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Nonstationary response of nonlinear systems using equivalent linearization with a compact analytical form of the excitation process

机译:使用等效线性化和激励过程的紧凑分析形式的非线性系统的非平稳响应

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摘要

A new method based on equivalent linearization approaches is presented for estimating the nonstationary response of a class of nonlinear multi-degree-of-frecdom systems subjected to nonstationary excitations. The highly efficient method is based on creating a compact analytical approximation of measured nonstationary excitation process data through use of a two-stage decomposition procedure. The analytic data condensation of the excitation process is performed in two stages; (1) by performing the Karhunen-Loeve spectral decomposition on the covariance matrix of the input random process to obtain the dominant eigenvectors, and (2) by fitting these eigenvectors with orthogonal polynomials to produce a truncated series of analytically approximated eigenvectors. The efficiency and accuracy of the method is demonstrated through simulation with synthetically generated excitation data as well as measured data from a real-world physical process. Although (he decomposition procedure used can characterize very general input processes, because the equivalent linearization technique requires the Gaussian assumption of the response process, the constraint on applying this approach is similar to the constraints on all other equivalent linearization techniques. However, the additional freedom gained from being able to work with data-based nonstationary random processes is a significant addition to this area of research.
机译:提出了一种基于等效线性化方法的新方法,用于估计一类非线性多频度系统的非平稳响应的非平稳响应。高效的方法基于通过使用两步分解过程创建对测得的非平稳励磁过程数据的紧凑分析近似。激励过程的分析数据压缩分两个阶段进行: (1)通过对输入随机过程的协方差矩阵执行Karhunen-Loeve谱分解以获得主导特征向量,以及(2)通过将这些特征向量与正交多项式拟合以产生一系列截短的分析近似特征向量。通过使用合成生成的激励数据以及来自实际物理过程的测量数据进行仿真,证明了该方法的效率和准确性。尽管(使用的分解过程可以表征非常通用的输入过程,但是由于等效线性化技术需要对响应过程进行高斯假设,所以应用此方法的约束类似于所有其他等效线性化技术的约束。但是,附加的自由度由于能够使用基于数据的非平稳随机过程而获得的收益,是对该研究领域的重要补充。

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