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天然气管道监测传感器网络中的分层泄漏检测和定位方法。

Hierarchical leak detection and localization method in natural gas pipeline monitoring sensor networks.

机构信息

School of Instrumentation Science and Opto-Electronics Engineering, Beijing University of Aeronautics and Astronautics, Beijing 100191, China.

出版信息

Sensors (Basel). 2012;12(1):189-214. doi: 10.3390/s120100189. Epub 2011 Dec 27.

Abstract

In light of the problems of low recognition efficiency, high false rates and poor localization accuracy in traditional pipeline security detection technology, this paper proposes a type of hierarchical leak detection and localization method for use in natural gas pipeline monitoring sensor networks. In the signal preprocessing phase, original monitoring signals are dealt with by wavelet transform technology to extract the single mode signals as well as characteristic parameters. In the initial recognition phase, a multi-classifier model based on SVM is constructed and characteristic parameters are sent as input vectors to the multi-classifier for initial recognition. In the final decision phase, an improved evidence combination rule is designed to integrate initial recognition results for final decisions. Furthermore, a weighted average localization algorithm based on time difference of arrival is introduced for determining the leak point's position. Experimental results illustrate that this hierarchical pipeline leak detection and localization method could effectively improve the accuracy of the leak point localization and reduce the undetected rate as well as false alarm rate.

摘要

针对传统管道安全检测技术中识别效率低、误报率高和定位精度差的问题,提出了一种用于天然气管道监测传感器网络的分层泄漏检测和定位方法。在信号预处理阶段,采用小波变换技术对原始监测信号进行处理,提取出单模信号及其特征参数。在初始识别阶段,构建基于 SVM 的多分类器模型,将特征参数作为输入向量发送到多分类器进行初始识别。在最终决策阶段,设计了一种改进的证据组合规则,对初始识别结果进行集成决策。此外,引入了一种基于到达时间差的加权平均定位算法,用于确定泄漏点的位置。实验结果表明,这种分层管道泄漏检测和定位方法可以有效地提高泄漏点定位的准确性,降低未检测率和误报率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b3c4/3279208/5204e0179a4d/sensors-12-00189f1.jpg

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