Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network

This paper proposes a novel, two-stage and hybrid approach based on variational mode decomposition (VMD) and the deep stochastic configuration network (DSCN) for power quality (PQ) disturbances detection and classification in power systems. Firstly, a VMD technique is applied to discriminate between...

Full description

Bibliographic Details
Main Authors: Kewei Cai, Belema Prince Alalibo, Wenping Cao, Zheng Liu, Zhiqiang Wang, Guofeng Li
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/11/11/3040
id doaj-a11dc7bfc64f448a84ed7e1b91514250
record_format Article
spelling doaj-a11dc7bfc64f448a84ed7e1b915142502020-11-24T21:02:16ZengMDPI AGEnergies1996-10732018-11-011111304010.3390/en11113040en11113040Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration NetworkKewei Cai0Belema Prince Alalibo1Wenping Cao2Zheng Liu3Zhiqiang Wang4Guofeng Li5College of Information Engineering, Dalian Ocean University, Dalian 116023, ChinaSchool of Engineering and Applied Science, Aston University, Birmingham, B4 7ET, UKSchool of Engineering and Applied Science, Aston University, Birmingham, B4 7ET, UKSchool of Electrical Engineering, Dalian University of Technology, Dalian 116023, ChinaSchool of Electrical Engineering, Dalian University of Technology, Dalian 116023, ChinaSchool of Electrical Engineering, Dalian University of Technology, Dalian 116023, ChinaThis paper proposes a novel, two-stage and hybrid approach based on variational mode decomposition (VMD) and the deep stochastic configuration network (DSCN) for power quality (PQ) disturbances detection and classification in power systems. Firstly, a VMD technique is applied to discriminate between stationary and non-stationary PQ events. Secondly, the key parameters of VMD are determined as per different types of disturbance. Three statistical features (mean, variance, and kurtosis) are extracted from the instantaneous amplitude (IA) of the decomposed modes. The DSCN model is then developed to classify PQ disturbances based on these features. The proposed approach is validated by analytical results and actual measurements. Moreover, it is also compared with existing methods including wavelet network, fuzzy and S-transform (ST), adaptive linear neuron (ADALINE) and feedforward neural network (FFNN). Test results have proved that the proposed method is capable of providing necessary and accurate information for PQ disturbances in order to plan PQ remedy actions accordingly.https://www.mdpi.com/1996-1073/11/11/3040deep stochastic configuration network (DSCN)harmonics analysis, power quality (PQ) disturbancepower systemvariational mode decomposition (VMD)
collection DOAJ
language English
format Article
sources DOAJ
author Kewei Cai
Belema Prince Alalibo
Wenping Cao
Zheng Liu
Zhiqiang Wang
Guofeng Li
spellingShingle Kewei Cai
Belema Prince Alalibo
Wenping Cao
Zheng Liu
Zhiqiang Wang
Guofeng Li
Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
Energies
deep stochastic configuration network (DSCN)
harmonics analysis, power quality (PQ) disturbance
power system
variational mode decomposition (VMD)
author_facet Kewei Cai
Belema Prince Alalibo
Wenping Cao
Zheng Liu
Zhiqiang Wang
Guofeng Li
author_sort Kewei Cai
title Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
title_short Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
title_full Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
title_fullStr Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
title_full_unstemmed Hybrid Approach for Detecting and Classifying Power Quality Disturbances Based on the Variational Mode Decomposition and Deep Stochastic Configuration Network
title_sort hybrid approach for detecting and classifying power quality disturbances based on the variational mode decomposition and deep stochastic configuration network
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2018-11-01
description This paper proposes a novel, two-stage and hybrid approach based on variational mode decomposition (VMD) and the deep stochastic configuration network (DSCN) for power quality (PQ) disturbances detection and classification in power systems. Firstly, a VMD technique is applied to discriminate between stationary and non-stationary PQ events. Secondly, the key parameters of VMD are determined as per different types of disturbance. Three statistical features (mean, variance, and kurtosis) are extracted from the instantaneous amplitude (IA) of the decomposed modes. The DSCN model is then developed to classify PQ disturbances based on these features. The proposed approach is validated by analytical results and actual measurements. Moreover, it is also compared with existing methods including wavelet network, fuzzy and S-transform (ST), adaptive linear neuron (ADALINE) and feedforward neural network (FFNN). Test results have proved that the proposed method is capable of providing necessary and accurate information for PQ disturbances in order to plan PQ remedy actions accordingly.
topic deep stochastic configuration network (DSCN)
harmonics analysis, power quality (PQ) disturbance
power system
variational mode decomposition (VMD)
url https://www.mdpi.com/1996-1073/11/11/3040
work_keys_str_mv AT keweicai hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
AT belemaprincealalibo hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
AT wenpingcao hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
AT zhengliu hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
AT zhiqiangwang hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
AT guofengli hybridapproachfordetectingandclassifyingpowerqualitydisturbancesbasedonthevariationalmodedecompositionanddeepstochasticconfigurationnetwork
_version_ 1716776013562642432