A Deep Reinforcement Learning Framework for Closed-loop Guidance of Fish Schools via Virtual Agents
AI 摘要
使用深度强化学习和虚拟智能体引导鱼群运动。
主要贡献
- 提出使用深度强化学习引导鱼群的框架
- 评估了视觉参数对引导效果的影响
- 研究了群体规模对引导能力的影响
方法论
使用近端策略优化(PPO)训练虚拟智能体的策略,并在物理实验中进行部署,实现实时交互。
原文摘要
Guiding collective motion in biological groups is a fundamental challenge in understanding social interaction rules and developing automated systems for animal management. In this study, we propose a deep reinforcement learning (RL) framework for the closed-loop guidance of fish schools using virtual agents. These agents are controlled by policies trained via Proximal Policy Optimization (PPO) in simulation and deployed in physical experiments with rummy-nose tetras (Petitella bleheri), enabling real-time interaction between artificial agents and live individuals. To cope with the stochastic behavior of live individuals, we design a composite reward function to balance directional guidance with social cohesion. Our systematic evaluation of visual parameters shows that a white background and larger stimulus sizes maximize guidance efficacy in physical trials. Furthermore, evaluation across group sizes revealed that while the system demonstrates effective guidance for groups of five individuals, this capability markedly degrades as group size increases to eight. This study highlights the potential of deep RL for automated guidance of biological collectives and identifies challenges in maintaining artificial influence in larger groups.