Estimation of Static Pull-In Instability Voltage of Geometrically Nonlinear Euler-Bernoulli Microbeam Based on Modified Couple Stress Theory by Artificial Neural Network Model

M. Heidari, Y. Beni, H. Homaei
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引用次数: 6

Abstract

In this study, the static pull-in instability of beam-type micro-electromechanical system (MEMS) is theoretically investigated. Considering the mid-plane stretching as the source of the nonlinearity in the beam behavior, a nonlinear size dependent Euler-Bernoulli beam model is used based on a modified couple stress theory, capable of capturing the size effect. Two supervised neural networks, namely, back propagation (BP) and radial basis function (RBF), have been used formodeling the static pull-in instability of microcantilever beam. These networks have four inputs of length, width, gap, and the ratio of height to scale parameter of beam as the independent process variables, and the output is static pull-in voltage of microbeam. Numerical data employed for training the networks and capabilities of the models in predicting the pull-in instability behavior has been verified. Based on verification errors, it is shown that the radial basis function of neural network is superior in this particular case and has the average errors of 4.55% in predicting pull-in voltage of cantilever microbeam. Further analysis of pull-in instability of beam under different input conditions has been investigated and comparison results ofmodeling with numerical considerations show a good agreement, which also proves the feasibility and effectiveness of the adopted approach.
基于修正耦合应力理论的几何非线性欧拉-伯努利微梁静态拉入不稳定电压人工神经网络模型估计
本文从理论上研究了梁式微机电系统(MEMS)的静态拉入失稳问题。考虑到中平面拉伸是梁的非线性特性的来源,基于修正的耦合应力理论,建立了能够捕捉尺寸效应的非线性尺寸依赖欧拉-伯努利梁模型。采用反向传播(BP)和径向基函数(RBF)两种监督神经网络对微悬臂梁的静力拉入失稳进行了建模。该网络以梁的长度、宽度、间隙和梁的高度与尺度参数的比值为独立过程变量,输出为微梁的静态拉入电压。用于训练网络的数值数据和模型预测拉入不稳定行为的能力已得到验证。基于验证误差,表明神经网络的径向基函数在预测悬臂微梁的拉入电压时具有优越性,平均误差为4.55%。对不同输入条件下梁的拉入失稳进行了进一步分析,并与数值计算结果进行了比较,结果吻合较好,证明了所采用方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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