扫描隧道显微镜中压电驱动器的动态迟滞建模

Qiang Wei, Chao Zhang, Guilin Zhang, Chengzhong Hu
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引用次数: 1

摘要

压电陶瓷作动器具有结构简单、响应频率高、动态性能快、承载能力强等优点,广泛应用于超高精度跟踪机构中。但其滞后非线性特性降低了跟踪精度。为了提高跟踪性能,设计了一种基于动态递归神经网络(DRNN)的改进建模方法。介绍了其力学结构,给出了非线性动力学的Bouc-Wen模型。将驱动电压和相应位移等数据对作为离线训练网络的样本。根据实际位移与期望位移之间的误差对DRNN中的权值进行修正。用变幅三角形电压验证了该方法的有效性。实验表明,与静态神经网络相比,平均跟踪误差从0.38μm减小到0.24μm,最大跟踪误差从0.74μm减小到0.42μm。为今后控制系统的设计提供了更精确的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic hysteresis modeling of piezoelectric actuator in Scanning Tunneling Microscope
Piezoelectric ceramics actuator is widely used in ultra high precision and tracking mechanism for the advantages of simple construction, high response frequency, rapid dynamic performance and excellent heavy carrying capacity. But the hysteretic nonlinear characteristic reduced the tracking precision. A modified modeling method based on dynamic recurrent neural network(DRNN) is designed in this paper to improve the tracking performance. The mechanical structure is introduced, and a Bouc-Wen model is given to express the nonlinear kinetics. The data pairs including driving voltage and corresponding displacement are regarded as the samples to train the network off-line. The weight values in DRNN are modified according to the error between the actual and desired displacement. A triangle voltage with variable amplitude is applied to validate the effectiveness of the proposed method. It is shown in the experiments that the mean tracking error is reduced from 0.38μm to 0.24μm, and the maximum error from 0.74μm to 0.42μm respectively compared with the static neural network. A more accurate model is established for the control system design in the future.
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