Adaptive fuzzy nonlinear sliding-mode controller for a car-like robot

Masoud Shirzadeh, M. Shojaeefard, A. Amirkhani, H. Behroozi
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引用次数: 10

Abstract

In this paper, a nonlinear controller, which can be updated online by means of fuzzy logic, has been proposed for tracking the trajectory of a car-like robot. The advantage of this control scheme is that it eliminates the effects of model disturbances and uncertainties, which cannot be avoided; and especially when we consider the difficult task of determining the exact kinematic and dynamic models of car-like robots. The proposed approach comprises a robust nonlinear section that uses the sliding mode control and a fuzzy section that can update, online, parameters of the nonlinear controller. The stability and the error convergence of the closed-loop system are verified through the Lyapunov criterion. A fuzzy system is designed to deal with the chattering of the car-like robot. In addition to the gains of the sign function, there are also constant parameters in our controller, which are determined by using a genetic algorithm. To show the effectiveness of the proposed design, simulations are performed by considering un-ideal effects such as uncertainties and external disturbances.
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类车机器人的自适应模糊非线性滑模控制器
针对类车机器人的运动轨迹跟踪问题,提出了一种基于模糊逻辑的在线更新非线性控制器。该控制方案的优点是消除了不可避免的模型扰动和不确定性的影响;尤其是当我们考虑到确定类车机器人的精确运动学和动力学模型的困难任务时。该方法包括一个使用滑模控制的鲁棒非线性部分和一个可以在线更新非线性控制器参数的模糊部分。通过李亚普诺夫准则验证了闭环系统的稳定性和误差收敛性。设计了一个模糊系统来处理汽车机器人的抖振。除了符号函数的增益外,我们的控制器中还有常数参数,这些参数是通过遗传算法确定的。为了证明所提设计的有效性,在考虑不确定性和外部干扰等非理想效应的情况下进行了仿真。
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