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On-line genetic algorithm-based fuzzy-neural sliding mode controller using improved adaptive bound reduced-form genetic algorithm

机译:改进的自适应有界约束形式遗传算法的基于在线遗传算法的模糊神经滑模控制器

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摘要

In this article, a novel on-line genetic algorithm-based fuzzy-neural sliding mode controller trained by an improved adaptive bound reduced-form genetic algorithm is developed to guarantee robust stability and good tracking performance for a robot manipulator with uncertainties and external disturbances. A general sliding manifold, which can be non-linear or time varying, is used to construct a sliding surface and reduce control law chattering. In this article, the sliding surface is used to derive a genetic algorithm-based fuzzy-neural sliding mode controller. To identify structured system dynamics, a B-spline membership function fuzzy-neural network, which is trained by the improved genetic algorithm, is used to approximate the regressor of the robot manipulator. The sliding mode control with a general sliding surface plays the role of a compensator when the fuzzy-neural network does not approximate the dynamics regressor of the robot manipulator well in the transient period. The adjustable parameters of the fuzzy-neural network are tuned by the improved genetic algorithm, which, with the use of the sequential-search-based crossover point method and the single gene crossover, converges quickly to near-optimal parameter values. Simulation results show that the proposed genetic algorithm-based fuzzy-neural sliding mode controller is effective and yields superior tracking performance for robot manipulators.
机译:在本文中,开发了一种新型的基于在线遗传算法的模糊神经滑模控制器,该控制器由改进的自适应有界约束形式遗传算法训练而成,以确保具有不确定性和外部干扰的机器人操纵器具有鲁棒的稳定性和良好的跟踪性能。可以是非线性的或随时间变化的通用滑动歧管用于构造滑动表面并减少控制律的抖动。在本文中,滑动面用于导出基于遗传算法的模糊神经滑模控制器。为了识别结构化的系统动力学,通过改进的遗传算法训练的B样条隶属函数模糊神经网络用于近似机器人操纵器的回归器。当模糊神经网络不能很好地逼近瞬态周期内的机械手的动力学回归器时,具有一般滑动面的滑模控制将起到补偿器的作用。模糊神经网络的可调参数通过改进的遗传算法进行调整,该遗传算法借助基于顺序搜索的交叉点方法和单基因交叉功能,迅速收敛到接近最佳的参数值。仿真结果表明,所提出的基于遗传算法的模糊神经滑模控制器是有效的,并能为机器人提供更好的跟踪性能。

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