TL;DR
This paper presents a method to optimize the placement of acoustic receivers for tracking tagged marine animals, improving coverage area by 30% and aiding ecological studies.
Contribution
It introduces a novel non-convex optimization approach for receiver deployment that accounts for environmental factors and tag specifications, with a practical low-complexity solution.
Findings
Coverage area increased by 30% in simulations
Method performs well in real sea environment
Implementation provided for research use
Abstract
Underwater acoustic technologies are a key component for exploring the behavior of marine megafauna such as sea turtles, sharks, and seals. The animals are marked with acoustic devices (tags) that periodically emit signals encoding the device's ID along with sensor data such as depth, temperature, or the dominant acceleration axis - data that is collected by a network of deployed receivers. In this work, we aim to optimize the locations of receivers for best tracking of acoustically tagged marine megafauna. The outcomes of such tracking allows the evaluation of the animals' motion patterns, their hours of activity, and their social interactions. In particular, we focus on how to determine the receivers' deployment positions to maximize the coverage area in which the tagged animals can be tracked. For example, an overly-condensed deployment may not allow accurate tracking, whereas a…
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