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A Novel Deep Learning Approach for Wind Power Forecasting Based on WD-LSTM Model

Bingchun Liu, Shijie Zhao, Xiaogang Yu, Lei Zhang, Qingshan Wang

2020Energies82 citationsDOIOpen Access PDF

Abstract

Wind power generation is one of the renewable energy generation methods which maintains good momentum of development at present. However, its extremely intense intermittences and uncertainties bring great challenges to wind power integration and the stable operation of wind power grids. To achieve accurate prediction of wind power generation in China, a hybrid prediction model based on the combination of Wavelet Decomposition (WD) and Long Short-Term Memory neural network (LSTM) is constructed. Firstly, the nonstationary time series is decomposed into multidimensional components by WD, which can effectively reduce the volatility of the original time series and make them more stable and predictable. Then, the components of the original time series after WD are used as input variables of LSTM to predict the national wind power generation. Forty points were used, 80% as training samples and 20% as testing samples. The experimental results show that the MAPE of WD-LSTM is 5.831, performing better than other models in predicting wind power generation in China. In addition, the WD-LSTM model was used to predict the wind power generation in China under different development trends in the next two years.

Topics & Concepts

Wind powerWind power forecastingComputer scienceArtificial neural networkRenewable energyVolatility (finance)Time seriesElectricity generationDeep learningSeries (stratigraphy)Power (physics)Electric power systemArtificial intelligenceMachine learningEconometricsMathematicsEngineeringElectrical engineeringQuantum mechanicsPaleontologyPhysicsBiologyEnergy Load and Power ForecastingElectric Power System OptimizationGrey System Theory Applications
A Novel Deep Learning Approach for Wind Power Forecasting Based on WD-LSTM Model | Litcius