Intelligent Processing of Power Operation Data Based on Improved Apriori Algorithm

Authors

  • Xin Zhao State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center, Qin Yang 454550, China
  • Changda Huang State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center, Qin Yang 454550, China

DOI:

https://doi.org/10.13052/spee1048-5236.43213

Keywords:

Apriori algorithm, power data, fault diagnosis, data processing, vectorization identification

Abstract

This paper addresses several problems in the power system. Key challenges include low-power information integration, inappropriate system data management, inaccurate system data updating, and inefficient fault diagnosis. We focus on analyzing and diagnosing transmission line faults using the operation data of the power system. The study incorporates the quantitative identification of statements. This is done using the Apriori big data analysis and calculation method. Additionally, we utilize big data analysis and vast power operation data. We aim to achieve automatic analysis and pinpoint the causes of transmission line faults. Furthermore, we seek to optimize the traditional Apriori calculation method. This optimization results in a reduction of about 52% in the candidate item set calculation. The optimized M-Apriori calculation method can analyze the correlation between event index data and faults in real time, and realize automatic diagnosis and analysis of faults through operation data.

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Author Biographies

Xin Zhao, State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center, Qin Yang 454550, China

Xin Zhao, Received a Bachelor of Engineering degree from Liaoning University of Engineering and Technology in 2016, and currently works at State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center be in office Special person in charge. His research interests include Channel Management, Big data analytics, Industrial Economy and Project Management.

Changda Huang, State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center, Qin Yang 454550, China

Changda Huang, Received a Bachelor’s degree in Engineering from North China Electric Power University in 2016, and currently works at State Grid Xinjiang Electric Power Co., Ltd Marketing Service Center be in operation supervisor. His research interests include High quality service, Channel Management, Big data analytics, Industrial Economy.

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Published

2024-01-14

How to Cite

Zhao, X. ., & Huang, C. . (2024). Intelligent Processing of Power Operation Data Based on Improved Apriori Algorithm. Strategic Planning for Energy and the Environment, 43(02), 477–498. https://doi.org/10.13052/spee1048-5236.43213

Issue

Section

Greener Energy and Sustainable Development with AI-based loT