Distributed Adaptive Formation Control for Nonholonomic Mobile Robots over Noisy Communication Networks

Weiwei Zhan, Zhiqiang Miao, Yanjie Chen, Yaonan Wang
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Abstract

In this paper, we solve the formation problem of nonholonomic mobile robots (NMRs) over noisy communication networks. The communication signals with noisy information are exchanged among different NMRs by a directed graph. Only the individual mobile robot directly receives the actual and feasible signals itself without communication. Besides, the sensor-to-control signals suffering from the noise are modeled by a nonlinear function including unknown parameters and uncertainties. Combined with the adaptive control technique and robust control technique, the unknown parameters and uncertainties of noisy signal models are respectively estimated and compensated, respectively. Then, a novel distributed adaptive formation controller is proposed to guarantee convergence to the optimal positions over noisy communication networks. It is proved that the formation errors are convergent to a small neighbourhood of origin and closed-loop signals of each NMRs are bounded. A simulation example is given to demonstrate the theoretical studies.
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噪声通信网络下非完整移动机器人的分布式自适应编队控制
本文研究了非完整移动机器人(NMRs)在噪声通信网络中的形成问题。带有噪声信息的通信信号通过有向图在不同核磁共振之间进行交换。只有单独的移动机器人自己直接接收实际可行的信号,无需通信。此外,对受噪声影响的传感器到控制信号采用包含未知参数和不确定性的非线性函数建模。结合自适应控制技术和鲁棒控制技术,分别对噪声信号模型的未知参数和不确定性进行估计和补偿。在此基础上,提出了一种新的分布式自适应编队控制器,以保证在噪声通信网络中收敛到最优位置。证明了形成误差收敛于一个小的原点邻域,并且每个核磁共振的闭环信号是有界的。最后通过仿真实例对理论研究进行了验证。
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