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Load Forecasting Based on LSTM Neural Network and Applicable to Loads of “Replacement of Coal with Electricity”

Zexi Chen, Delong Zhang, Haoran Jiang, Longze Wang, Yongcong Chen, Yang Xiao, Jinxin Liu, Yan Zhang, Meicheng Li

2021Journal of Electrical Engineering and Technology39 citationsDOIOpen Access PDF

Abstract

Abstract With 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.

Topics & Concepts

ElectricityComputer scienceElectric power systemGridCoalWind powerPower (physics)Warning systemArtificial neural networkPeak loadElectrical loadReliability engineeringReal-time computingAutomotive engineeringEngineeringArtificial intelligenceElectrical engineeringTelecommunicationsMathematicsGeometryQuantum mechanicsWaste managementPhysicsEnergy Load and Power ForecastingSmart Grid and Power SystemsPower Systems and Renewable Energy
Load Forecasting Based on LSTM Neural Network and Applicable to Loads of “Replacement of Coal with Electricity” | Litcius