Signal Processing Techniques of Lamb Waves for Structural Health Monitoring System - A Review

Nurazima Ismail, Mohd Hafizi Zohari, Che Ku Eddy Che Ku Nizwan, Kok Sing Lim
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引用次数: 0

Abstract

The structural health monitoring (SHM) system using Lamb wave approach has drawn a lot of interest because of its outstanding performance in terms of accuracy and adaptability. The implemented signal processing techniques in the diagnostic analysis are specifically reviewed in this work. The primary factors of the wide range of applied signal processing techniques are due to the multimode and dispersive behaviour of the Lamb waves. Several Lamb modes occur simultaneously, and because they have different dispersive characteristics, they can produce complicated superimposed signals. To effectively diagnose the observed signals, several mode separations approaches have been proposed. Generally, time-frequency representation is applied for signal processing techniques. The findings demonstrated that the proposed procedures were successful in decomposing the superimposed mode into individual modes for further analysis. All these works have shown how SHM systems based on Lamb waves have evolved over time to control and monitor the condition of the structure.
用于结构健康监测系统的λ波信号处理技术 - 综述
采用 Lamb 波方法的结构健康监测(SHM)系统因其在精度和适应性方面的出色表现而备受关注。本研究对诊断分析中采用的信号处理技术进行了具体评述。信号处理技术之所以应用广泛,主要是由于 Lamb 波的多模和色散特性。几种 Lamb 模式同时出现,由于它们具有不同的色散特性,因此会产生复杂的叠加信号。为了有效诊断观测到的信号,人们提出了几种模式分离方法。一般来说,信号处理技术采用时频表示法。研究结果表明,所提出的程序能成功地将叠加模式分解为单个模式,以便进一步分析。所有这些工作都表明了基于 Lamb 波的 SHM 系统是如何随着时间的推移发展到控制和监测结构状况的。
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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