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Indexed by:期刊论文
Date of Publication:2019-02-01
Journal:STRUCTURAL CONTROL & HEALTH MONITORING
Included Journals:SCIE、Scopus
Volume:26
Issue:2
ISSN No.:1545-2255
Key Words:FBG hoop strain sensor; method of characteristics (MOC); particle swarm optimization (PSO) algorithm; pipeline leakage localization; support vector machine (SVM); support vector regression (SVR)
Abstract:A pipeline's safe usage is of critical concern. In our previous work, a fiber Bragg grating hoop strain sensor was developed to measure the hoop strain variation in a pressurized pipeline. In this paper, a support vector machine (SVM) learning method is applied to identify pipeline leakage accidents from different hoop strain signals and then further locate the leakage points along a pipeline. For leakage identification, time domain features and wavelet packet vectors are extracted as the input features for the SVM model. For leakage localization, a series of terminal hoop strain variations are extracted as the input variables for a support vector regression (SVR) analysis to locate the leakage point. The parameters of the SVM/SVR kernel function are optimized by means of a particle swarm optimization (PSO) algorithm to obtain the highest identification and localization accuracy. The results show that when the RBF kernel with optimized C and values is applied, the classification accuracy for leakage identification reaches 97.5% (117/120). The mean square error value for leakage localization can reach as low as 0.002 when the appropriate parameter combination is chosen for a noise-free situation. The anti-noise capability of the optimized SVR model for leakage localization is evaluated by superimposing Gaussian white noise at different levels. The simulation study shows that the average localization error is still acceptable (approximate to 500m) with 5% noise. The results demonstrate the feasibility and robustness of the PSO-SVM approach for pipeline leakage identification and localization.