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A regularized on-line sequential extreme learning machine with forgetting property for fast dynamic hysteresis modeling

机译:具有遗忘特性的正则化在线顺序极限学习机,用于快速动态滞后建模

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Piezoelectric ceramics(PZT)actuator has been widely used in flexure-guided nanopositioning stage because of their high resolution. However, it is quite hard to achieve high-rate precision positioning control because of the complex hysteresis nonlinearity effect of PZT actuator. Thus, an online RELM algorithm with forgetting property(FReOS-ELM) is proposed to handle this issue. Firstly, we adopt regularized extreme learning machine(RELM)to build an intelligent hysteresis model. The training of the algorithm is completed only in one step, which avoids the shortcomings of the traditional hysteresis model based on artificial neural network(ANN) that slow training speed and easy to fall into the local minimum. Then, based on the regularized on-line sequential extreme learning machine(ReOS-ELM), an on-line RELM algorithm with forgetting property(FReOS-ELM) is designed, which can avoid the computational load of ReOS-ELM in the process of adding new data for learning on-line. In the experiment, a real-time voltage signal with varying frequencies and amplitudes is adopted, and the output displacement data of the nanopositioning stage is also acquired and analyzed. The results powerfully verify that the performance of the established hysteresis model based on the proposed FReOS-ELM is satisfactory, which can be used to improve the practical positioning performance for flexure nanopositioning stage.
机译:压电陶瓷(PZT)作动器因其高分辨率而被广泛用于弯曲引导纳米定位阶段。但是,由于PZT执行器具有复杂的磁滞非线性效应,因此很难实现高精度的高精度定位控制。因此,提出了一种具有遗忘特性的在线RELM算法(FReOS-ELM)。首先,我们采用正则化的极限学习机(RELM)建立了智能滞后模型。该算法的训练仅一步完成,避免了传统的基于人工神经网络的磁滞模型的缺点,训练速度慢,容易陷入局部最小值。然后,基于正则化的在线顺序极限学习机(ReOS-ELM),设计了一种具有遗忘特性的在线RELM算法(FReOS-ELM),该算法可以避免ReOS-ELM在计算过程中的计算量。添加新数据以进行在线学习。在实验中,采用了具有变化频率和幅度的实时电压信号,并获得并分析了纳米定位台的输出位移数据。结果有力地证明了基于所提出的FReOS-ELM建立的磁滞模型的性能令人满意,可用于改善挠性纳米定位台的实际定位性能。

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