神经网络自适应滑模控制及其在SCARA型机械臂中的应用

M. Ertugrul, O. Kaynak
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引用次数: 26

摘要

提出了一种神经网络与滑模控制的协同组合方法。消除了抖振,提高了SMC的误差性能。在这种方法中,确定神经网络的结构,即层数,每层神经元的数量等不会成为一个问题,因为这些与SMC直接相关。采用Lyapunov函数设计神经网络,采用梯度下降法对神经网络进行权值自适应。选择增益自适应的最小准则为控制信号与滑动函数的平方和。将该方法应用于SCARA型机械臂的控制,并给出了仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network adaptive sliding mode control and its application to SCARA type robot manipulator
A synergistic combination of neural networks with sliding mode control is proposed. As a result, the chattering is eliminated and error performance of SMC is improved. In such an approach, the determination of the structure of NN, i.e. number of layers, number of neurons at each layer, etc. does not come up as a problem because these are directly related to the SMC. A Lyapunov function is selected for the design of the SMC and gradient descent is used for weight adaptation of the neural network. The criterion that is minimized for gain adaptation is selected as the sum of the squares of the control signal and the sliding function. This novel approach is applied to control of a SCARA type robot manipulator and simulation results are given.
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