Comparison of four Adaboost algorithm based artificial neural networks in wind speed predictions

•Four hybrid algorithms are proposed for the wind speed decomposition.•Adaboost algorithm is adopted to provide a hybrid training framework.•MLP neural networks are built to do the forecasting computation.•Four important network training algorithms are included in the MLP networks.•All the proposed hybrid algorithms are suitable for the wind speed predictions.

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