Construction of a Fast Monitoring System for Electric Energy Equipment Status Based on Data Mining

Authors

  • Fusheng Wei Guandong Power Grid Co.
  • Xue Li Guandong Power Grid Co.
  • Weiwen Chen Guandong Power Grid Co.
  • Zhaokai Liang Guangzhou Power Supply Bureau of Guangdong Power Grid Co.
  • Zhaopeng Huang Foshan Power Supply Bureau of Guangdong Power Grid Co.

DOI:

https://doi.org/10.4108/ew.5869

Keywords:

Data mining, Electric energy equipment, Status monitoring, Edge perception, Generative adversarial network

Abstract

In modern power system operation, it is crucial to achieve fast and accurate monitoring of the electrical equipment status. To achieve this fast and accurate detection, this study proposes a generative adversarial network that combines edge features to amplify and recognize infrared images of devices, aiming to improve the model’s training effect. This model extracted edge features from infrared images to eliminate background noise in infrared images to achieve the goal of improving the accurate monitoring of the status of electrical equipment. The results showed that on the balanced dataset, the recognition accuracy of the model could reach about 96%, and the recognition effect of the model was relatively stable. On imbalanced datasets, the highest model recognition accuracy was around 89%, and the model recognition accuracy fluctuated greatly. The constructed model effectively improves the accuracy of monitoring the operating status of electric energy equipment, achieving fast and accurate monitoring of this state. This study can achieve rapid monitoring of the operating status of electric energy equipment, effectively reducing the operation and maintenance costs of the power system.

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References

[1] Lee S B, Stone G C, Antonino-Daviu J, Gyftakis K N, Strangas E G, Maussion P, Platero C A. Condition monitoring of industrial electric machines: State of the art and future challenges. IEEE Industrial Electronics Magazine, 2020, 14(4): 158-167.

[2] Lu S, Chai H, Sahoo A, Phung B T. Condition monitoring based on partial discharge diagnostics using machine learning methods: A comprehensive state-of-the-art review. IEEE Transactions on Dielectrics and Electrical Insulation, 2020, 27(6): 1861-1888.

[3] Gui J, Sun Z, Wen Y, Tao D, Ye J. A review on generative adversarial networks: Algorithms, theory, and applications. IEEE Transactions on Knowledge and Data Engineering, 2021, 35(4): 3313-3332.

[4] Jiang T, Li Y, Xie W, Du Q. Discriminative reconstruction constrained generative adversarial network for hyperspectral anomaly detection. IEEE Transactions on Geoscience and Remote Sensing, 2020, 58(7): 4666-4679.

[5] Gao Y, Gao L, Li X. A generative adversarial network based deep learning method for low-quality defect image reconstruction and recognition. IEEE Transactions on Industrial Informatics, 2020, 17(5): 3231-3240.

[6] Gao Y, Gao L, Li X. A generative adversarial network based deep learning method for low-quality defect image reconstruction and recognition. IEEE Transactions on Industrial Informatics, 2020, 17(5): 3231-3240.

[7] Jin X, Xu Z, Qiao W. Condition monitoring of wind turbine generators using SCADA data analysis. IEEE Transactions on Sustainable Energy, 2020, 12(1): 202-210.

[8] Zhao Z, Davari P, Lu W, Wang H, Blaabjerg F. An overview of condition monitoring techniques for capacitors in DC-link applications. IEEE Transactions on Power Electronics, 2020, 36(4): 3692-3716.

[9] Di Lorenzo G, Araneo R, Mitolo M, Niccolai A, Grimaccia F. Review of O&M practices in PV plants: Failures, solutions, remote control, and monitoring tools. IEEE Journal of Photovoltaics, 2020, 10(4): 914-926.

[10] Wang B, Dong M, Ren M, Wu Z, Guo C, Zhuang T, Xie J. Automatic fault diagnosis of infrared insulator images based on image instance segmentation and temperature analysis. IEEE Transactions on Instrumentation and Measurement, 2020, 69(8): 5345-5355.

[11] Liu M Y, Huang X, Yu J, Wang T C, Mallya A. Generative adversarial networks for image and video synthesis: Algorithms and applications. Proceedings of the IEEE, 2021, 109(5): 839-862.

[12] Maeda H, Kashiyama T, Sekimoto Y, Seto T, Omata H. Generative adversarial network for road damage detection. Computer‐Aided Civil and Infrastructure Engineering, 2021, 36(1): 47-60.

[13] Pavan Kumar M R, Jayagopal P. Generative adversarial networks: a survey on applications and challenges. International Journal of Multimedia Information Retrieval, 2021, 10(1): 1-24.

[14] Zhao B, Wang C, Fu Q, Han Z. A novel pattern for infrared small target detection with generative adversarial network. IEEE Transactions on Geoscience and Remote Sensing, 2020, 59(5): 4481-4492.

[15] Jiang Y, Chen H, Loew M, Ko H. COVID-19 CT image synthesis with a conditional generative adversarial network. IEEE Journal of Biomedical and Health Informatics, 2020, 25(2): 441-452.

[16] Souibgui M A, Kessentini Y. De-gan: A conditional generative adversarial network for document enhancement. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2020, 44(3): 1180-1191.

[17] Souibgui M A, Kessentini Y. De-gan: A conditional generative adversarial network for document enhancement. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2020, 44(3): 1180-1191.

[18] Daihong J, Sai Z, Lei D, Yueming D. Multi-scale generative adversarial network for image super-resolution. Soft Computing, 2022, 26(8): 3631-3641.

[19] Shi Y, Davaslioglu K, Sagduyu Y E. Generative adversarial network in the air: Deep adversarial learning for wireless signal spoofing. IEEE Transactions on Cognitive Communications and Networking, 2020, 7(1): 294-303.

[20] Hasanvand M, Nooshyar M, Moharamkhani E, Selyari A. Machine Learning Methodology for Identifying Vehicles Using Image Processing. AIA, 2023, 1(3): 170-178.

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Published

20-12-2024

How to Cite

1.
Wei F, Li X, Chen W, Liang Z, Huang Z. Construction of a Fast Monitoring System for Electric Energy Equipment Status Based on Data Mining. EAI Endorsed Trans Energy Web [Internet]. 2024 Dec. 20 [cited 2024 Dec. 21];12. Available from: https://publications.eai.eu/index.php/ew/article/view/5869