Research on electricity theft detection based on AdaBoost ensemble learning

被引:0
作者
You W. [1 ]
Shen K. [1 ]
Yang N. [1 ]
Li Q. [1 ]
Wu Y. [2 ]
Li H. [3 ]
机构
[1] School of Electrical and New Energy, China Three Gorges University, Yichang
[2] Xiaogan Power Supply Company, State Grid Hubei Electric Power Company, Xiaogan
[3] Yichang Power Supply Company, State Grid Hubei Electric Power Company, Yichang
来源
Dianli Xitong Baohu yu Kongzhi/Power System Protection and Control | 2020年 / 48卷 / 19期
基金
中国国家自然科学基金;
关键词
AdaBoost; Decision tree; Electricity theft detection; Ensemble learning; Irish data set;
D O I
10.19783/j.cnki.pspc.191409
中图分类号
学科分类号
摘要
There is a deficiency in the single classification method in traditional electricity thief detection. Thus a method based on AdaBoost ensemble learning is proposed. First, the training set is used to compare the decision tree, error backpropagation network, support vector machine and k-nearest neighbors, and the decision tree is adopted as the weak learner of the AdaBoost algorithm. Secondly, the learning rate and the number of weak learners of AdaBoost ensemble learning are determined by plotting the error rate curves under different learning rates. Finally, the proposed method is tested and evaluated on the Irish smart meter dataset. It is compared with the single strong learning algorithms, such as decision tree, error backpropagation network, support vector machine, k-nearest neighbors. The results show that electricity theft detection based on AdaBoost ensemble learning is the best among the indicators of accuracy, true positive rate and false positive rate. The sensitivity analysis shows the validity of the electricity theft detection method based on AdaBoost ensemble learning. © 2020, Power System Protection and Control Press. All right reserved.
引用
收藏
页码:151 / 159
页数:8
相关论文
共 26 条
[1]  
HU Tianyu, GUO Qinglai, SUN Hongbin, Nontechnical loss detection based on stacked uncorrelating autoencoder and support vector machine, Automation of Electric Power Systems, 43, 1, pp. 119-127, (2019)
[2]  
CHEN Qixin, ZHENG Kedi, KANG Chongqing, Et al., Detection methods of abnormal electricity consumption behaviors: review and prospect, Automation of Electric Power Systems, 42, 17, pp. 189-199, (2018)
[3]  
JOKAR P, ARIANPOO N, LEUNG V C M., Electricity theft detection in AMI using customers' consumption patterns, IEEE Transactions on Smart Grid, 7, 1, pp. 216-226, (2016)
[4]  
HE Y, MENDIS G J, WEI J., Real-time detection of false data injection attacks in smart grid: a deep learning-based intelligent mechanism, IEEETransactions on Smart Grid, 8, 5, pp. 2505-2516, (2017)
[5]  
HAN Wenlin, XIAO Yan, NFD: non-technical loss fraud detection in smart grid, Computers & Security, 6, 5, pp. 187-201, (2017)
[6]  
WANG Xin, TIAN Meng, ZHAO Yanfeng, Et al., A kind of electricity theft based on state estimation and countermeasure, Power System Protection and Control, 44, 23, pp. 141-146, (2016)
[7]  
AMIN S, SCHWARTZ G A, CARDENAS A A., Game- theoretic models of electricity theft detection in smart utility networks: providing new capabilities with advanced metering infrastructure, IEEE Control Systems, 35, 1, pp. 66-81, (2015)
[8]  
MYERSON R B., Game theory: analysis of conflict, (1991)
[9]  
WU Haoke, LEI Xia, HUANG Tao, Et al., A game- theoretic model for retail companies under the spring_rebate mechanism, Power System Protection and Control, 47, 12, pp. 84-92, (2019)
[10]  
WANG Qingning, ZHANG Donghui, SUN Xiangde, Et al., Research and application of electricity anti-stealing system based on GA-BP neural network, Electrical Measurement & Instrumentation, 55, 11, pp. 35-40, (2018)