Short-term prediction of wind power generation based on VMD-GSWOA-LSTM model

Author:

Yang Tongguang1,Li Wanting1ORCID,Huang Zhiliang1ORCID,Peng Li1,Yang Jingyu1

Affiliation:

1. Key Laboratory of Smart City Energy Sensing and Edge Computing of Hunan Province, Hunan City University , Yiyang 413000, China

Abstract

To improve the short-term wind power output prediction accuracy and overcome the model prediction instability problem, we propose a combined prediction model based on variational modal decomposition (VMD) combined with the improved whale algorithm (GSWOA) to optimize the long short-term memory network (LSTM) short-term wind power. First, VMD is utilized to decompose the wind power input sequence into modal components of different complexities, and the components are reconstructed into subcomponents with typical characteristics through approximate entropy, which reduces the computational scale of non-smooth sequence analysis. Second, the GSWOA is used to optimize the main influencing parameters of the LSTM model in order to obtain the weights and thresholds under the optimal LSTM model and to use the reconstructed individual subsequences. Finally, the actual data from two wind farms in Xinjiang and Northeast China are taken to verify the generalizability of the proposed model. The comparative analysis of the prediction results under different scenarios demonstrates that the improved model shows higher performance than the original model.

Funder

Key Project Funding for Hunan Provincial Science and Technology Innovation Plan

General Project of the Hunan Natural Science Foundation

Hunan Natural Science Regional Joint Foundation

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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