Intelligent Collision-Free Formation Control of Ball-Riding Robots Using Output Recurrent Broad Learning in Industrial Cyber-Physical Systems

Ching-Chih Tsai;Hsu-Chih Huang;Hsing-Yi Chen;Chi-Chih Hung;Shih-Ting Chen
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Abstract

This article presents an intelligent collision-free formation control method of ball-riding robots using an output recurrent broad learning strategy (ORBLS) in industrial cyber-physical systems (ICPS). A cyber ORBLS is incorporated with the backstepping sliding mode formation control (BSMFC) and potential field theory, called ICPS ORBLS-BSMFC, in order to attain collision-free formation control for the multiple ball-riding robots with uncertainties for ICPS, the proposed cyber ORBLS-BSMFC computing method is employed to address the robust self-balancing formation control problem of ICPS gyro-stabilized robots. A bi-directed and connected graph is used to mathematically model the inverse-atlas self-balancing robots with uncertainties in formation encountering unknown frictions, mass variations. Taking the feedback signals from the physical world, Lyapunov stability theory is utilized to prove that the cyber ORBLS-BSMFC control law makes the system asymptotically stable. Three simulations and two experimental results will manifest the effectiveness, superiority and merits of the proposed ICPS ORBLS-BSMFC with obstacle avoidance. Through comparative studies, the advantages of the proposed ICPS ORBLS-BSMFC computing are validated to accomplish collision-free formation control for ball-riding robots.
在工业网络-物理系统中使用输出递归广义学习实现滑球机器人的智能无碰撞编队控制
本文介绍了一种在工业网络物理系统(ICPS)中使用输出循环广义学习策略(ORBLS)的智能骑球机器人无碰撞编队控制方法。将网络 ORBLS 与后退滑模编队控制(BSMFC)和势场理论相结合,称为 ICPS ORBLS-BSMFC,以实现对 ICPS 中具有不确定性的多个骑球机器人的无碰撞编队控制,所提出的网络 ORBLS-BSMFC 计算方法用于解决 ICPS 陀螺稳定机器人的鲁棒自平衡编队控制问题。利用双向连通图为反阿特拉斯自平衡机器人建立数学模型,该机器人在编队过程中会遇到未知的摩擦、质量变化等不确定因素。利用物理世界的反馈信号,利用李亚普诺夫稳定性理论证明网络 ORBLS-BSMFC 控制法使系统渐近稳定。三个仿真和两个实验结果将证明所提出的具有避障功能的 ICPS ORBLS-BSMFC 的有效性、优越性和优点。通过比较研究,验证了所提出的 ICPS ORBLS-BSMFC 计算的优势,从而实现了骑球机器人的无碰撞编队控制。
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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