Short-term district power load self-prediction based on improved XGBoost model

Distributed generation and diversified loads increase the uncertainty of district power prediction. Useful prediction requires a highly accurate model, and there are several challenges facing the designers of a new power system with intelligent power distribution. To solve them, we improved an XGBoo...

Full description

Saved in:
Bibliographic Details
Published inEngineering applications of artificial intelligence Vol. 126; p. 106826
Main Authors Cao, Wangbin, Liu, Yanping, Mei, Huawei, Shang, Honglin, Yu, Yang
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.11.2023
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Distributed generation and diversified loads increase the uncertainty of district power prediction. Useful prediction requires a highly accurate model, and there are several challenges facing the designers of a new power system with intelligent power distribution. To solve them, we improved an XGBoost model from three aspects: model, data, and performance. This paper proposes an XGBoost model with a windowed mechanism and random grid search (WR-XGBoost model) for self-prediction of short-term district power load. Specifically, a causal sliding window with different strides is introduced into the model optimization stage to process the training and test sets separately. In data optimization, the model initially processes the data organized in forms and then uses discrete difference data as input. Finally, in optimizing the performance, a random grid search method reduces the debugging of hyperparameters. The results show that the WR-XGBoost model outperforms five comparison models in terms of predictive power and generalization, using four datasets and seven statistical indicators.
ISSN:0952-1976
1873-6769
DOI:10.1016/j.engappai.2023.106826