Wheeled mobile robots(WMRs) encounter unavoidable slippage especially on the low adhesion terrain such that the robots stability and accuracy are reduced greatly.To overcome this drawback,this article presents a neura...Wheeled mobile robots(WMRs) encounter unavoidable slippage especially on the low adhesion terrain such that the robots stability and accuracy are reduced greatly.To overcome this drawback,this article presents a neural network(NN) based terminal sliding mode control(TSMC) for WMRs where an augmented ground friction model is reported by which the uncertain friction can be estimated and compensated according to the required performance.In contrast to the existing friction models,the developed augmented ground friction model corresponds to actual fact because not only the effects associated with the mobile platform velocity but also the slippage related to the wheel slip rate are concerned simultaneously.Besides,the presented control approach can combine the merits of both TSMC and radial basis function(RBF) neural networks techniques,thereby providing numerous excellent performances for the closed-loop system,such as finite time convergence and faster friction estimation property.Simulation results validate the proposed friction model and robustness of controller;these research results will improve the autonomy and intelligence of WMRs,particularly when the mobile platform suffers from the sophisticated unstructured environment.展开更多
针对轮式移动机器人(wheeled mobile robot,WMR)轨迹跟踪中存在的速度跳变和未知系统扰动,提出一种新型轨迹跟踪控制策略。该策略基于反演技术,分别设计WMR系统的运动学控制器和动力学控制器。在运动学控制器中,采用分流技术克服了轨迹...针对轮式移动机器人(wheeled mobile robot,WMR)轨迹跟踪中存在的速度跳变和未知系统扰动,提出一种新型轨迹跟踪控制策略。该策略基于反演技术,分别设计WMR系统的运动学控制器和动力学控制器。在运动学控制器中,采用分流技术克服了轨迹跟踪初期的速度跳变问题;在动力学控制器中,将模糊干扰观测器与自适应滑模控制结合,有效解决了未知系统扰动对控制性能的影响,并且消除了传统滑模控制的抖振现象。通过Lyapunov稳定性理论,证明了该控制策略的稳定性。仿真研究表明:该控制策略具有较小的速度跳变,控制信号抖振较小,并对系统扰动具有强鲁棒性。展开更多
基金supported by the National Natural Science Foundation of China(61573078,61573147)the International S&T Cooperation Program of China(2014DFB70120)the State Key Laboratory of Robotics and System(SKLRS2015ZD06)
文摘Wheeled mobile robots(WMRs) encounter unavoidable slippage especially on the low adhesion terrain such that the robots stability and accuracy are reduced greatly.To overcome this drawback,this article presents a neural network(NN) based terminal sliding mode control(TSMC) for WMRs where an augmented ground friction model is reported by which the uncertain friction can be estimated and compensated according to the required performance.In contrast to the existing friction models,the developed augmented ground friction model corresponds to actual fact because not only the effects associated with the mobile platform velocity but also the slippage related to the wheel slip rate are concerned simultaneously.Besides,the presented control approach can combine the merits of both TSMC and radial basis function(RBF) neural networks techniques,thereby providing numerous excellent performances for the closed-loop system,such as finite time convergence and faster friction estimation property.Simulation results validate the proposed friction model and robustness of controller;these research results will improve the autonomy and intelligence of WMRs,particularly when the mobile platform suffers from the sophisticated unstructured environment.
文摘针对轮式移动机器人(wheeled mobile robot,WMR)轨迹跟踪中存在的速度跳变和未知系统扰动,提出一种新型轨迹跟踪控制策略。该策略基于反演技术,分别设计WMR系统的运动学控制器和动力学控制器。在运动学控制器中,采用分流技术克服了轨迹跟踪初期的速度跳变问题;在动力学控制器中,将模糊干扰观测器与自适应滑模控制结合,有效解决了未知系统扰动对控制性能的影响,并且消除了传统滑模控制的抖振现象。通过Lyapunov稳定性理论,证明了该控制策略的稳定性。仿真研究表明:该控制策略具有较小的速度跳变,控制信号抖振较小,并对系统扰动具有强鲁棒性。