Short-Term Electricity-Load Forecasting by Deep Learning: A Comprehensive Survey
- URL: http://arxiv.org/abs/2408.16202v1
- Date: Thu, 29 Aug 2024 01:47:09 GMT
- Title: Short-Term Electricity-Load Forecasting by Deep Learning: A Comprehensive Survey
- Authors: Qi Dong, Rubing Huang, Chenhui Cui, Dave Towey, Ling Zhou, Jinyu Tian, Jianzhou Wang,
- Abstract summary: Short-Term Electricity-Load Forecasting refers to the prediction of the immediate demand (in the next few hours to several days) for the power system.
Various external factors, such as weather changes and the emergence of new electricity consumption scenarios, can impact electricity demand.
Deep learning has been applied to STELF, modeling and predicting electricity demand with high accuracy.
- Score: 21.781972510427263
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Short-Term Electricity-Load Forecasting (STELF) refers to the prediction of the immediate demand (in the next few hours to several days) for the power system. Various external factors, such as weather changes and the emergence of new electricity consumption scenarios, can impact electricity demand, causing load data to fluctuate and become non-linear, which increases the complexity and difficulty of STELF. In the past decade, deep learning has been applied to STELF, modeling and predicting electricity demand with high accuracy, and contributing significantly to the development of STELF. This paper provides a comprehensive survey on deep-learning-based STELF over the past ten years. It examines the entire forecasting process, including data pre-processing, feature extraction, deep-learning modeling and optimization, and results evaluation. This paper also identifies some research challenges and potential research directions to be further investigated in future work.
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