AI Agents 相关度: 7/10

Controlling Fish Schools via Reinforcement Learning of Virtual Fish Movement

Yusuke Nishii, Hiroaki Kawashima
arXiv: 2603.16384v1 发布: 2026-03-17 更新: 2026-03-17

AI 摘要

利用强化学习训练虚拟鱼,成功引导真实鱼群的运动方向。

主要贡献

  • 提出利用强化学习控制鱼群运动的方法
  • 验证了虚拟鱼策略在真实鱼群上的有效性
  • 通过实验证明优于基线方法

方法论

采用无模型的强化学习方法,训练2D虚拟鱼,并在真实环境中进行实验验证。

原文摘要

This study investigates a method to guide and control fish schools using virtual fish trained with reinforcement learning. We utilize 2D virtual fish displayed on a screen to overcome technical challenges such as durability and movement constraints inherent in physical robotic agents. To address the lack of detailed behavioral models for real fish, we adopt a model-free reinforcement learning approach. First, simulation results show that reinforcement learning can acquire effective movement policies even when simulated real fish frequently ignore the virtual stimulus. Second, real-world experiments with live fish confirm that the learned policy successfully guides fish schools toward specified target directions. Statistical analysis reveals that the proposed method significantly outperforms baseline conditions, including the absence of stimulus and a heuristic "stay-at-edge" strategy. This study provides an early demonstration of how reinforcement learning can be used to influence collective animal behavior through artificial agents.

标签

强化学习 鱼群控制 虚拟代理 群体智能 机器人

arXiv 分类

cs.RO cs.LG q-bio.PE