A Novel Compressive Sampling Approach for Detecting Hard Defects in Complex Wire Networks

Tzila Ajamian, S. Moussaoui, A. Dupret
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引用次数: 4

Abstract

Reflectometry is a structural health monitoring technique that allows to efficiently detect and localize electrical defects in wire networks. The main challenge in reflectometry is to improve the precision of defect localization and characterization, especially in the case of complex networks. The solution is to increase the frequency of the injected signal since the spatial resolution is inversely proportional to the injected signal frequency. However, such solution applicability is limited by the sampling capabilities of existing Analog-to-Digital Converters (ADC). In this paper, we propose a sampling approach based on Compressive Sensing (CS) in the context of reflectometry. The resulting methodology offers the possibility to inject high frequency signals and later to reconstruct the reflected waveform from a lower set of samples than that required in the classical sampling scheme. In that respect, a complex linear chirp signal is considered as a testing signal and injected in a complex Y-branches network with a hard defect at the edges. In order to have a sparse representation, the reflected chirp signal is decomposed in the Fractional Fourier Transform (FrFT) domain. The main result is that the new acquisition scheme allows the detection of multiple reflection peaks caused by the defects at a sampling frequency 10 times lower than the actual sampling rate with a relative fault location error of 2%.
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一种用于复杂钢丝网络中硬缺陷检测的压缩采样方法
反射法是一种结构健康监测技术,可以有效地检测和定位电线网络中的电气缺陷。反射测量的主要挑战是提高缺陷定位和表征的精度,特别是在复杂网络的情况下。解决方法是增加注入信号的频率,因为空间分辨率与注入信号的频率成反比。然而,这种解决方案的适用性受到现有模数转换器(ADC)采样能力的限制。本文提出了一种基于压缩感知(CS)的反射测量采样方法。由此产生的方法提供了注入高频信号的可能性,然后从比经典采样方案所需的更低的采样集重建反射波形。在这方面,将一个复杂的线性啁啾信号作为测试信号,注入到一个边缘有硬缺陷的复杂y分支网络中。为了使反射啁啾信号具有稀疏表示,在分数阶傅里叶变换(FrFT)域中对其进行分解。主要结果是,新的采集方案可以在比实际采样率低10倍的采样频率下检测到由缺陷引起的多个反射峰,相对故障定位误差为2%。
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