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Neural networks-based friction compensation with application in servo motor systems

机译:基于神经网络的摩擦补偿与伺服电机系统的应用

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Compensation of negative effects caused by friction in high precision servo control systems is an important and challenging problem. Conventional compensation methods often rely on an explicit frictiion model, which is difficult to acquire accurately in practice. In this paper, we propose a neural network-based compensation scheme to cope with this problem. The visible disturbance resulting from friction s first identified by a BP (Back-Propagation) neural network. The friction compensator is constructured by cascading this neural identifier with the inverse model of the motor system. It is shown that our approach has the advantages of simplicity and generality. Moreover, no prior information concerning the friction is needed. Simulations are carried out to demonstrate the efficiency of the proposed method in compensating for deterministic as well as non-linear friction.
机译:高精度伺服控制系统中摩擦造成的负面影响的补偿是一个重要且挑战性的问题。常规补偿方法通常依赖于明确的弗雷奇模型,这难以在实践中准确获得。在本文中,我们提出了一种基于神经网络的补偿方案来应对这个问题。由BP(后传播)神经网络首先识别的摩擦S产生的可见干扰。通过通过电动机系统的逆模型级联这种神经标识符来构造摩擦补偿器。结果表明,我们的方法具有简单性和一般性的优点。此外,不需要关于摩擦的先前信息。进行仿真以证明提出的方法补偿确定性和非线性摩擦的效率。

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