Overload prediction method of distribution transformer based on IAR‑CI model
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(1.Sanmenxia Electric Company, State Grid Hebei Electric Power Co., Ltd., Sanmenxia 472000, China; 2.Lushi Electric Company, State Grid Hebei Electric Power Co., Ltd., Sanmenxia 472200, China;3.School of Electrical &Information Engineering, Changsha University of Science & Technology, Changsha 410114, China )

Clc Number:

TM421

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    Abstract:

    With the digitization and intellectualization of power systems, the prediction of distribution transformer overload has become one of the key technologies for realizing intelligent condition-based maintenance. In real-world scenarios, the spatiotemporal factors of distribution transformer overload often exhibit a biased distribution, among which some high-risk and rare (HRR) factors, once occurred, can cause irreversible damage to transformers and should not be ignored. Therefore, this paper proposes a prediction method for distribution transformer overload based on the improved association rules-criticality importance (IAR-CI ) model. Firstly, considering both internal and external factors, multiple data sources are collected to establish a database of distribution transformer operating states, and ICA is used to identify rare high-risk periods and HRR factors that are strongly associated with severe transformer overload. Secondly, based on the criticality importance (CI) metric calculation, a factor weighting method is designed to accurately measure the risk weight of each factor. Finally, the TBFP-Growth algorithm is applied to enhance the operational efficiency of the model. Simulation analysis conducted in a region in southern China demonstrates that the proposed method can improve the prediction performance of severe distribution transformer overload, facilitating the reasonable planning and scientific scheduling of subsequent inspection and testing strategies. This reduces the operation and maintenance costs of power equipment while enhancing the reliability of power supply.

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张少峰,王佳琳,李润润,段笑阳,孙辰昊,陈 春.基于IAR‑CI模型的配变重过载预测方法[J].电力科学与技术学报英文版,2024,39(5):67-76. ZHANG Shaofeng, WANG Jialin, LI runrun, DUAN Xiaoyang, SUN Chenhao, CHEN Chun. Overload prediction method of distribution transformer based on IAR‑CI model[J]. Journal of Electric Power Science and Technology,2024,39(5):67-76.

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  • Online: December 02,2024
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