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Erschienen in: Electrical Engineering 6/2021

25.03.2021 | Original Paper

Detection of islanding and non-islanding fault disturbances in microgrid using LMD and deep stacked RVFLN based auto-encoder

verfasst von: Lipsa Priyadarshini, P. K. Dash

Erschienen in: Electrical Engineering | Ausgabe 6/2021

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Abstract

This paper presents a hybrid AC/DC microgrid consisting of multiple distributed energy sources, modeled in MATLAB/Simulink environment that undergoes islanding and non-islanding (symmetrical and unsymmetrical Faults) disturbances. These disturbances result in various changes in circuit parameters (voltage, current, and frequency) and this paper focuses only on disturbed current signals that are extracted from the solar and wind-connected buses. Further to extract rich and useful fault features from the extracted current signals, an adaptive detection technique, local mean decomposition (LMD) is proposed that results in series of product functions (PFs). Various feature extraction indices are used to extract the underlying features of the decomposed PFs that are processed through a deep-stacked random vector functional link network (RVFLN) based auto-encoder (AE) technique for classifying the faults. The effectiveness of the proposed RVFLN based AE technique is evidenced in terms of classification accuracy (CA) and confusion matrix (CM). The performance of the proposed technique has been evaluated through reliability analysis (MAPE, MAE, RMSE, and CM) by comparison with various artificial neural networks under both islanding and non-islanding mode of operation.

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Literatur
1.
Zurück zum Zitat Pereira BR, da Costa GRM, Contreras J, Mantovani JRS (2016) Optimal distributed generation and reactive power allocation in electrical distribution systems. IEEE Trans Sustain Energy 7(3):975–984CrossRef Pereira BR, da Costa GRM, Contreras J, Mantovani JRS (2016) Optimal distributed generation and reactive power allocation in electrical distribution systems. IEEE Trans Sustain Energy 7(3):975–984CrossRef
2.
Zurück zum Zitat Lotfi H, Khodaei A (2015) AC versus DC microgrid planning. IEEE Trans Smart Grid 8(1):296–304CrossRef Lotfi H, Khodaei A (2015) AC versus DC microgrid planning. IEEE Trans Smart Grid 8(1):296–304CrossRef
3.
Zurück zum Zitat Chakravorti T, Priyadarshini L, Dash PK, Sahu BN (2019) Islanding and non-islanding disturbance detection in microgrid using optimized modes decomposition based robust random vector functional link network. Engg Appl Artif Intell 85:122–136CrossRef Chakravorti T, Priyadarshini L, Dash PK, Sahu BN (2019) Islanding and non-islanding disturbance detection in microgrid using optimized modes decomposition based robust random vector functional link network. Engg Appl Artif Intell 85:122–136CrossRef
4.
Zurück zum Zitat Padhee M, Dash PK, Krishnanand KR, Rout PK (2012) A fast gauss-newton algorithm for islanding detection in distributed generation. IEEE Trans Smart Grid 3(3):1181–1191CrossRef Padhee M, Dash PK, Krishnanand KR, Rout PK (2012) A fast gauss-newton algorithm for islanding detection in distributed generation. IEEE Trans Smart Grid 3(3):1181–1191CrossRef
5.
Zurück zum Zitat Unal M, Onat M, Demetgul M, Kucuk H (2014) Fault diagnosis of rolling bearings using a genetic algorithm optimized neural network. Meas J Int Meas Confed 58:187–196CrossRef Unal M, Onat M, Demetgul M, Kucuk H (2014) Fault diagnosis of rolling bearings using a genetic algorithm optimized neural network. Meas J Int Meas Confed 58:187–196CrossRef
6.
Zurück zum Zitat Mishra S, Bhende CN, Panigrahi BK (2008) ‘Detection and classification of power quality disturbances using S-transform and probabilistic neural network. IEEE Trans Power Deliv 23(1):280–287CrossRef Mishra S, Bhende CN, Panigrahi BK (2008) ‘Detection and classification of power quality disturbances using S-transform and probabilistic neural network. IEEE Trans Power Deliv 23(1):280–287CrossRef
7.
Zurück zum Zitat Nikolaou NG, Antoniadis IA (2002) Rolling element bearing fault diagnosis using wavelet packets. NDT E Int 35(3):197–205CrossRef Nikolaou NG, Antoniadis IA (2002) Rolling element bearing fault diagnosis using wavelet packets. NDT E Int 35(3):197–205CrossRef
8.
Zurück zum Zitat Feng Z, Zhang D, Zuo MJ (2017) Adaptive mode decomposition methods and their applications in signal analysis for machinery fault diagnosis: a review with examples. IEEE Access 5:24301–24331CrossRef Feng Z, Zhang D, Zuo MJ (2017) Adaptive mode decomposition methods and their applications in signal analysis for machinery fault diagnosis: a review with examples. IEEE Access 5:24301–24331CrossRef
9.
Zurück zum Zitat Huang NE, Shen SSP (2014) Hilbert-Huang transform and its applications. WORLD SCIENTIFICCrossRef Huang NE, Shen SSP (2014) Hilbert-Huang transform and its applications. WORLD SCIENTIFICCrossRef
10.
Zurück zum Zitat He Z, Cai Y, Qian Q (2004) A study of wavelet entropy theory and its application in power system. In: International conference on intelligent mechatronics and automation, pp 847–851 He Z, Cai Y, Qian Q (2004) A study of wavelet entropy theory and its application in power system. In: International conference on intelligent mechatronics and automation, pp 847–851
11.
Zurück zum Zitat Jamali S, Farsa AR, Ghaffarzadeh N (2018) Identification of optimal features for fast and accurate classification of power quality disturbancess. Meas J Int Meas Confed 116:565–574CrossRef Jamali S, Farsa AR, Ghaffarzadeh N (2018) Identification of optimal features for fast and accurate classification of power quality disturbancess. Meas J Int Meas Confed 116:565–574CrossRef
12.
Zurück zum Zitat Smith JS (2005) The local mean decomposition and its application to EEG perception data. J R Soc Interface 2(5):443–454CrossRef Smith JS (2005) The local mean decomposition and its application to EEG perception data. J R Soc Interface 2(5):443–454CrossRef
13.
Zurück zum Zitat Wang C, Li H, Huang G, Ou J (2019) Early fault diagnosis for planetary gearbox based on adaptive parameter optimized VMD and singular kurtosis difference spectrum. IEEE Access 7:31501–31516CrossRef Wang C, Li H, Huang G, Ou J (2019) Early fault diagnosis for planetary gearbox based on adaptive parameter optimized VMD and singular kurtosis difference spectrum. IEEE Access 7:31501–31516CrossRef
14.
Zurück zum Zitat Cheng J, Yang Y, Yang Y (2012) A rotating machinery fault diagnosis method based on local mean decomposition. Digit Signal Process A Rev J 22(2):356–366MathSciNetCrossRef Cheng J, Yang Y, Yang Y (2012) A rotating machinery fault diagnosis method based on local mean decomposition. Digit Signal Process A Rev J 22(2):356–366MathSciNetCrossRef
15.
Zurück zum Zitat Tang B, Liu W, Song T (2010) Wind turbine fault diagnosis based on Morlet wavelet transformation and Wigner-Ville distribution. Renew Energy 35(12):2862–2866CrossRef Tang B, Liu W, Song T (2010) Wind turbine fault diagnosis based on Morlet wavelet transformation and Wigner-Ville distribution. Renew Energy 35(12):2862–2866CrossRef
16.
Zurück zum Zitat Buldyrev SV, Goldberger AL, Havlin S et al (1995) ‘Long-range correlation properties of coding and noncoding DNA sequences: GenBank analysis. Phys Rev E 51(5):5084–5091CrossRef Buldyrev SV, Goldberger AL, Havlin S et al (1995) ‘Long-range correlation properties of coding and noncoding DNA sequences: GenBank analysis. Phys Rev E 51(5):5084–5091CrossRef
17.
Zurück zum Zitat Kanjilal PP, Palit S, Saha G (1997) Fetal ECG extraction from single-channel maternal ECG using singular value decomposition. IEEE Trans Biomed Eng 44(1):51–59CrossRef Kanjilal PP, Palit S, Saha G (1997) Fetal ECG extraction from single-channel maternal ECG using singular value decomposition. IEEE Trans Biomed Eng 44(1):51–59CrossRef
18.
Zurück zum Zitat Zhang Y, Wu J, Cai Z, Du B, Yu PS (2019) An unsupervised parameter learning model for RVFL neural network. Neural Netw 112:85–97CrossRef Zhang Y, Wu J, Cai Z, Du B, Yu PS (2019) An unsupervised parameter learning model for RVFL neural network. Neural Netw 112:85–97CrossRef
19.
Zurück zum Zitat Zhang L, Suganthan PN (2015) Oblique decision tree ensemble via multisurface proximal support vector machine. IEEE Trans Cybern 45(10):2165–2176CrossRef Zhang L, Suganthan PN (2015) Oblique decision tree ensemble via multisurface proximal support vector machine. IEEE Trans Cybern 45(10):2165–2176CrossRef
20.
Zurück zum Zitat Dai W, Xue GR, Yang Q, Yu Y (2007) Transferring naive bayes classifiers for text classification. Assoc Adv Artif Intell 7:540–545 Dai W, Xue GR, Yang Q, Yu Y (2007) Transferring naive bayes classifiers for text classification. Assoc Adv Artif Intell 7:540–545
21.
Zurück zum Zitat Qiu X, Suganthan PN, Amaratunga GAJ (2018) Ensemble incremental learning Random Vector Functional Link network for short-term electric load forecasting. Knowl-Based Syst 145:1–14CrossRef Qiu X, Suganthan PN, Amaratunga GAJ (2018) Ensemble incremental learning Random Vector Functional Link network for short-term electric load forecasting. Knowl-Based Syst 145:1–14CrossRef
22.
Zurück zum Zitat Zhang L, Suganthan PN (2017) Visual tracking with convolutional random vector functional link network. IEEE Trans Cybern 47(10):3243–3253CrossRef Zhang L, Suganthan PN (2017) Visual tracking with convolutional random vector functional link network. IEEE Trans Cybern 47(10):3243–3253CrossRef
23.
Zurück zum Zitat Za’in C, Pratama M, Prasad M, Puthal D, Lim CP, Seera M (2018) Motor fault detection and diagnosis based on a meta-cognitive random vector functional link network. In: Fault diagnosis of hybrid dynamic and complex systems. Springer International Publishing, pp 15–44 Za’in C, Pratama M, Prasad M, Puthal D, Lim CP, Seera M (2018) Motor fault detection and diagnosis based on a meta-cognitive random vector functional link network. In: Fault diagnosis of hybrid dynamic and complex systems. Springer International Publishing, pp 15–44
24.
25.
Zurück zum Zitat Dash Y, Mishra SK, Sahany S, Panigrahi BK (2018) Indian summer monsoon rainfall prediction: a comparison of iterative and non-iterative approaches. Appl Soft Comput J 70:1122–1134CrossRef Dash Y, Mishra SK, Sahany S, Panigrahi BK (2018) Indian summer monsoon rainfall prediction: a comparison of iterative and non-iterative approaches. Appl Soft Comput J 70:1122–1134CrossRef
26.
Zurück zum Zitat Wong CM, Vong CM, Wong PK, Cao J (2018) Kernel-based multilayer extreme learning machines for representation learning. IEEE Trans Neural Networks Learn Syst 29(3):757–762MathSciNetCrossRef Wong CM, Vong CM, Wong PK, Cao J (2018) Kernel-based multilayer extreme learning machines for representation learning. IEEE Trans Neural Networks Learn Syst 29(3):757–762MathSciNetCrossRef
27.
Zurück zum Zitat Standard, UL1741: inverters, converters, controllers and interconnection system equipment for use with distributed energy resources, 2010 Standard, UL1741: inverters, converters, controllers and interconnection system equipment for use with distributed energy resources, 2010
28.
Zurück zum Zitat Srivastava N, Salakhutdinov R (2012) Multimodal learning with deep Boltzmann machines. NIPS 1:2MATH Srivastava N, Salakhutdinov R (2012) Multimodal learning with deep Boltzmann machines. NIPS 1:2MATH
29.
Zurück zum Zitat Shao H, Jiang H, Zhang H, Duan W, Liang T, Wu S (2018) Rolling bearing fault feature learning using improved convolutional deep belief network with compressed sensing. Mech Syst Signal Process 100:743–765CrossRef Shao H, Jiang H, Zhang H, Duan W, Liang T, Wu S (2018) Rolling bearing fault feature learning using improved convolutional deep belief network with compressed sensing. Mech Syst Signal Process 100:743–765CrossRef
30.
Zurück zum Zitat Tong C, Li J, Lang C, Kong F, Niu J, Rodrigues JJPC (2018) An efficient deep model for day-ahead electricity load forecasting with stacked denoising auto-encoders. J Parallel Distrib Comput 117:267–273CrossRef Tong C, Li J, Lang C, Kong F, Niu J, Rodrigues JJPC (2018) An efficient deep model for day-ahead electricity load forecasting with stacked denoising auto-encoders. J Parallel Distrib Comput 117:267–273CrossRef
31.
Zurück zum Zitat Huang X, Hu T, Ye C, Xu G, Wang X, Chen L (2019) Electric load data compression and classification based on deep stacked auto-encoders. Energies 12(4):653CrossRef Huang X, Hu T, Ye C, Xu G, Wang X, Chen L (2019) Electric load data compression and classification based on deep stacked auto-encoders. Energies 12(4):653CrossRef
32.
Zurück zum Zitat Katuwal R, Suganthan PN (2019) ‘Stacked autoencoder based deep random vector functional link neural network for classification. Appl Soft Comput J 85:105854CrossRef Katuwal R, Suganthan PN (2019) ‘Stacked autoencoder based deep random vector functional link neural network for classification. Appl Soft Comput J 85:105854CrossRef
33.
Zurück zum Zitat Prasad ENVDV, Patnaik RK (2018) DC side fault analysis in an off shore wind farm based high voltage DC transmission link. In: International conference on information, communication, engineering and technology, pp 1–5 Prasad ENVDV, Patnaik RK (2018) DC side fault analysis in an off shore wind farm based high voltage DC transmission link. In: International conference on information, communication, engineering and technology, pp 1–5
Metadaten
Titel
Detection of islanding and non-islanding fault disturbances in microgrid using LMD and deep stacked RVFLN based auto-encoder
verfasst von
Lipsa Priyadarshini
P. K. Dash
Publikationsdatum
25.03.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Electrical Engineering / Ausgabe 6/2021
Print ISSN: 0948-7921
Elektronische ISSN: 1432-0487
DOI
https://doi.org/10.1007/s00202-021-01261-1

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