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Approximate entropy-based leak detection using artificial neural network in water distribution pipelines

机译:配水管道中基于人工神经网络的基于熵的泄漏检测

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Correlation techniques are widely used to locate leaks in buried water pipes. However, a distinct peak in the cross-correlation of two spatially separately collected acoustic signals may result from a non-leak acoustic source outside the pipe. And the peak not related to a real leak will result in a false leak location. So it is necessary to determine whether or not a real leak exists beforehand. In this paper, a new leak detection method using approximate entropy is proposed to discriminate the leak acoustic signals from the non-leak signals. In this method, the autocorrelation function values for the delay τ larger than the correlation length of the signal, not the signal itself or its entire autocorrelation function values, are used to extract or evaluate the self-similarity degree of the signal by the approximate entropy. A neural-network approach has been developed as a classifier, which uses the identified self-similarity degrees as the network inputs. The proposed leak detection method has been employed to identify the leak in the buried water pipelines, and achieved a 92.5% correct detection rate.
机译:相关技术被广泛用于定位地下水管中的泄漏。然而,两个空间上分别收集的声信号的互相关中的明显峰值可能是由管道外部的无泄漏声源引起的。与实际泄漏无关的峰值将导致错误的泄漏位置。因此,有必要事先确定是否存在真正的泄漏。本文提出了一种利用近似熵的泄漏检测方法,以区别非泄漏信号中的泄漏声信号。在这种方法中,延迟τ的自相关函数值大于信号的相关长度,而不是信号本身或其整个自相关函数值,用于通过近似熵来提取或评估信号的自相似度。已经开发了一种神经网络方法作为分类器,该方法使用已识别的自相似度作为网络输入。提出的泄漏检测方法已被用于识别地下水管道中的泄漏,并达到了92.5%的正确检测率。

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