Adaptive Coordinated Motion Control for Swarm Robotics Based on Brain Storm Optimization

Jian Yang, Yuhui Shi
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引用次数: 2

Abstract

Coordinated motion control in swarm robotics aims to ensure the coherence of members in space, i.e., the robots in a swarm perform coordinated movements to maintain spatial structures. This problem can be modeled as a tracking control problem, in which individuals in the swarm follow a target position with the consideration of specific relative distance or orientations. To keep the communication cost low, the PID controller can be utilized to achieve the leader-follower tracking control task without the information of leader velocities. However, the controller’s parameters need to be optimized to adapt to situations changing, such as the different swarm population, the changing of the target to be followed, and the anti-collision demands, etc. In this letter, we apply a modified Brain Storm Optimization (BSO) algorithm to an incremental PID tracking controller to get the relatively optimal parameters adaptively for leader-follower formation control for swarm robotics. Simulation results show that the proposed method could reach the optimal parameters during robot movements. The flexibility and scalability are also validated, which ensures that the proposed method can adapt to different situations and be a good candidate for coordinated motion control for swarm robotics in more realistic scenarios.
基于头脑风暴优化的群体机器人自适应协调运动控制
群体机器人中的协调运动控制旨在保证成员在空间中的一致性,即群体中的机器人进行协调运动以保持空间结构。该问题可以建模为跟踪控制问题,即群体中的个体在考虑特定的相对距离或方向的情况下跟随目标位置。为了保持较低的通信成本,可以利用PID控制器来实现不需要leader速度信息的leader-follower跟踪控制任务。但是,需要对控制器的参数进行优化,以适应不断变化的情况,如群体数量的不同、待跟踪目标的变化、抗碰撞需求等。在这篇文章中,我们将改进的头脑风暴优化算法(BSO)应用于增量PID跟踪控制器,以自适应获得群体机器人leader-follower群体控制的相对最优参数。仿真结果表明,该方法能够在机器人运动过程中达到最优参数。验证了该方法的灵活性和可扩展性,确保了该方法能够适应不同的情况,成为更现实场景下群体机器人协调运动控制的良好选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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