Anomaly Detection in Smart Grids using Machine Learning

被引:13
作者
Shabad, Prem Kumar Reddy [1 ]
Alrashide, Abdulmueen [1 ]
Mohammed, Osama [1 ]
机构
[1] Florida Int Univ, Dept Elect & Comp Engn, Energy Syst Res Lab, Miami, FL 33174 USA
来源
IECON 2021 - 47TH ANNUAL CONFERENCE OF THE IEEE INDUSTRIAL ELECTRONICS SOCIETY | 2021年
关键词
Sensor Data; Internet of Things; Power Systems; Machine Learning; Deep Learning; Anomaly detection; Smart Grid; PLC; SCADA;
D O I
10.1109/IECON48115.2021.9589851
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Smart grid data can be analyzed for detecting abnormalities in many different areas such as cybersecurity, fault detection, electricity theft, etc. There is a strong case for the use of machine learning in anomaly detection. The raw grid data requires feature extraction. Anomalies can be defined as instances or changes in the smart grid data that are out of character concerning the average trend. A typical grid architecture results can vary significantly, depending on trends or changes in power, voltage, current, or consumption. This paper develops an anomaly detection model for a real-world smart grid system implemented on a hardware-based testbed. By detecting abnormal activities, one can improve the system behavior in data communication flow. It will also identify if there are parameter changes that indicate the presence of cyber-attacks. Our proposed anomaly detection model is build based on Isolation Forest (IF) to isolate outliers from standard observations through multiple decision trees. The performance of the proposed detection method was verified using the simulation results on a hardware-based testbed. Feature selection was optimized by principal component analysis and the model was further analyzed for performance with dickey-fuller test.
引用
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页数:8
相关论文
共 29 条
[1]   Survey on Anomaly Detection using Data Mining Techniques [J].
Agrawal, Shikha ;
Agrawal, Jitendra .
KNOWLEDGE-BASED AND INTELLIGENT INFORMATION & ENGINEERING SYSTEMS 19TH ANNUAL CONFERENCE, KES-2015, 2015, 60 :708-713
[2]  
Amarasinghe K, 2018, 2018 RESILIENCE WEEK (RWS), P25, DOI 10.1109/RWEEK.2018.8473535
[3]  
[Anonymous], IEEE T IMAGE PROCESS
[4]   Integrating equipment investment strategy with maintenance operations under uncertain failures [J].
Bensoussan, A. ;
Feng, Q. ;
Sethi, S. P. .
ANNALS OF OPERATIONS RESEARCH, 2022, 317 (02) :353-386
[5]   Incremental kernel principal component analysis [J].
Chin, Tat-Jun ;
Suter, David .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 2007, 16 (06) :1662-1674
[6]   Quantisation-aware Dimensionality Reduction [J].
Guo, Ce ;
Luk, Wayne .
2020 INTERNATIONAL CONFERENCE ON FIELD-PROGRAMMABLE TECHNOLOGY (ICFPT 2020), 2020, :237-240
[7]  
Kaygusuz C., 2018, IEEE ICC, P1
[8]  
Kittidachanan Kittikun, 2020, 2020 12th International Conference on Knowledge and Smart Technology (KST), P64, DOI 10.1109/KST48564.2020.9059326
[9]  
Kosek A.M., 2016, CPSR SG, P1, DOI [DOI 10.1109/EPEC.2016.7771704, 10.1109/EPEC.2016.7771704]
[10]  
Kosek A. M., 2016, 2016 JOINT WORKSH CY, P1