School of Engineering and Applied Science, Ahmedabad University, Ahmedabad 380009, Gujarat, India.
Department of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan 44610, Korea.
Sensors (Basel). 2021 Dec 10;21(24):8247. doi: 10.3390/s21248247.
Pipeline leakage remains a challenge in various industries. Acoustic emission (AE) technology has recently shown great potential for leak diagnosis. Many AE features, such as root mean square (RMS), peak value, standard deviation, mean value, and entropy, have been suggested to detect leaks. However, background noise in AE signals makes these features ineffective. The present paper proposes a pipeline leak detection technique based on acoustic emission event (AEE) features and a Kolmogorov-Smirnov (KS) test. The AEE features, namely, peak amplitude, energy, rise-time, decay time, and counts, are inherent properties of AE signals and therefore more suitable for recognizing leak attributes. Surprisingly, the AEE features have received negligible attention. According to the proposed technique, the AEE features are first extracted from the AE signals. For this purpose, a sliding window was used with an adaptive threshold so that the properties of both burst- and continuous-type emissions can be retained. The AEE features form distribution that change its shape when the pipeline condition changes from normal to leakage. The AEE feature distributions for leak and healthy conditions were discriminated using the two-sample KS test, and a pipeline leak indicator (PLI) was obtained. The experimental results demonstrate that the developed PLI accurately distinguishes the leak and no-leak conditions without any prior leak information and it performs better than the traditional features such as mean, variance, RMS, and kurtosis.
管道泄漏仍然是许多行业面临的挑战。声发射(AE)技术最近在泄漏诊断方面显示出巨大的潜力。已经提出了许多 AE 特征,例如均方根(RMS)、峰值、标准差、平均值和熵,用于检测泄漏。然而,AE 信号中的背景噪声使得这些特征无效。本文提出了一种基于声发射事件(AEE)特征和柯尔莫哥洛夫-斯米尔诺夫(KS)检验的管道泄漏检测技术。AEE 特征,即峰值幅度、能量、上升时间、下降时间和计数,是 AE 信号的固有特性,因此更适合识别泄漏属性。令人惊讶的是,AEE 特征几乎没有受到关注。根据所提出的技术,首先从 AE 信号中提取 AEE 特征。为此,使用了具有自适应阈值的滑动窗口,以便保留突发型和连续型发射的特性。当管道状态从正常变为泄漏时,AEE 特征的分布会改变形状。使用两样本 KS 检验对泄漏和健康状态的 AEE 特征分布进行区分,并获得管道泄漏指示符(PLI)。实验结果表明,所开发的 PLI 无需任何事先的泄漏信息即可准确区分泄漏和无泄漏条件,并且比传统特征(如均值、方差、RMS 和峰度)表现更好。