Novel Method Based on Variational Mode Decomposition and a Random Discriminative Projection Extreme Learning Machine for Multiple Power Quality Disturbance Recognition

Power quality events are usually associated with more than one disturbance and their recognition is typically based on multilabel learning. In this study, we propose a new method for recognizing multiple power quality disturbances (MPQDs) based on variational mode decomposition (VMD) and a random discriminative projection extreme learning machine for multilabel learning (RDPEML). First, VMD is employed to decompose the MPQDs into several intrinsic mode functions and the standard energy differences of each mode are extracted as features that form the input vectors of the classifier. Second, a novel multilabel classifier called RDPEML is constructed by combining a random discriminative projection multiclass extreme learning machine (ELM) and a thresholding learning method-based kernel ELM. In order to obtain better classification performance, a tenfold cross-validation embedded particle swarm optimization approach is utilized to search for the optimal values of the structural parameters. Finally, a test study was conducted using MATLAB synthetic signals and real signals sampled from a three-phase standard source under different noise conditions. Compared with the several recent state-of-the-art multilabel learning algorithms, RDPEML achieved better classification performance with superior computational speed.

[1]  Shifei Ding,et al.  A Novel Extreme Learning Machine Based on Hybrid Kernel Function , 2013, J. Comput..

[2]  Zhi-Hua Zhou,et al.  ML-KNN: A lazy learning approach to multi-label learning , 2007, Pattern Recognit..

[3]  Francisco Jurado,et al.  Comparison between discrete STFT and wavelets for the analysis of power quality events , 2002 .

[4]  Juan-Carlos Montaño,et al.  Disturbance Ratio for Optimal Multi-Event Classification in Power Distribution Networks , 2016, IEEE Transactions on Industrial Electronics.

[5]  Vigna Kumaran Ramachandaramurthy,et al.  Numerical model framework of power quality events , 2010 .

[6]  Jason Weston,et al.  A kernel method for multi-labelled classification , 2001, NIPS.

[7]  Dominique Zosso,et al.  Variational Mode Decomposition , 2014, IEEE Transactions on Signal Processing.

[8]  Zhigang Liu,et al.  A Classification Method for Complex Power Quality Disturbances Using EEMD and Rank Wavelet SVM , 2015, IEEE Transactions on Smart Grid.

[9]  Chee Kheong Siew,et al.  Extreme learning machine: Theory and applications , 2006, Neurocomputing.

[10]  Trapti Jain,et al.  Tunable-Q Wavelet Transform and Dual Multiclass SVM for Online Automatic Detection of Power Quality Disturbances , 2018, IEEE Transactions on Smart Grid.

[11]  José Seixas,et al.  A method based on independent component analysis for single and multiple power quality disturbance classification , 2015 .

[12]  Arun Kumar Puliyadi Kubendran,et al.  Detection and classification of complex power quality disturbances using S‐transform amplitude matrix–based decision tree for different noise levels , 2017 .

[13]  Pradipta Kishore Dash,et al.  Measurement and Classification of Simultaneous Power Signal Patterns With an S-Transform Variant and Fuzzy Decision Tree , 2013, IEEE Transactions on Industrial Informatics.

[14]  Wen Gao,et al.  Classifiability-Based Discriminatory Projection Pursuit , 2011, IEEE Transactions on Neural Networks.

[15]  Jianmin Li,et al.  Detection and Classification of Power Quality Disturbances Using Double Resolution S-Transform and DAG-SVMs , 2016, IEEE Transactions on Instrumentation and Measurement.

[16]  Lu Weiguo Application of Multi-label Classification Method to Catagorization of Multiple Power Quality Disturbances , 2011 .

[17]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[18]  Hongming Zhou,et al.  Extreme Learning Machine for Regression and Multiclass Classification , 2012, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[19]  Aslam P. Memon,et al.  A new optimal feature selection algorithm for classification of power quality disturbances using discrete wavelet transform and probabilistic neural network , 2017 .

[20]  Heman Shamachurn Assessing the performance of a modified S-transform with probabilistic neural network, support vector machine and nearest neighbour classifiers for single and multiple power quality disturbances identification , 2017, Neural Computing and Applications.

[21]  Yoram Singer,et al.  BoosTexter: A Boosting-based System for Text Categorization , 2000, Machine Learning.

[22]  M. Sabarimalai Manikandan,et al.  Detection and Classification of Power Quality Disturbances Using Sparse Signal Decomposition on Hybrid Dictionaries , 2015, IEEE Transactions on Instrumentation and Measurement.

[23]  Pan Li,et al.  Modified S transform and ELM algorithms and their applications in power quality analysis , 2016, Neurocomputing.

[24]  Ming Zhang,et al.  A Real-Time Power Quality Disturbances Classification Using Hybrid Method Based on S-Transform and Dynamics , 2013, IEEE Transactions on Instrumentation and Measurement.

[25]  Dacheng Tao,et al.  Privileged Multi-label Learning , 2017, IJCAI.

[26]  Víctor Robles,et al.  Feature selection for multi-label naive Bayes classification , 2009, Inf. Sci..

[27]  Rene de Jesus Romero-Troncoso,et al.  Novel Downsampling Empirical Mode Decomposition Approach for Power Quality Analysis , 2016, IEEE Transactions on Industrial Electronics.

[28]  Debangshu Dey,et al.  Cross-Spectrum Analysis-Based Scheme for Multiple Power Quality Disturbance Sensing Device , 2015, IEEE Sensors Journal.

[29]  Haigang Zhang,et al.  Extreme Learning Machine for Multi-label Classification , 2018, ELM.

[30]  Pradipta Kishore Dash,et al.  Detection and characterization of multiple power quality disturbances with a fast S-transform and decision tree based classifier , 2013, Digit. Signal Process..

[31]  O. Ozgonenel,et al.  A new classification for power quality events in distribution systems , 2013 .

[32]  S. R. Samantaray,et al.  Variational Mode Decomposition and Decision Tree Based Detection and Classification of Power Quality Disturbances in Grid-Connected Distributed Generation System , 2018, IEEE Transactions on Smart Grid.

[33]  Weiwei Liu,et al.  Compact Multi-Label Learning , 2018, AAAI.

[34]  Utkarsh Singh,et al.  Application of fractional Fourier transform for classification of power quality disturbances , 2017 .

[35]  Arturo Garcia-Perez,et al.  Detection and Classification of Single and Combined Power Quality Disturbances Using Neural Networks , 2014, IEEE Transactions on Industrial Electronics.

[36]  Zongben Xu,et al.  Universal Approximation of Extreme Learning Machine With Adaptive Growth of Hidden Nodes , 2012, IEEE Transactions on Neural Networks and Learning Systems.