Abstract

Short-term wind speed prediction is of cardinal significance for maximization of wind power utilization. However, the strong intermittency and volatility of wind speed pose a challenge to the wind speed prediction model. To improve the accuracy of wind speed prediction, a novel model using the ensemble empirical mode decomposition (EEMD) method and the combination forecasting method for Gaussian process regression (GPR) and the long short-term memory (LSTM) neural network based on the variance-covariance method is proposed. In the proposed model, the EEMD method is employed to decompose the original data of wind speed series into several intrinsic mode functions (IMFs). Then, the LSTM neural network and the GPR method are utilized to predict the IMFs, respectively. Lastly, based on the IMFs’ prediction results with the two forecasting methods, the variance-covariance method can determine the weight of the two forecasting methods and offer a combination forecasting result. The experimental results from two forecasting cases in Zhangjiakou, China, indicate that the proposed approach outperforms other compared wind speed forecasting methods.

Highlights

  • Wind energy is becoming a crucial part in the supply mix to meet the growing demand for electric energy

  • Lu [2] employed the ensemble empirical mode decomposition (EEMD) method to decompose initial wind speed into some subsequences; the forecasting model based on support vector machine (SVM) was used to predict these subsequences

  • long short-term memory (LSTM) is a especial form of the recurrent neural network (RNN), and it has been extensively applied in various fields

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Summary

Introduction

Wind energy is becoming a crucial part in the supply mix to meet the growing demand for electric energy. The strong intermittency and randomness in wind speed increase the difficulty to the performance of the prediction model; the wind speed features must be taken into consideration To achieve this goal, the data decomposition method was proposed and embedded into the forecasting model [16]. Lu [2] employed the EEMD method to decompose initial wind speed into some subsequences; the forecasting model based on SVM was used to predict these subsequences. The EEMD method is used to decompose the original wind speed data into various subsequences To predict these subsequences, this paper adopts the LSTM neural network and the GPR method. The LSTM neural network is suitable for dealing with important events with longer intervals and delays in time series, and the GPR method has a good adaptability and strong generality to process the complex nonlinear problems.

Ensemble Empirical Mode Decomposition
Gaussian Process Regression
Long Short-Term Memory Neural Networks
Variance-Covariance Method
The Proposed Forecasting Model
Collection of Data
Model Performance Evaluation
Wind Speed Forecasting
The Comparisons and Analysis
Additional Forecasting Case
Findings
Conclusions
Full Text
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