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Blind Acoustic Source Separation Via System Identification for Leak Detection in Pipelines * * The work of Arne Dankers is supported by Hifi Engineering and Mitacs Canada

机译:通过系统识别进行盲声源分离,用于管道泄漏检测 * * 支持Arne Dankers的工作由Hifi Engineering and Mitacs Canada

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The main motivation for this paper is to improve an acoustic leak detection system for pipelines by using blind source separation. In this setup hundreds of microphones are used to continuously monitor a pipeline. We propose to use a source separation scheme to eliminate overlapping sounds in the measured signals making is easier to detect and locate acoustic events in the measured data. To separate the sources, a large scale system identification problem results. In this paper we present one way that the identification problem can be made more computationally efficient. First, the blind source separation problem is parameterized as a channel estimation problem. Due to the presence of echoes, the channel impulse responses are very long, but are sparse in the sense that they are zero for a significant portion of the response. Then this sparsity is exploited for reducing the computational complexity of the identification problem. Our method is tested on a small scale test pipeline.
机译:本文的主要动机是通过使用盲源分离来改善管道的声泄漏检测系统。在此设置中,数百个麦克风用于连续监视管道。我们建议使用源分离方案来消除测量信号中的重叠声音,从而更易于检测和定位测量数据中的声音事件。为了分离源,导致大规模的系统识别问题。在本文中,我们提出了一种方法,可以使识别问题的计算效率更高。首先,将盲源分离问题参数化为信道估计问题。由于回声的存在,信道脉冲响应非常长,但在响应的很大一部分中它们为零的意义上是稀疏的。然后利用这种稀疏性来减少识别问题的计算复杂度。我们的方法是在小型测试管道上测试的。

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