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Development of a novel iterative learning control algorithm using empirical mode decomposition technique

机译:基于经验模式分解技术的新型迭代学习控制算法的开发

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In this paper, a novel algorithm (ILC-EMD) which integrates iterative learning control (ILC) with empirical mode decomposition (EMD) is proposed to improve learning process. To explain the divergence behavior under the conventional ILC, the EMD is utilized to decompose the tracking error signal into 11 intrinsic mode model (IMFs). By observing the root means square (RMS) of the IMFs during iterations, the first IMF is determined to be the undesired signal which could not be reduced by learning process. By using ILC-EMD, it can filter out the undesired signal and prevent the amplification effect. Experimental results on tracking the butterfly NURBS curve validate the effectiveness of the ILC-EMD algorithm.
机译:本文提出了一种将迭代学习控制(ILC)与经验模式分解(EMD)相结合的新型算法(ILC-EMD),以改善学习过程。为了解释传统ILC下的发散行为,利用EMD将跟踪误差信号分解为11个固有模式模型(IMF)。通过在迭代过程中观察IMF的均方根(RMS),可以确定第一个IMF是不需要的信号,该信号无法通过学习过程降低。通过使用ILC-EMD,它可以滤除不想要的信号并防止放大效果。跟踪蝴蝶NURBS曲线的实验结果验证了ILC-EMD算法的有效性。

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