Characterising menotactic behaviours in movement data using hidden Markov models
Ron R. Togunov, Andrew E. Derocher, Nicholas J. Lunn, Marie, Auger-M\'eth\'e

TL;DR
This paper introduces a new hidden Markov model-based method for classifying animal movement behaviors with directional bias, such as menotaxis, improving understanding of how animals interact with environmental stimuli.
Contribution
The paper develops a biased correlated random walk model integrated into an HMM framework to identify and characterize menotactic behaviors without prior assumptions on bias angles.
Findings
More accurate classification of behavioral states than traditional models.
Effective identification of wind-influenced behaviors in polar bears.
Method applicable to various directional biases in animal movement data.
Abstract
1. Movement is the primary means by which animals obtain resources and avoid hazards. Most movement exhibits directional bias that is related to environmental features (taxis), such as the location of food patches, predators, ocean currents, or wind. Numerous behaviours with directional bias can be characterized by maintaining orientation at an angle relative to the environmental stimuli (menotaxis), including navigation relative to sunlight or magnetic fields and energy-conserving flight across wind. However, no statistical methods exist to flexibly classify and characterise such directional bias. 2. We propose a biased correlated random walk model that can identify menotactic behaviours by predicting turning angle as a trade-off between directional persistence and directional bias relative to environmental stimuli without making a priori assumptions about the angle of bias. We apply…
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