Performance assessment of correlation methods for the velocity estimation of vibro-acoustic signals propagating in fluid-filled pipelines

Kostas Angelopoulos, G. Glentis
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引用次数: 5

Abstract

In this paper, an assessment of an assortment of cross-correlation based methods for the estimation of the velocity of propagation of vibro-acoustic waves along fluid-filled metallic pipelines is presented. All methods are studied under the premise of utilization in a Time-Difference-Of-Arrival (TDOA) approach for the signal’s speed estimation, that leverages the expected time delay in the signal’s pickup by consecutively installed sensors, due to the travel time spent as the acoustic signal spreads along the examined pipeline. Two popular, frequency domain cross-correlators are investigated, namely the Phase Transform (PHAT) and the Hassab-Boucher (HB), along with the baseline time domain cross-correlation algorithm. An inventory of acoustic data - captured by a vibration monitoring rig during a series of leak signal data gathering experiments, conducted on an existing pipeline installation - is utilized for the investigation of the performance of each method and the illustration of the comparative results. The far-reaching target of the ongoing study, that encompasses the current work, is to derive a cross-correlation based, acoustic method for leakage localization on metallic pipelines carrying hydrocarbon products.
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充液管道中声振信号速度估计相关方法的性能评价
在本文中,评估了各种基于互相关的方法来估计振动声波沿充液金属管道的传播速度。所有方法都是在使用到达时间差(TDOA)方法进行信号速度估计的前提下进行研究的,该方法利用了连续安装的传感器拾取信号时的预期时间延迟,这是由于声信号沿检测管道传播所花费的时间。研究了两种流行的频域互关器,即相位变换(PHAT)和Hassab-Boucher (HB),以及基线时域互关算法。在现有管道装置上进行的一系列泄漏信号数据收集实验中,振动监测设备捕获了声学数据清单,用于调查每种方法的性能并说明比较结果。正在进行的研究的深远目标,包括当前的工作,是推导出一种基于相互关联的声学方法,用于运输碳氢化合物产品的金属管道的泄漏定位。
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