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Short-term wind power prediction based on VMD-LILGWO-LSSVM
Author: WANG Rui,LI Hongrui,LU Jing,BU Xuhui Time: 2024-03-25 Counts:

doi:10.16186/j.cnki.1673-9787.2021110135

Received:2023/11/30

Revised:2023/05/26

Published:2024/03/25

Short-term wind power prediction based on VMD-LILGWO-LSSVM

WANG Rui1LI Hongrui1LU Jing1BU Xuhui2

1.School of Computer Science and TechnologyHenan Polytechnic UniversityJiaozuo 454000HenanChina2.School of Electrical Engineering and AutomationHenan Polytechnic UniversityJiaozuo 454000HenanChina

Abstract: Objectives In order to reduce frequency fluctuations caused by wind power integration into the national grid and improve the accuracy of wind power prediction Methods a short-term wind power prediction method combining variational modal decompositionVMD),lens imaging learning grey wolf optimizerLILGWOand least squares support vector machineLSSVMwas proposed.Firstlythe wind power sequence was decomposed into three modal components with different complexity by VMD method to reduce the fluctuation of wind power.Then LSSVM was used to mine the feature information of each componentwhich was predicted separately.For the problem that the selection of important parameters in LSSVM model had a large impact on the prediction accuracyLILGWO was introduced to optimize the parameters.Finallythe prediction results of each component were superimposed and reconstructed to obtain the final predicted wind power. Results Taking the actual wind power station data in Ningxia Hui Autonomous Region as an example average the predictions for the next three days. The prediction mean absolute errorMAE of the proposed method in this article was 2.706 8 kWthe root mean square error RMSE was 2.0211and the coefficient of fit determinationR-SquareR2 was 0.976 9.Compared with the comparison methods 3~6 mentioned in the article the RMSE of the method decreased by 40.93%25.21%14.7%and 6.24%respectivelyMAE decreased by 42.34%28.04%16.97%and 7.77%respectivelyR2 increased by 4.21%1.78%0.82%and 0.28%respectively.In terms of prediction timethe average training time for BP and LSSVM was 10 seconds and 138 secondsrespectively.Although LSSVM had a longer prediction timeit performed the best.PSOGWO and LILGWO were used to optimize LSSVMand the training time was shortened by an average of 39 seconds44 secondsand 58 secondsrespectively. Conclusions The effectiveness of the decomposition algorithm proposed in this paper had been verified through comparative experiments.The lens imaging learning grey wolf optimizer algorithm proposed in this paper had excellent optimization ability for the key parameters of least squares support vector machines.The effectiveness of the proposed method in short-term wind power prediction was verified by simulation.

Key words: wind powershort-term predictionvariational mode decompositionapproximate entropylens imaging learning grey wolf optimizer algorithmleast squares support vector machine

 

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