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A generalized approach for calculation of the eigenvector sensitivity for various eigenvector normalizations.

机译:一种针对各种特征向量归一化计算特征向量灵敏度的通用方法。

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摘要

Sensitivity analysis is an important step in any gradient based optimization problem. Eigenvalue and Eigenvector Sensitivity Analysis has been a major area for more than three decades in structural optimization. An efficient and generalized method is required to do the sensitivity analysis as it can reduce computational time for large industrial problems. Previous methods focus mainly on calculating the eigenvector sensitivity for mass normalized eigenvectors only. A new generalized method is presented to calculate the first and second order eigenvector sensitivities for eigenvectors with any normalization condition. This new generalized method incorporates the use of normalization condition in the eigenvector sensitivity calculation in a manner similar to the calculation of the eigenvectors themselves. This generalized method also reduces to the well known Nelson's method, which is generally accepted as the most efficient and exact method for eigenvector sensitivity analysis for mass normalized eigenvectors. Equations to compute eigenvector sensitivities when the normalization condition is changed are also derived. The effect of the eigenvector normalization condition on the eigenvector sensitivity is discussed. Examples are provided to illustrate the generalized method for the calculation of first-order and second-order eigenvector sensitivities and the use of rescaling equations.
机译:灵敏度分析是任何基于梯度的优化问题中的重要步骤。特征值和特征向量灵敏度分析已成为结构优化领域超过三十年的主要领域。需要一种有效且通用的方法来进行灵敏度分析,因为它可以减少大型工业问题的计算时间。先前的方法主要集中在仅针对质量归一化特征向量计算特征向量灵敏度。提出了一种新的广义方法来计算具有任何归一化条件的特征向量的一阶和二阶特征向量敏感性。这种新的广义方法以与特征向量自身计算类似的方式将归一化条件并入特征向量灵敏度计算中。该通用方法还简化为众所周知的Nelson方法,该方法通常被认为是用于质量归一化特征向量的特征向量灵敏度分析的最有效和最精确的方法。还推导了当归一化条件改变时计算特征向量灵敏度的方程式。讨论了特征向量归一化条件对特征向量灵敏度的影响。提供了一些示例来说明用于计算一阶和二阶特征向量敏感度的通用方法以及重缩放方程的使用。

著录项

  • 作者

    Siddhi, Vijendra.;

  • 作者单位

    University of Missouri - Columbia.;

  • 授予单位 University of Missouri - Columbia.;
  • 学科 Engineering Mechanical.
  • 学位 M.S.
  • 年度 2005
  • 页码 91 p.
  • 总页数 91
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:39

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