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Modeling Hysteresis and Its Inverse Model Using Neural Networks Based on Expanded Input Space Method

机译:基于扩展输入空间法的神经网络建模迟滞及其逆模型

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摘要

A neural network-based approach of identification for hysteresis and its inverse model is proposed. In this method, a hysteretic operator is proposed to extract the change tendency of hysteresis. Then, an expanded input space is constructed to transform the multivalued mapping into one-to-one mapping so that the neural networks are capable of implementing identification for hysteresis. Similar to the method of modeling hystereis, an inverse hyteretic operator is proposed to construct an inverse model for hysteresis. Then the experimental results are presented to illustrate the potential of the proposed modeling technique.
机译:提出了一种基于神经网络的磁滞辨识方法及其逆模型。在这种方法中,提出了一种磁滞算子来提取磁滞的变化趋势。然后,构造一个扩展的输入空间以将多值映射转换为一对一映射,以便神经网络能够实现对滞后的识别。类似于建模磁滞的方法,提出了一种反磁滞算子来构造磁滞的逆模型。然后给出实验结果以说明所提出的建模技术的潜力。

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