Leakage aperture recognition based on ensemble local mean decomposition and sparse representation for classification of natural gas pipeline

Abstract Leakage in a natural gas pipeline is influenced by many factors, including aperture, distance from sensors, and pressure inside the pipeline. The feature extraction and recognition algorithm is complex; thus, a new leakage aperture recognition method is proposed that presents a feature extraction algorithm based on the Ensemble Local Mean Decomposition (ELMD)-K-L (Kullback-Leibler) model and Sparse Representation for Classification. This method applied ELMD to perform adaptive decomposition of the leakage signals and obtain feature information of the leakage signals with different apertures. It then selected the product function components that contained major leakage information according to the K-L divergence from which we extracted a variety of time-frequency feature parameters to obtain the comprehensive and accurate eigenvector of the leakage signal. Realization of an accurate classification of leakage aperture using sparse representation classifiers was proposed to classify small samples of the complex signals. The classifiers obtained the sparsest solution of the test signal through the over-complete dictionary and used this solution as the sparse reconstruction coefficients of the test signal to obtain the reconstructed signal of this test signal under different categories. Finally, it completed the classification by determining the residuals of the test and the reconstructed signals. The experimental results showed that the proposed algorithm can achieve higher accuracy than the traditional support vector machine and Back-Propagation classification algorithms.

[1]  Qiyang Xiao,et al.  Natural gas pipeline leak aperture identification and location based on local mean decomposition analysis , 2016 .

[2]  Thomas S. Huang,et al.  Image Super-Resolution Via Sparse Representation , 2010, IEEE Transactions on Image Processing.

[3]  Joshua R. Smith,et al.  The local mean decomposition and its application to EEG perception data , 2005, Journal of The Royal Society Interface.

[4]  Yong Yan,et al.  Hilbert–Huang transform based signal analysis for the characterization of gas–liquid two-phase flow , 2007 .

[5]  Kang Zhang,et al.  An ensemble local means decomposition method and its application to local rub-impact fault diagnosis of the rotor systems , 2012 .

[6]  Mehrdad Sharif Bakhtiar,et al.  LEAK DETECTION IN WATER-FILLED PLASTIC PIPES THROUGH THE APPLICATION OF TUNED WAVELET TRANSFORMS TO ACOUSTIC EMISSION SIGNALS , 2010 .

[7]  Min-Soo Kim,et al.  Detection of leak acoustic signal in buried gas pipe based on the time―frequency analysis , 2009 .

[8]  Amitava Chatterjee,et al.  A sparse representation based approach for recognition of power system transients , 2014, Eng. Appl. Artif. Intell..

[9]  Yaguo Lei,et al.  A multidimensional hybrid intelligent method for gear fault diagnosis , 2010, Expert Syst. Appl..

[10]  Yaguo Lei,et al.  Fault Diagnosis of Rotating Machinery Based on an Adaptive Ensemble Empirical Mode Decomposition , 2013, Sensors.

[11]  Wei Guo,et al.  A hybrid fault diagnosis method based on second generation wavelet de-noising and local mean decomposition for rotating machinery. , 2016, ISA transactions.

[12]  Cheng Junsheng,et al.  Research on the intrinsic mode function (IMF) criterion in EMD method , 2006 .

[13]  D. L. Donoho,et al.  Compressed sensing , 2006, IEEE Trans. Inf. Theory.

[14]  Gaigai Cai,et al.  A demodulating approach based on local mean decomposition and its applications in mechanical fault diagnosis , 2011 .

[15]  Minqiang Xu,et al.  A fault diagnosis scheme for rolling bearing based on local mean decomposition and improved multiscale fuzzy entropy , 2016 .

[16]  John F. Roddick,et al.  Sparse representation-based MRI super-resolution reconstruction , 2014 .

[17]  Fulei Chu,et al.  Application of support vector machine based on pattern spectrum entropy in fault diagnostics of rolling element bearings , 2011 .

[18]  Fei Wang,et al.  Natural gas pipeline small leakage feature extraction and recognition based on LMD envelope spectrum entropy and SVM , 2014 .

[19]  Yi Yang,et al.  A rotating machinery fault diagnosis method based on local mean decomposition , 2012, Digit. Signal Process..

[20]  Amir Mostafapour,et al.  Analysis of leakage in high pressure pipe using acoustic emission method , 2013 .

[21]  Ioan Silea,et al.  A survey on gas leak detection and localization techniques , 2012 .

[22]  Wieslaw J. Staszewski,et al.  Comparative study of instantaneous frequency based methods for leak detection in pipeline networks , 2012 .

[23]  Yaguo Lei,et al.  EEMD method and WNN for fault diagnosis of locomotive roller bearings , 2011, Expert Syst. Appl..

[24]  Allen Y. Yang,et al.  Robust Face Recognition via Sparse Representation , 2009, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[25]  Jiangtao Wen,et al.  Target location method for pipeline pre-warning system based on HHT and time difference of arrival , 2013 .

[26]  C. Chiou,et al.  Cardiac arrhythmia diagnosis method using linear discriminant analysis on ECG signals , 2009 .

[27]  Zhiqiang Sun,et al.  Neural networks approach for prediction of gas–liquid two-phase flow pattern based on frequency domain analysis of vortex flowmeter signals , 2007 .

[28]  L. Udpa,et al.  Adaptive Wavelets for Characterizing Magnetic Flux Leakage Signals from Pipeline inspection , 2006, INTERMAG 2006 - IEEE International Magnetics Conference.

[29]  Hongyu Li,et al.  Diagnosing planetary gear faults using the fuzzy entropy of LMD and ANFIS , 2016 .

[30]  Ying Zhang,et al.  Natural gas leak location with K–L divergence-based adaptive selection of Ensemble Local Mean Decomposition components and high-order ambiguity function , 2015 .