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Algorithm research and real-time simulation of neural network sliding mode position control

机译:神经网络滑模位置控制算法研究与实时仿真

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This paper presents a neural network sliding mode control algorithm for position control of modular robot. This method adopts BP neural network to approximate the functional relation between the sliding hyperplane and the exponential approximation rate. At the same time, the saturation function of sliding mode control algorithm is replaced by a hyperbolic tangent function to realize the boundary design method of the sliding mode control. The results of real-time simulation show that the algorithm proposed in this paper has the merits of fast response, strong robustness, and reducing the chattering of sliding mode control. This method solves the problems that conventional PID algorithm can't solve under some circumstances, such as complicated environment, great load change, etc.
机译:本文提出了一种用于模块化机器人位置控制的神经网络滑模控制算法。该方法采用BP神经网络来逼近滑动超平面与指数逼近率之间的函数关系。同时,用双曲正切函数代替滑模控制算法的饱和度函数,以实现滑模控制的边界设计方法。实时仿真结果表明,本文提出的算法具有响应速度快,鲁棒性强,减少滑模控制颤振的优点。该方法解决了传统PID算法在环境复杂,负荷变化大等情况下无法解决的问题。

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