Abstract

As a type of clean and renewable energy, the superiority of wind power has increasingly captured the world’s attention. Reliable and precise wind speed prediction is vital for wind power generation systems. Thus, a more effective and precise prediction model is essentially needed in the field of wind speed forecasting. Most previous forecasting models could adapt to various wind speed series data; however, these models ignored the importance of the data preprocessing and model parameter optimization. In view of its importance, a novel hybrid ensemble learning paradigm is proposed. In this model, the original wind speed data is firstly divided into a finite set of signal components by ensemble empirical mode decomposition, and then each signal is predicted by several artificial intelligence models with optimized parameters by using the fruit fly optimization algorithm and the final prediction values were obtained by reconstructing the refined series. To estimate the forecasting ability of the proposed model, 15 min wind speed data for wind farms in the coastal areas of China was performed to forecast as a case study. The empirical results show that the proposed hybrid model is superior to some existing traditional forecasting models regarding forecast performance.

Highlights

  • The world’s current sources of fossil fuels will eventually be depleted, mainly due to high demand and, in some situations, extravagant consumption [1]

  • The six independent Intrinsic Mode Functions (IMFs) and one residual decomposed by ensemble empirical mode decomposition (EEMD) are predicted by three different models: FOARBF, FOAGRNN, and FOASVR

  • The index of agreement (IA) values of the hybrid model were improved by 10.84%, 11.40%, 5.82%, 7.93%, and 3.04% on four seasons compared with the persistence model, Autoregressive Integrated Moving Average (ARIMA) model, EEMDFOARBF, EEMD-FOAGRNN, and EEMD-FOASVR

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Summary

Introduction

The world’s current sources of fossil fuels will eventually be depleted, mainly due to high demand and, in some situations, extravagant consumption [1]. To cope with the growing demand for energy, countries such as China can look to renewable energy sources to provide an opportunity for sustainable development. The annual discharge of carbon dioxide will be reduced to 1.5 billion tons and 3.0 billion tons in 2050 in the conservative and aggressive scenarios, and an estimated 720 000 jobs and 1 440 000 jobs will be created, respectively [4, 5] Based on these figures, wind energy should be regarded as an appealing energy option because it is both abundant and Advances in Meteorology environmentally friendly; as such, wind energy will be able to satisfy the growing demand for electricity

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