Research on Short-Term Low-Voltage Distribution Network Line Loss Prediction Based on Kmeans-LightGBM

Due to the lack of data quality in real production environment, the traditional line loss calculation method cannot be applied, thus through the investigation of various information systems’ operation in power supply enterprises, a short-term low-voltage distribution network line loss prediction alg...

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Bibliographic Details
Published inJournal of circuits, systems, and computers Vol. 31; no. 13
Main Authors Tang, Zhu, Xiao, Yuhang, Jiao, Yang, Li, Xinyu, Zhang, Caixia, Sun, Jun, Wang, Peng
Format Journal Article
LanguageEnglish
Published Singapore World Scientific Publishing Company 15.09.2022
World Scientific Publishing Co. Pte., Ltd
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Summary:Due to the lack of data quality in real production environment, the traditional line loss calculation method cannot be applied, thus through the investigation of various information systems’ operation in power supply enterprises, a short-term low-voltage distribution network line loss prediction algorithm based on Kmeans-LightGBM is proposed. Operating data quality evaluation system of low-voltage distribution network was set up based on Hadoop platform, the feature dimensions were expanded by feature engineering, then those with no multicollinearity and high correlation with the line loss were selected, data normalization was again performed, Kmeans clustering algorithm was used to cluster the area and then, LightGBM algorithm was used to predict the classes within the area of line loss. Finally, the line loss of the numerical inverse normalization was found and validated with Beijing Power Grid of a low-voltage distribution network. By comparison, the model’s prediction accuracy is found to be higher than BPNN, FOA-SVR and traditional LightGBM.
Bibliography:This paper was recommended by Regional Editor Takuro Sato.
ObjectType-Article-1
SourceType-Scholarly Journals-1
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content type line 14
ISSN:0218-1266
1793-6454
DOI:10.1142/S0218126622502280