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首页> 外文期刊>Advances in Structural Engineering >Damage detection in nonlinear civil structures using kernel principal component analysis
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Damage detection in nonlinear civil structures using kernel principal component analysis

机译:使用内核主成分分析的非线性民用结构中的损坏检测

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摘要

In the general framework of data-driven structural health monitoring, principal component analysis has been applied successfully in continuous monitoring of complex civil infrastructures. In the case of linear or polynomial relationship between monitored variables, principal component analysis allows generation of structured residuals from measurement outputs without a priori structural model. The principal component analysis has been widely used for system monitoring based on its ability to handle high-dimensional, noisy, and highly correlated data by projecting the data onto a lower dimensional subspace that contains most of the variance of the original data. However, for nonlinear systems, it could be easily demonstrated that linear principal component analysis is unable to disclose nonlinear relationships between variables. This has naturally motivated various developments of nonlinear principal component analysis to tackle damage diagnosis of complex structural systems, especially those characterized by a nonlinear behavior. In this article, a data-driven technique for damage detection in nonlinear structural systems is presented. The proposed method is based on kernel principal component analysis. Two case studies involving nonlinear cable structures are presented to show the effectiveness of the proposed methodology. The validity of the kernel principal component analysis-based monitoring technique is shown in terms of the ability to damage detection. Robustness to environmental effects and disturbances are also studied.
机译:在数据驱动结构健康监测的一般框架中,主要成分分析已成功应用于持续监测复杂的民用基础设施。在受监控变量之间的线性或多项式关系的情况下,主成分分析允许在没有先验结构模型的情况下从测量输出产生结构化残差。主要成分分析基于其通过将数据投影到包含原始数据的大多数方差的低维子空间上,基于其处理高维,噪声和高度相关数据的系统监控。然而,对于非线性系统,可以很容易地证明线性主成分分析不能在变量之间揭示非线性关系。这自然促进了非线性主成分分析的各种发展,以解决复杂结构系统的损伤诊断,尤其是具有非线性行为的特征的损伤诊断。在本文中,提出了一种用于非线性结构系统中的损坏检测的数据驱动技术。该方法基于内核主成分分析。提出了两种涉及非线性电缆结构的案例研究以显示提出的方法的有效性。根据损坏检测的能力,显示了基于内核主成分分析的监测技术的有效性。还研究了对环境影响和干扰的稳健性。

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