Continuous-time modelling of behavioural responses in animal movement
Th\'eo Michelot, Richard Glennie, Len Thomas, Nicola Quick, Catriona, M. Harris

TL;DR
This paper introduces a continuous-time stochastic differential equation framework to model and analyze behavioral responses of marine mammals to anthropogenic sounds, accommodating irregular data collection and measurement errors.
Contribution
The paper develops a flexible, continuous-time SDE-based model for animal behavior that captures baseline dynamics and deviations, suitable for irregular and noisy tracking data.
Findings
Whales' movement and diving behavior changed after sound exposure.
The model effectively captures behavioral deviations in irregularly sampled data.
Results highlight potential impacts of noise on whale energetics.
Abstract
There is great interest in ecology to understand how wild animals are affected by anthropogenic disturbances, such as sounds. Behavioural response studies are an important approach to quantify the impact of naval activity on marine mammals. Controlled exposure experiments are undertaken where the behaviour of animals is quantified before, during, and after exposure to a controlled sound source, often using telemetry tags (e.g., accelerometers, or satellite trackers). Statistical modelling is required to formally compare patterns before and after exposure, to quantify deviations from baseline behaviour. We propose varying-coefficient stochastic differential equations (SDEs) as a flexible framework to model such data, with two components: (1) time-varying baseline dynamics, modelled with non-parametric or random effects of time-varying covariates, and (2) a non-parametric response model,…
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Taxonomy
TopicsMarine animal studies overview · Target Tracking and Data Fusion in Sensor Networks
