Evolutionary optimisation of neural network models for fish collective behaviours in mixed groups of robots and zebrafish
Leo Cazenille, Nicolas Bredeche, Jos\'e Halloy

TL;DR
This paper presents an evolutionary optimization approach for neural network models to accurately simulate fish collective behaviors, aiming to develop robot controllers for mixed groups of fish and robots.
Contribution
It introduces a methodology using neural networks optimized by evolutionary algorithms to model fish behaviors with minimal prior knowledge, facilitating bio-inspired robot controller design.
Findings
Optimized neural networks accurately model fish collective behaviors.
Models are suitable for implementation in robot controllers.
Comparison shows models closely replicate experimental fish behaviors.
Abstract
Animal and robot social interactions are interesting both for ethological studies and robotics. On the one hand, the robots can be tools and models to analyse animal collective behaviours, on the other hand, the robots and their artificial intelligence are directly confronted and compared to the natural animal collective intelligence. The first step is to design robots and their behavioural controllers that are capable of socially interact with animals. Designing such behavioural bio-mimetic controllers remains an important challenge as they have to reproduce the animal behaviours and have to be calibrated on experimental data. Most animal collective behavioural models are designed by modellers based on experimental data. This process is long and costly because it is difficult to identify the relevant behavioural features that are then used as a priori knowledge in model building. Here,…
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