单原子卷积匹配追求:基于λ波的结构健康监测的理论框架与应用

Sebastian Rodriguez, Marc Rébillat, Shweta Paunikar, Pierre Margerit, Eric Monteiro, Francisco Chinesta, Nazih Mechbal
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引用次数: 0

摘要

结构健康监测(SHM)旨在实时监测工程结构的健康状态。对于薄型结构而言,λ波(LW)非常适用于 SHM。粘结压电传感器(PZT)会以短音脉冲的形式在结构内部发射 LW。这种初始波包(IWP)在结构上传播,并与结构的边界、不连续面以及最终的损伤相互作用,产生额外的波包。基于 LW 的 SHM 的主要问题是至少有两个 LW 模式同时被激发,而且这些模式是色散的。匹配追寻法(MPM)将信号近似为不同延迟和缩放原子的总和,这些原子取自先验已知的学习字典。本文提出了 MPM 的改进版本,即单原子卷积匹配追求法(SACMPM),它通过将测量信号分解为延迟和分散原子来解决分散现象,并将学习字典限制为只有一个原子。在处理数值信号和实验信号以及用于损伤检测时,对其性能进行了说明。虽然本文提出的信号逼近方法最初应用于 SHM,但该方法仍具有完全的通用性,可轻松应用于任何信号处理问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single Atom Convolutional Matching Pursuit: Theoretical Framework and Application to Lamb Waves based Structural Health Monitoring
Structural Health Monitoring (SHM) aims to monitor in real time the health state of engineering structures. For thin structures, Lamb Waves (LW) are very efficient for SHM purposes. A bonded piezoelectric transducer (PZT) emits LW in the structure in the form of a short tone burst. This initial wave packet (IWP) propagates in the structure and interacts with its boundaries and discontinuities and with eventual damages generating additional wave packets. The main issues with LW based SHM are that at least two LW modes are simultaneously excited and that those modes are dispersive. Matching Pursuit Method (MPM), which consists of approximating a signal as a sum of different delayed and scaled atoms taken from an a priori known learning dictionary, seems very appealing in such a context, however is limited to nondispersive signals and relies on a priori known dictionary. An improved version of MPM called the Single Atom Convolutional Matching Pursuit method (SACMPM), which addresses the dispersion phenomena by decomposing a measured signal as delayed and dispersed atoms and limits the learning dictionary to only one atom, is proposed here. Its performances are illustrated when dealing with numerical and experimental signals as well as its usage for damage detection. Although the signal approximation method proposed in this paper finds an original application in the context of SHM, this method remains completely general and can be easily applied to any signal processing problem.
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