Load Forecasting for Station Areas Based on User Portrait

Distribution transformer load forecasting is an important supporting technology for safe and efficient operation of distribution network. In this paper, a method of load forecasting for station area based on user portrait is proposed. First, the industry labels of station areas are obtained, the loa...

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Published in2024 3rd International Conference on Energy and Electrical Power Systems (ICEEPS) pp. 1270 - 1280
Main Authors Yu, Zongchao, Wen, Ming, Chen, Zizi, Luo, Shuchen, Li, Peiqiang
Format Conference Proceeding
LanguageEnglish
Published IEEE 14.07.2024
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Abstract Distribution transformer load forecasting is an important supporting technology for safe and efficient operation of distribution network. In this paper, a method of load forecasting for station area based on user portrait is proposed. First, the industry labels of station areas are obtained, the load portrait of the industry of station area is carried out in the way of "upward aggregation and downward classification", and the load characteristics of the historical load of each industry are analyzed. Secondly, the prediction model base is constructed, considering the characteristic labels of various industries, and the optimal prediction model is matched. Finally, combining the user portrait results of the industry of the station area and considering PV stripping when forecasting, the power demand of the station area load plus the distributed power supply output is predicted first, and the predicted value of distributed PV output is deducted from the forecast result to obtain a more accurate station area load forecast value, and the validity of the model is verified by real examples.
AbstractList Distribution transformer load forecasting is an important supporting technology for safe and efficient operation of distribution network. In this paper, a method of load forecasting for station area based on user portrait is proposed. First, the industry labels of station areas are obtained, the load portrait of the industry of station area is carried out in the way of "upward aggregation and downward classification", and the load characteristics of the historical load of each industry are analyzed. Secondly, the prediction model base is constructed, considering the characteristic labels of various industries, and the optimal prediction model is matched. Finally, combining the user portrait results of the industry of the station area and considering PV stripping when forecasting, the power demand of the station area load plus the distributed power supply output is predicted first, and the predicted value of distributed PV output is deducted from the forecast result to obtain a more accurate station area load forecast value, and the validity of the model is verified by real examples.
Author Yu, Zongchao
Luo, Shuchen
Wen, Ming
Chen, Zizi
Li, Peiqiang
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  givenname: Peiqiang
  surname: Li
  fullname: Li, Peiqiang
  organization: The College of Electrical and Information Engineering of Hunan University,Changsha,China
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Snippet Distribution transformer load forecasting is an important supporting technology for safe and efficient operation of distribution network. In this paper, a...
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StartPage 1270
SubjectTerms Accuracy
Distribution Transformer Load
Electricity
Industries
Industry Load Forecasting
Libraries
Load forecasting
Load modeling
Power grids
Prediction algorithms
Predictive models
Transformers
User Portrait
Title Load Forecasting for Station Areas Based on User Portrait
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