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首页> 外文期刊>Journal of Sound and Vibration >Proper orthogonal decomposition and its applications - Part II: Model reduction for MEMS dynamical analysis
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Proper orthogonal decomposition and its applications - Part II: Model reduction for MEMS dynamical analysis

机译:正确的正交分解及其应用-第二部分:MEMS动力学分析的模型简化

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摘要

Proper orthogonal decomposition (POD) methods are popular tools for data analysis aimed at obtaining low-dimensional approximate descriptions of a high-dimensional process in many engineering fields. The applications of POD methods to model reduction for microelectromechanical systems (MEMS) are reviewed in this paper. In view of the fact that existing POD methods in the model reduction for dynamic simulation of MEMS dealt with only noise-free data, this paper proposes a neural-network-based method that combines robust principal component analysis (PCA) neural network model with Galerkin procedure for dynamic simulation and analysis of non-linear MEMS with noisy data. Simulations are given to show the performance of the proposed method in comparison with the existing method. Compared with the standard PCA neural network model, the robust PCA neural network model has a number of numerical advantages such as the stability and robustness to noise-injected data and the faster convergence of iterations in the training stages than the existing neural network technique. The macro-model generated by using the eigenvectors extracted from the proposed method as basis functions shows its flexibility and efficiency in the representation and simulation of the original non-linear partial differential equations. (C) 2002 Elsevier Science Ltd. All rights reserved. [References: 35]
机译:正确的正交分解(POD)方法是流行的数据分析工具,旨在获得许多工程领域中高维过程的低维近似描述。本文综述了POD方法在微机电系统(MEMS)模型简化中的应用。鉴于MEMS动态仿真模型简化中的现有POD方法仅处理无噪声数据,因此提出了一种基于神经网络的方法,该方法将鲁棒主成分分析(PCA)神经网络模型与Galerkin相结合带有噪声数据的非线性MEMS动态仿真和分析程序。仿真结果表明了该方法与现有方法的性能。与标准的PCA神经网络模型相比,鲁棒的PCA神经网络模型具有许多数值优势,例如对噪声注入数据的稳定性和鲁棒性以及与现有神经网络技术相比,训练阶段的迭代收敛更快。以从提出的方法中提取的特征向量为基函数生成的宏模型在原始非线性偏微分方程的表示和仿真中表现出了灵活性和效率。 (C)2002 Elsevier ScienceLtd。保留所有权利。 [参考:35]

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