An Artificial Neural Network Model for Multiple Piezoelectric Actuation of Plates

Linjin Jiang, Pengcheng Yu, M. Fan
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Abstract

With the increasing use of piezoelectric smart structures in various fields, the search for further optimization of the devices is inevitable. In this work, both artificial neural network (ANN) models and finite element models were used to explore the effect of piezoelectric patch size and numbers on the first order natural frequency and transverse displacement of a plate. The research objective is to investigate the efficiency and factors influencing the actuation of thin plate structures under single/multi-channel piezoelectric control conditions. A Finite element model built with COMSOL was used to analyze the effect of structural parameters, including the number of channels and other key parameters on the control of the main natural frequencies of the thin plate structure. With the obtained data from finite element simulations, an ANN model was used to predict the dynamic response of the plate, including the first-order natural frequency and displacement amplitude for finite element verification, so that structural optimization design can be achieved. A well-trained neural network model can quickly and efficiently predict the displacement amplitude and natural frequency of a piezoelectric driven rectangular plate. This study provides a convenient and effective method for predicting the dynamic response of a piezoelectric drive plate considering the number of piezoelectric patch channels and size effects.
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多压电板驱动的人工神经网络模型
随着压电智能结构在各个领域的应用越来越广泛,对其进一步优化的研究势在必行。本文采用人工神经网络(ANN)模型和有限元模型,探讨了压电片尺寸和数量对板的一阶固有频率和横向位移的影响。研究目的是研究单通道/多通道压电控制条件下薄板结构的驱动效率和影响因素。利用COMSOL软件建立了薄板结构的有限元模型,分析了通道数等结构参数对薄板结构主固有频率控制的影响。利用有限元仿真得到的数据,利用人工神经网络模型对板的动力响应进行预测,包括一阶固有频率和位移幅值进行有限元验证,从而实现结构优化设计。训练良好的神经网络模型可以快速有效地预测压电驱动矩形板的位移幅值和固有频率。该研究为考虑压电片通道数量和尺寸效应的压电驱动板动态响应预测提供了一种方便有效的方法。
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