Author:
Chen Zexi,Zhang Delong,Jiang Haoran,Wang Longze,Chen Yongcong,Xiao Yang,Liu Jinxin,Zhang Yan,Li Meicheng
Abstract
AbstractWith the complete implementation of the “Replacement of Coal with Electricity” policy, electric loads borne by urban power systems have achieved explosive growth. The traditional load forecasting method based on “similar days” only applies to the power systems with stable load levels and fails to show adequate accuracy. Therefore, a novel load forecasting approach based on long short-term memory (LSTM) was proposed in this paper. The structure of LSTM and the procedure are introduced firstly. The following factors have been fully considered in this model: time-series characteristics of electric loads; weather, temperature, and wind force. In addition, an experimental verification was performed for “Replacement of Coal with Electricity” data. The accuracy of load forecasting was elevated from 83.2 to 95%. The results indicate that the model promptly and accurately reveals the load capacity of grid power systems in the real application, which has proved instrumental to early warning and emergency management of power system faults.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Beijing Municipality
Beijing Science and Technology Project
Joint Funds of the Equipment Pre-Research and Ministry of Education
Par-Eu Scholars Program, Science and Technology Beijing 100 Leading Talent Training Project
the Fundamental Research Funds for the Central Universities
the NCEPU Double First-Class Graduate Talent Cultivation Program
Beijing Energy Conservation and Power Technology Development Foundation Project
Science and Technology Project of SGCC
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering
Cited by
20 articles.
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