Informer Short-Term PV Power Prediction Based on Sparrow Search Algorithm Optimised Variational Mode Decomposition

Author:

Xu Wu12,Li Dongyang12,Dai Wenjing12,Wu Qingchang3

Affiliation:

1. School of Electrical and Information Technology, Yunnan Minzu University, Kunming 650504, China

2. Yunnan Key Laboratory of Unmanned Autonomous System, Kunming 650504, China

3. Lancang–Mekong International Vocational Institute, Yunnan Minzu University, Kunming 650504, China

Abstract

The output power of PV systems is influenced by various factors, resulting in strong volatility and randomness, which makes it difficult to forecast. Therefore, this paper proposes an Informer prediction model based on optimised VMD for predicting short-term PV power. Firstly, the temporal coding of the Informer model is improved and, secondly, the original sequence is decomposed into multiple modal components using VMD, and then optimisation of the results of VMD in conjunction with the optimisation strategy of SSA improves the characteristics of the time series data. Finally, the refined data are fed into the Informer framework for modelling and prediction, utilising the self-attention mechanism and multiscale feature fusion of Informer to precisely forecast PV power. The power of PV prediction data from the SSA-VMD-Informer model and four other commonly used models is compared. Experimental results indicate that the SSA-VMD-Informer model performs exceptionally well in short-term PV power prediction, achieving higher accuracy than traditional methods. As an example, the results of predicting the PV power on 24 April in a region of Xinjiang are 1.3882 for RMSE, 0.8310 for MSE, 1.14 for SDE, and 0.9944 for R2.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Reference24 articles.

1. Solar energy: Potential and future prospects;Kabir;Renew. Sustain. Energy Rev.,2018

2. Letcher, T.M., and Fthenakis, V.M. (2018). 15—Integration of PV Generated Electricity into National Grids. A Comprehensive Guide to Solar Energy Systems, Academic Press.

3. Wang, D. (2007). Combination Forecasting of Medium and Long-Term Power Load Based on Entropy Weight Method. [Doctoral Dissertation, North China Electric Power University].

4. Random Forests;Breiman;Mach. Learn.,2001

5. Zhang, Q., Ma, Y., Li, G., Ma, J., and Ding, J. (2019, January 7–9). Application of Frequency Domain Decomposition and Deep Learning Algorithms in Short-term Load and Photovoltaic Power Prediction. Proceedings of the CSEE, Rome, Italy.

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