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基于支持向量机粒子群优化调优的分布式光纤传感水下输气管道泄漏源定位

Underwater gas pipeline leakage source localization by distributed fiber-optic sensing based on particle swarm optimization tuning of the support vector machine.

作者信息

Huang Yue, Wang Qiang, Shi Lilian, Yang Qihua

出版信息

Appl Opt. 2016 Jan 10;55(2):242-7. doi: 10.1364/AO.55.000242.

DOI:10.1364/AO.55.000242
PMID:26835758
Abstract

Accurate underwater gas pipeline leak localization requires particular attention due to the sensitivity of environmental conditions. Experiments were performed to analyze the localization performance of a distributed optical fiber sensing system based on the hybrid Sagnac and Mach-Zehnder interferometer. The traditional null frequency location method does not easily allow accurate location of the leakage points. To improve the positioning accuracy, the particle swarm optimization algorithm (PSO) tuning of the support vector machine (SVM) was used to predict the leakage points based on gathered leakage data. The PSO is able to optimize the SVM parameters. For the 10 km range chosen, the results show the PSO-SVM average absolute error of the leakage points predicted is 66 m. The prediction accuracy of leakage points is 98.25% by PSO tuning of the SVM processing. For 20 leakage test data points, the average absolute error of leakage point location is 124.8 m. The leakage position predicted by the PSO algorithm after optimization of the parameters is more accurate.

摘要

由于环境条件的敏感性,精确的水下气体管道泄漏定位需要特别关注。进行了实验以分析基于混合萨尼亚克和马赫曾德尔干涉仪的分布式光纤传感系统的定位性能。传统的零频率定位方法不容易准确确定泄漏点的位置。为了提高定位精度,基于收集到的泄漏数据,使用粒子群优化算法(PSO)对支持向量机(SVM)进行调优来预测泄漏点。PSO能够优化SVM参数。对于选定的10公里范围,结果表明预测泄漏点的PSO - SVM平均绝对误差为66米。通过PSO对SVM进行调优处理,泄漏点的预测准确率为98.25%。对于20个泄漏测试数据点,泄漏点定位的平均绝对误差为124.8米。参数优化后的PSO算法预测的泄漏位置更准确。

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