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Nonlinear Backstepping Control of SynRM Drive Systems Using Reformed Recurrent Hermite Polynomial Neural Networks with Adaptive Law and Error Estimated Law

机译:带有自适应律和误差估计律的重构Hermite多项式神经网络的SynRM驱动系统的非线性Backstepping控制

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摘要

The synchronous reluctance motor (SynRM) servo-drive system has highly nonlinear uncertainties owing to a convex construction effect. It is difficult for the linear control method to achieve good performance for the SynRM drive system. The nonlinear backstepping control system using upper bound with switching function is proposed to inhibit uncertainty action for controlling the SynRM drive system. However, this method uses a large upper bound with a switching function, which results in a large chattering. In order to reduce this chattering, a nonlinear backstepping control system using an adaptive law is proposed to estimate the lumped uncertainty. Since this method uses an adaptive law, it cannot achiever satisfactory performance. Therefore, a nonlinear backstepping control system using a reformed recurrent Hermite polynomial neural network with an adaptive law and an error estimated law is proposed to estimate the lumped uncertainty and to compensate the estimated error in order to enhance the robustness of the SynRM drive system. Further, the reformed recurrent Hermite polynomial neural network with two learning rates is derived according to an increment type Lyapunov function to speed-up the parameter convergence. Finally, some experimental results and a comparative analysis are presented to verify that the proposed control system has better control performance for controlling SynRM drive systems.
机译:同步磁阻电动机(SynRM)伺服驱动系统由于凸出的构造效应而具有高度的非线性不确定性。线性控制方法很难使SynRM驱动系统获得良好的性能。为了抑制SynRM驱动系统的不确定性,提出了一种具有切换功能上限的非线性反推控制系统。但是,该方法使用具有切换功能的较大上限,这导致较大的抖动。为了减少这种颤动,提出了使用自适应律的非线性反推控制系统来估计总不确定度。由于此方法使用自适应定律,因此无法获得令人满意的性能。因此,提出了一种使用经过改造的递归Hermite多项式神经网络,具有自适应律和误差估计律的非线性反推控制系统,以估计集总不确定性并补偿估计误差,以增强SynRM驱动系统的鲁棒性。此外,根据增量类型的Lyapunov函数,推导了具有两种学习率的经过改造的递归Hermite多项式神经网络,以加速参数收敛。最后,通过一些实验结果和比较分析,验证了所提出的控制系统具有更好的控制性能,可用于控制SynRM驱动系统。

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