Damage detection in structural health monitoring using kernel PLS based GLR

Marwa Chaabane, M. Mansouri, H. Nounou, M. Nounou, M. Slima, A. Hamida
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引用次数: 3

Abstract

The objective of this paper is to extend the applicability of the GLR method to a wide range of practical systems. Most real systems are nonlinear, multivariate, and are best represented by input-output type of models. Kernel partial least squares (KPLS) models have been widely used to represent such systems. Therefore, in this paper, kernel PLS-based GLR method will be utilized in practice to improve damage detection in Structural Health Monitoring (SHM). The developed kernel PLS-based GLR technique combines the benefits of the multivariate input-output kernel PLS model and the statistical fault detection GLR statistic which showed performance in the cases where process models are not available. GLR is a well-known statistical detection method that relies on maximizing the detection probability for a given false alarm rate. To calculate the kernel PLS model, we use the data collected from the complex 3DOF spring-mass-dashpot system. The simulation results show improved performance of kernel PLS-based GLR in damage detection compared to the classical kernel PLS method.
基于核PLS的GLR结构健康监测损伤检测
本文的目的是将GLR方法的适用性扩展到更广泛的实际系统。大多数真实系统是非线性的、多元的,最好用输入输出类型的模型来表示。核偏最小二乘(KPLS)模型已被广泛用于表示这类系统。因此,本文将在实践中利用基于核pls的GLR方法来改进结构健康监测(SHM)中的损伤检测。开发的基于核PLS的GLR技术结合了多元输入输出核PLS模型和统计故障检测GLR统计量的优点,在过程模型不可用的情况下显示性能。GLR是一种众所周知的统计检测方法,它依赖于在给定的虚警率下最大化检测概率。为了计算核PLS模型,我们使用了从复杂的三维弹簧-质量-阻尼系统收集的数据。仿真结果表明,与经典的核PLS方法相比,基于核PLS的GLR方法在损伤检测中的性能有所提高。
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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