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A novel short‐term load forecasting approach based on kernel extreme learning machine: A provincial case in China

Xinyue Zhao, Jianxiao Wang, Tiance Zhang, Da Cui, Gengyin Li, Ming Zhou

2022IET Renewable Power Generation17 citationsDOIOpen Access PDF

Abstract

Abstract With the rapid development of re‐electrification, traditional load forecasting faces a significant increase of influencing factors. Existing literature focuses on examining the influencing factors related to load profiles in order to improve the prediction accuracy. However, a large number of redundant features may lead to the overfitting of the forecasting engine. To enhance the performance of extreme learning machine (ELM) under massive data scale, this paper presents a kernel extreme learning machine (KELM) based method which can be used for short‐term load prediction. First, a feature dimensionality reduction is performed using a kernelized principal component analysis, which aims to eliminate redundant input vectors. Then, the hyperparameters of KELM are optimized to improve the prediction accuracy and generalization. Case studies based on a province‐level power system in China demonstrate that the presented method can significantly improve the accuracy of load forecasting by 3.14% in contrast to traditional ELM.

Topics & Concepts

Term (time)Kernel (algebra)Computer scienceExtreme learning machineChinaArtificial intelligenceMachine learningMathematicsGeographyArtificial neural networkPhysicsCombinatoricsArchaeologyQuantum mechanicsEnergy Load and Power ForecastingGrey System Theory ApplicationsMachine Learning and ELM
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