4.7 Article

A hybrid approach to multi-step, short-term wind speed forecasting using correlated features

Journal

RENEWABLE ENERGY
Volume 186, Issue -, Pages 742-754

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.renene.2022.01.041

Keywords

Neural network; Supervised learning; Time series; Meteorological features; Hybrid model; Wind rose

Funding

  1. United States National Science Foundation (NSF) under the Chemical, Bioengineering, Environ-mental and Transport Systems (CBET) program [1704933]
  2. Directorate For Engineering
  3. Div Of Chem, Bioeng, Env, & Transp Sys [1704933] Funding Source: National Science Foundation

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This paper proposes a hybrid wind speed prediction model that combines linear time series regression with a nonlinear machine learning algorithm to forecast wind speeds using multivariate input and multi-step output capability. The model determines the input neurons based on meteorological features and lag observations, and the output neurons based on the forecasting horizon. The model was trained, validated, and tested using hourly meteorological records from multiple cities, and it outperformed other methods in predicting wind speeds 3 to 24 hours in advance.
Wind power is becoming a main alternative energy source to meet the growing electricity needs. Forecasting wind speed is important to mitigate generation uncertainty and optimize asset utilization. This paper proposes a hybrid wind speed prediction model with multivariate input and multi-step output capability. The model synthesizes linear time series regression with nonlinear machine learning algorithm. The input neurons of the hybrid model are determined by the number of lag observations in autoregressive integrated moving average (ARIMA), and also by correlated meteorological features, such as wind direction, air pressure, humidity, dew point, and temperature. The output neurons are further derived based on the forecasting horizon. The hybrid model is trained, validated, and tested by using 1.73 million hourly meteorological records from three cities with diverse wind profiles. The performance of the model is compared with several existing methods based on root mean square error and mean absolute error. Though the hybrid model does not show obvious advantage in 1-h ahead prediction, it outperforms persistence model, ARIMA, and univariate neural network models in 3-to-24 h ahead prediction. The hybrid model is able to reduce the prediction error by 20% in comparison with univariate neural networks.(c) 2022 Published by Elsevier Ltd.

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