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首页> 外文期刊>Journal of Mechanical Science and Technology >Precision position control of servo systems using adaptive back-stepping and recurrent fuzzy neural networks
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Precision position control of servo systems using adaptive back-stepping and recurrent fuzzy neural networks

机译:基于自适应反步和递归模糊神经网络的伺服系统精确位置控制

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摘要

To improve position tracking performance of servo systems, a position tracking control using adaptive back-stepping control(ABSC) scheme and recurrent fuzzy neural networks(RFNN) is proposed. An adaptive rule of the ABSC based on system dynamics and dynamic friction model is also suggested to compensate nonlinear dynamic friction characteristics. However, it is difficult to reduce the position tracking error of servo systems by using only the ABSC scheme because of the system uncertainties which cannot be exactly identified during the modeling of servo systems. Therefore, in order to overcome system uncertainties and then to improve position tracking performance of servo systems, the RFNN technique is additionally applied to the servo system. The feasibility of the proposed control scheme for a servo system is validated through experiments. Experimental results show that the servo system with ABS controller based on the dual friction observer and RFNN including the reconstruction error estimator can achieve desired tracking performance and robustness.
机译:为了提高伺服系统的位置跟踪性能,提出了一种采用自适应反步控制(ABSC)方案和递归模糊神经网络(RFNN)的位置跟踪控制方法。还提出了基于系统动力学和动摩擦模型的ABSC自适应规则,以补偿非线性动摩擦特性。然而,由于系统不确定性在伺服系统的建模过程中无法准确识别,因此仅通过使用ABSC方案很难降低伺服系统的位置跟踪误差。因此,为了克服系统的不确定性,进而提高伺服系统的位置跟踪性能,将RFNN技术附加应用于伺服系统。通过实验验证了所提出的伺服系统控制方案的可行性。实验结果表明,基于ABS控制器的双摩擦观测器和RFNN的伺服系统包括重构误差估计器,可以达到理想的跟踪性能和鲁棒性。

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