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Recent Advances in Computer Science and Communications

Editor-in-Chief

ISSN (Print): 2666-2558
ISSN (Online): 2666-2566

General Research Article

Enhancing Resiliency Feature in Smart Grids through a Deep Learning Based Prediction Model

Author(s): Abderrazak Khediri*, Mohamed Ridda Laouar and Sean B. Eom

Volume 13, Issue 3, 2020

Page: [508 - 518] Pages: 11

DOI: 10.2174/2213275912666190809113945

Price: $65

Abstract

Background: Enhancing the resiliency of electric power grids is becoming a crucial issue due to the outages that have recently occurred. One solution could be the prediction of imminent failure that is engendered by line contingency or grid disturbances. Therefore, a number of researchers have initiated investigations to generate techniques for predicting outages. However, extended blackouts can still occur due to the frailty of distribution power grids.

Objective: This paper implements a proactive prediction model based on deep-belief networks to predict the imminent outages using previous historical blackouts, trigger alarms, and suggest solutions for blackouts. These actions can prevent outages, stop cascading failures and diminish the resulting economic losses.

Methods: The proposed model is divided into three phases: A, B and C. The first phase (A) represents the initial segment that collects and extracts data and trains the deep belief network using the collected data. Phase B defines the Power outage threshold and determines whether the grid is in a normal state. Phase C involves detecting potential unsafe events, triggering alarms and proposing emergency action plans for restoration.

Results: Different machine learning and deep learning algorithms are used in our experiments to validate our proposition, such as Random forest, Bayesian nets and others. Deep belief Networks can achieve 97.30% accuracy and 97.06% precision.

Conclusion: The obtained findings demonstrate that the proposed model would be convenient for blackouts’ prediction and that the deep-belief network represents a powerful deep learning tool that can offer plausible results.

Keywords: Smart grid, power grid, prediction, deep learning, deep-belief networks, power outage, blackout.

Graphical Abstract
[1]
S.M. Kaplan, "Electric power transmission: Background and policy issues", Library of Congress, Congressional Research Service, 2009.
[2]
L. Yutian, F. Rui, V.J.J.M.P.S. Terzija, and C. , "Energy, power system restoration: A literature review from 2006 to 2016", J. Mod. Power Syst. Clean Energy, vol. 4, no. 3, pp. 332-341, 2016.
[http://dx.doi.org/10.1007/s40565-016-0219-2]
[3]
T. Boukra, A. Lebaroud, and G.J.I.T.I.E. Clerc, "Statistical and neural-network approaches for the classification of induction machine faults using the ambiguity plane representation", IEEE Trans. Ind. Electron., vol. 60, no. 9, pp. 4034-4042, 2012.
[http://dx.doi.org/10.1109/TIE.2012.2216242]
[4]
V.N. Ghate, and S.V.J.I.T.I.E. Dudul, "Cascade neural-network-based fault classifier for three-phase induction motor", IEEE Trans. Ind. Electron., vol. 58, no. Issue. 5, pp. 1555-1563, 2010.
[http://dx.doi.org/10.1109/TIE.2010.2053337]
[5]
S. Gupta, R. Kambli, S. Wagh, and F.J.I.T.I.E. Kazi, "Support-vector-machine-based proactive cascade prediction in smart grid using probabilistic framework", , vol. 62, no. 4, pp. 2478-2486, 2014.
[http://dx.doi.org/10.1109/TIE.2014.2361493]
[6]
S. Gupta, F. Kazi, S. Wagh, N.J.I.J.E.P. Singh, and E. , "Systems, Analysis and prediction of vulnerability in smart power transmission system: A geometrical approach", Int. J. Elec. Power Sys., vol. 94, pp. 77-87, 2018.
[7]
A. Khediri, and M.R. Laouar, "Deep-Belief Network Based Prediction Model for Power Outage in Smart Grid", Proceedings of the 4th ACM International Conference of Computing for Engineering and Sciences, 2018p. 4
[http://dx.doi.org/10.1145/3213187.3287611]
[8]
A. Jaech, B. Zhang, M. Ostendorf, and D.S.J.I.T.P.S. Kirschen, "Real-time prediction of the duration of distribution system outages", IEEE Trans. Power Syst., vol. 34, no. 1, pp. 773-781, 2019.
[9]
J.G. Ha, "Deep convolutional neural network for classifying Fusarium wilt of radish from unmanned aerial vehicles", J. Appl. Remote Sens., vol. 11, no. 4, p. 042621, December 2017.
[http://dx.doi.org/10.1117/1.JRS.11.042621]
[10]
C. Rudin, "Machine learning for the New York City power grid", IEEE Trans. Pattern Anal. Mach. Intell., vol. 34, no. 2, pp. 328-345, May 2011.
[11]
C.P. Lee, and S.J. Wright, "Using neural networks to detect line outages from PMU data", arXiv preprint arXiv:1710.05916, 2017.
[12]
S. Zarrabian, R. Belkacemi, and A.A. Babalola, "Intelligent mitigation of blackout in real-time microgrids: Neural network approach", IEEE Power and Energy Conference at Illinois (PECI), p. 1-6, February 2016.
[http://dx.doi.org/10.1109/PECI.2016.7459213]
[13]
R. Agrawal, and D. Thukaram, "Identification of fault location in power distribution system with distributed generation using support vector machines", IEEE PES Innovative Smart Grid Technologies Conference (ISGT), pp. 1-6, February 2013.
[http://dx.doi.org/10.1109/ISGT.2013.6497853]
[14]
Y. Zhang, "Mitigating blackouts via smart relays: A machine learning approach", Proc. IEEE, vol. 99, no. 1, pp. 94-118, 2010.
[15]
R. Eskandarpour, and A.J.I.T.P.S. Khodaei, "Leveraging accuracy-uncertainty tradeoff in SVM to achieve highly accurate outage predictions", IEEE Trans. Power Syst., vol. 33, no. 1, pp. 1139-1141, 2017.
[16]
A. Ahmed, "Multiple power line outage detection in smart grids: Probabilistic Bayesian approach", IEEE Access, vol. 6, pp. 10650-10661, June 2017.
[17]
M. Yue, T. Toto, M.P. Jensen, S.E. Giangrande, and R.J.I.T.S.G. Lofaro, "A bayesian approach-based outage prediction in electric utility systems using radar measurement data", IEEE Trans. Smart Grid, vol. 9, no. 6, pp. 6149-6159, 2018.
[http://dx.doi.org/10.1109/TSG.2017.2704288]
[18]
M.R. Salimian, and M.R.J.I.T.S.G. Aghamohammadi, "A three stages decision tree-based intelligent blackout predictor for power systems using brittleness indices", IEEE Trans. Smart Grid, vol. 9, no. 5, pp. 5123-5131, 2017.
[19]
M. Chertkov, F. Pan, and M.G.J.I.T.S.G. Stepanov, "Predicting failures in power grids: The case of static overloads", IEEE Trans. Smart Grid, vol. 2, no. 1, pp. 162-172, 2010.
[20]
X. Dong, H. Lin, R. Tan, R.K. Iyer, and Z. Kalbarczyk, "Software defined networking for smart grid resilience: Opportunities and challenges", Proceedings of the 1st ACM Workshop on Cyber-Physical System Security, 2015 , pp. 61-68, .
[http://dx.doi.org/10.1145/2732198.2732203]
[21]
K. Chen, J. Hu, and J.J.I.T.S.G. He, "Detection and classification of transmission line faults based on unsupervised feature learning and convolutional sparse autoencoder", IEEE Trans. Smart Grid, vol. 9, no. 3, pp. 1748-1758, 2016.
[http://dx.doi.org/10.1109/TSG.2016.2598881]
[22]
S. Gupta, S. Waghmare, F. Kazi, S. Wagh, and N. Singh, "Blackout risk analysis in smart grid WAMPAC system using KL divergence approach", IEEE 6th International Conference on Power Systems (ICPS), 2016pp. 1-6
[http://dx.doi.org/10.1109/ICPES.2016.7584069]
[23]
M. Rahnamay-Naeini, Z. Wang, A. Mammoli, and M.M. Hayat, "A probabilistic model for the dynamics of cascading failures and blackouts in power grids", IEEE Power and Energy Society General Meeting IEEE, 2012 pp. 1-8
[24]
S. Gupta, F. Kazi, S. Wagh, and N. Singh, "Probabilistic framework for evaluation of smart grid resilience of cascade failure", IEEE Innovative Smart Grid Technologies-Asia (ISGT ASIA), 2014 pp. 255-260
[http://dx.doi.org/10.1109/ISGT-Asia.2014.6873799]
[25]
C. Chen, J. Wang, and D.J.P.I. Ton, "Modernizing distribution system restoration to achieve grid resiliency against extreme weather events: An integrated solution", Proceedings of the IEEE, vol. 105, no. 7, pp. 1267-1288, 2017.
[http://dx.doi.org/10.1109/JPROC.2017.2684780]
[26]
R. Belkacemi, A. Bababola, S. Zarrabian, and R. Craven, "Multi-agent system algorithm for preventing cascading failures in smart grid systems", 2014 North American Power Symposium (NAPS), 2014pp. 1-6
[http://dx.doi.org/10.1109/NAPS.2014.6965442]
[27]
A.A. Babalola, R. Belkacemi, and S.J.I.T.S.G. Zarrabian, "Real-time cascading failures prevention for multiple contingencies in smart grids through a multi-agent system", IEEE Trans. Smart Grid, vol. 9, no. 1, pp. 373-385, 2016.
[28]
A. Khediri, and M.R. Laouar, "Prediction of breakdowns in smart grids: a novel approach", Proceedings of the International Conference on Computing for Engineering and Sciences, 2017 pp. 82-85
[http://dx.doi.org/10.1145/3129186.3129202]
[29]
A. Khediri, and M.R. Laouar, "Intelligent decision support system for electric power restoration", Proceedings of the 7th International Conference on Software Engineering and New Technologies, 2018, p. 17, .
[30]
G.E. Hinton, "A practical guide to training restricted Boltzmann machines"Neural networks: Tricks of the trade., Springer, 2012, pp. 599-619.
[http://dx.doi.org/10.1007/978-3-642-35289-8_32]
[31]
G.E. Hinton, S. Osindero, and Y-W.J.N.C. Teh, "A fast learning algorithm for deep belief nets", Neural Comput., vol. 18, no. 7, pp. 1527-1554, 2006.
[http://dx.doi.org/10.1162/neco.2006.18.7.1527]
[32]
D.D. Lewis, "Naive (Bayes) at forty: The independence assumption in information retrieval", European conference on machine learning, 1998 pp. 4-15
[http://dx.doi.org/10.1007/BFb0026666]
[33]
A.I. Sarwat, M. Amini, A. Domijan, A. Damnjanovic, and F. Kaleem, "Weather-based interruption prediction in the smart grid utilizing chronological data", J. Mod. Power Syst. Clean Energy, vol. 4, no. 2, pp. 1-8, 2016.
[http://dx.doi.org/10.1007/s40565-015-0120-4]
[34]
R. Eskandarpour, and A.J.I.T.P.S. Khodaei, "Machine learning based power grid outage prediction in response to extreme events", IEEE Tran. Power Syst., vol. 32, no. 4, pp. 3315-3316, 2016.
[35]
R. Eskandarpour, A. Khodaei, and A. Arab, "Improving power grid resilience through predictive outage estimation", North American Power Symposium (NAPS), 2017 pp. 1-5
[http://dx.doi.org/10.1109/NAPS.2017.8107262]

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