In this paper, the circle formation control problem is addressed for a group of cooperative underactuated fish-like robots involving unknown nonlinear dynamics and disturbances. Based on the reinforcement learning and cognitive consistency theory, we propose a decentralized controller without the knowledge of the dynamics of the fish-like robots. The proposed controller can be transferred from simulation to reality. It is only trained in our established simulation environment, and the trained controller can be deployed to real robots without any manual tuning. Simulation results confirm that the proposed model-free robust formation control method is scalable with respect to the group size of the robots and outperforms other representative RL algorithms. Several experiments in the real world verify the effectiveness of our RL-based approach for circle formation control.
翻译:在本文中,对于一组合作作用不足的鱼类机器人,涉及未知的非线性动态和扰动,处理圆形形成控制问题。根据强化学习和认知一致性理论,我们提议一个不了解鱼类机器人动态的分散控制器。拟议的控制器可以从模拟转移到现实。它只能接受我们已建立的模拟环境的培训,训练有素的控制器可以在不经过任何手动调整的情况下被部署到真正的机器人。模拟结果证实,拟议的无型稳健形成控制法对于机器人的群体大小是可以调整的,并且比其他具有代表性的RL算法要强。现实世界中的一些实验可以验证我们基于RL的圆形形成控制方法的有效性。