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State-space models of individual animal movement

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journal contribution
posted on 2025-01-15, 00:57 authored by TA Patterson, L Thomas, Chris WilcoxChris Wilcox, O Ovaskainen, J Matthiopoulos
Detailed observation of the movement of individual animals offers the potential to understand spatial population processes as the ultimate consequence of individual behaviour, physiological constraints and fine-scale environmental influences. However, movement data from individuals are intrinsically stochastic and often subject to severe observation error. Linking such complex data to dynamical models of movement is a major challenge for animal ecology. Here, we review a statistical approach, state-space modelling, which involves changing how we analyse movement data and draw inferences about the behaviours that shape it. The statistical robustness and predictive ability of state-space models make them the most promising avenue towards a new type of movement ecology that fuses insights from the study of animal behaviour, biogeography and spatial population dynamics. © 2007 Elsevier Ltd. All rights reserved.

History

Publication title

Trends in Ecology & Evolution

Volume

23

Issue

2

Pagination

87-94

ISSN

0169-5347

Department/School

Biological Sciences, Fisheries and Aquaculture

Publisher

Elsevier Ltd., Trends Journal

Publication status

  • Published

Place of publication

United Kingdom

Socio-economic Objectives

189999 Other environmental management not elsewhere classified

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