Artificial intelligence for resilience enhancement of power distribution systems

被引:2
作者
Hosseini M.M. [1 ]
Parvania M. [1 ]
机构
[1] Department of Electrical and Computer Engineering, University of Utah, Salt Lake City, 84112, UT
关键词
Artificial intelligence; Intelligent operation; Power distribution systems; Resilience enhancement;
D O I
10.1016/j.tej.2020.106880
中图分类号
学科分类号
摘要
The threat of high impact low probability (HILP) events on power distribution system is substantial but quite unpredictable. Enhancing the resilience of power distribution grids against such events requires solving combinatorial planning and operational problems in stochastic spaces, as well as classifying system conditions based on high-dimensional input data. Since traditional mathematical solutions struggle with both uncertainty and the curse of dimensionality, data-driven techniques based on artificial intelligence (AI) are gaining momentum for solving those problems. This paper reviews AI capabilities for decision making in uncertain and high-dimensional spaces in general, and their particular application in resilient enhancement problems such as damage detection and estimation, cyber-physical anomaly detection, stochastic operation, and cyber security enhancement. Efficient data structures and AI approaches are suggested for each problem, which depend on the type of input signals, search-based or game-based structure of the problem, as well as the uncertainty sources involved. In particular, potential applications of supervised and unsupervised deep learning combined with Monte Carlo Tree Search and ε-greedy search is explored to find near optimal operational decisions that help enhance the resilience of power distribution systems. © 2020 Elsevier Inc.
引用
收藏
相关论文
共 19 条
[1]  
Anon, Power Outage Annual Report: Blackout Tracker, (2017)
[2]  
Cordova J., Soto C., Gilanifar M., Zhou Y., Srivastava A., Arghandeh R., Shape preserving incremental learning for power systems fault detection, IEEE Control. Syst. Lett., 3, 1, pp. 85-90, (2018)
[3]  
Dhillon A., Verma G.K., Convolutional neural network: a review of models, methodologies and applications to object detection, Prog. Artif. Intell., 9, 2, pp. 85-112, (2020)
[4]  
Gholami A., Shekari T., Amirioun M.H., Aminifar F., Amini M.H., Sargolzaei A., Toward a consensus on the definition and taxonomy of power system resilience, IEEE Access, 6, pp. 32035-32053, (2018)
[5]  
Gomes D.P.S., Ozansoy C., Ulhaq A., High-sensitivity vegetation high-impedance fault detection based on signal's high-frequency contents, IEEE Trans. Power Deliv., 33, 3, pp. 1398-1407v, (2018)
[6]  
He K., Zhang X., Ren S., Sun J., Delving deep into rectifiers: surpassing human-level performance on imagenet classification, IEEE International Conference on Computer Vision, (2015)
[7]  
Hosseini M.M., Parvania M., Quantifying impacts of automation on resilience of distribution systems, IET Smart Grid, 3, 2, pp. 144-152, (2020)
[8]  
Hosseini M.M., Umunnakwe A., Parvania M., Automated switching operation for resilience enhancement of distribution systems, 2019 IEEE Power Energy Society General Meeting (PESGM), Atlanta, (2019)
[9]  
Hosseini M.M., Umunnakwe A., Parvania M., Tasdizen T., Intelligent damage classification and estimation in power distribution poles using unmanned aerial vehicles and convolutional neural networks, IEEE Trans. Smart Grid, 11, July 4, pp. 3325-3333, (2020)
[10]  
Khan M.M.S., Palomino A., Brugman J., Giraldo J., Kasera S.K., Parvania M., The cyberphysical power system resilience testbed: architecture and applications, Computer, 53, 5, pp. 44-54, (2020)