar, Mark A Lewis, John Fieberg
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引用次数: 0

Abstract

Incorporating memory (i.e., some notion of familiarity or experience with the landscape) into models of animal movement is a rising challenge in the field of movement ecology. The recent proliferation of new methods offers new opportunities to understand how memory influences movement. However, there are no clear guidelines for practitioners wishing to parameterize the effects of memory on moving animals. We review approaches for incorporating memory into step-selection analyses (SSAs), a frequently used movement modeling framework. Memory-informed SSAs can be constructed by including spatial-temporal covariates (or maps) that define some aspect of familiarity (e.g., whether, how often, or how long ago the animal visited different spatial locations) derived from long-term telemetry data. We demonstrate how various familiarity covariates can be included in SSAs using a series of coded examples in which we fit models to wildlife tracking data from a wide range of taxa. We discuss how these different approaches can be used to address questions related to whether and how animals use information from past experiences to inform their future movements. We also highlight challenges and decisions that the user must make when applying these methods to their tracking data. By reviewing different approaches and providing code templates for their implementation, we hope to inspire practitioners to investigate further the importance of memory in animal movements using wildlife tracking data.

从观察动物动作中识别记忆信号。
将记忆(即对景观的熟悉程度或经验)纳入动物运动模型是运动生态学领域面临的一项新挑战。最近新方法的大量涌现为了解记忆如何影响运动提供了新的机会。然而,对于希望将记忆对运动动物的影响参数化的实践者来说,还没有明确的指导原则。我们回顾了将记忆纳入阶跃选择分析(SSA)的方法,阶跃选择分析是一种常用的运动建模框架。将空间-时间协变量(或地图)纳入步选分析中,可以构建以记忆为基础的步选分析,这些协变量定义了从长期遥测数据中获得的熟悉程度的某些方面(例如,动物是否、多久或多久之前访问过不同的空间位置)。我们通过一系列编码示例,展示了如何将各种熟悉程度协变量纳入 SSA,在这些示例中,我们对来自各种类群的野生动物追踪数据进行了模型拟合。我们讨论了如何利用这些不同的方法来解决与动物是否以及如何利用过去的经验信息来指导其未来行动相关的问题。我们还强调了用户在将这些方法应用于追踪数据时所面临的挑战和必须做出的决定。通过回顾不同的方法并提供实现这些方法的代码模板,我们希望能够启发从业人员利用野生动物追踪数据进一步研究记忆在动物运动中的重要性。
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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来源期刊
Movement Ecology
Movement Ecology Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
6.60
自引率
4.90%
发文量
47
审稿时长
23 weeks
期刊介绍: Movement Ecology is an open-access interdisciplinary journal publishing novel insights from empirical and theoretical approaches into the ecology of movement of the whole organism - either animals, plants or microorganisms - as the central theme. We welcome manuscripts on any taxa and any movement phenomena (e.g. foraging, dispersal and seasonal migration) addressing important research questions on the patterns, mechanisms, causes and consequences of organismal movement. Manuscripts will be rigorously peer-reviewed to ensure novelty and high quality.
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