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Position tracking performance enhancement of linear ultrasonic motor using learning control techniques

机译:使用学习控制技术定位跟踪线性超声波电机的性能增强

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Iterative learning control (ILC) is known to be effective in improving the performance of tracking periodic trajectories. This control technique gives satisfactory tracking performance provided the task is strictly repeatable. Many a times, it is required to track periodic trajectories of different frequencies that are identical in spatial patterns. In such applications, any change in the reference trajectory requires initiating a fresh learning process for the conventional ILC, which results in larger error during learning phase and longer error convergence time. An improvement in tracking performance in such cases can be realized using the previously stored history of control efforts that gives optimum tracking performance. This knowledge helps in predicting the control effort for a different frequency but identical spatial pattern reference trajectory. In this paper, such a direct learning control (DLC) technique that uses the knowledge of the control history is proposed and subsequently used in co-ordination with the ILC for achieving excellent tracking performance and fast error convergence. Experimental results for position tracking of linear ultrasonic motor (LUSM) demonstrate that this hybrid scheme limits the tracking error and error convergence time to about one third as compared to that without using DLC.
机译:已知迭代学习控制(ILC)有效地提高跟踪周期轨迹的性能。此控制技术提供了令人满意的跟踪性能,提供了任务是严格的可重复性的。许多时候,需要跟踪空间模式中相同的不同频率的周期性轨迹。在这种应用中,参考轨迹中的任何变化都需要发起传统ILC的新学习过程,这导致学习阶段和更长的误差收敛时间较大的误差。可以使用先前存储的控制工作历史来实现在这种情况下的跟踪性能的提高,这是提供最佳的跟踪性能。该知识有助于预测不同频率但相同的空间模式参考轨迹的控制力。在本文中,提出了使用控制历史知识的这种直接学习控制(DLC)技术,并随后与ILC配合使用,以实现出色的跟踪性能和快速误差会聚。线性超声波电机(LUSM)位置跟踪的实验结果表明,与不使用DLC的情况相比,该混合方案将跟踪误差和误差收敛时间限制为大约三分之一。

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