The Potential of Machine Learning for Wind Speed and Direction Short-Term Forecasting: A Systematic Review

Author:

Alves Décio12ORCID,Mendonça Fábio12ORCID,Mostafa Sheikh Shanawaz2ORCID,Morgado-Dias Fernando12ORCID

Affiliation:

1. Faculty of Exact Sciences and Engineering, University of Madeira, 9020-105 Funchal, Portugal

2. Interactive Technologies Institute (ITI/LARSyS and ARDITI), 9020-105 Funchal, Portugal

Abstract

Wind forecasting, which is essential for numerous services and safety, has significantly improved in accuracy due to machine learning advancements. This study reviews 23 articles from 1983 to 2023 on machine learning for wind speed and direction nowcasting. The wind prediction ranged from 1 min to 1 week, with more articles at lower temporal resolutions. Most works employed neural networks, focusing recently on deep learning models. Among the reported performance metrics, the most prevalent were mean absolute error, mean squared error, and mean absolute percentage error. Considering these metrics, the mean performance of the examined works was 0.56 m/s, 1.10 m/s, and 6.72%, respectively. The results underscore the novel effectiveness of machine learning in predicting wind conditions using high-resolution time data and demonstrated that deep learning models surpassed traditional methods, improving the accuracy of wind speed and direction forecasts. Moreover, it was found that the inclusion of non-wind weather variables does not benefit the model’s overall performance. Further studies are recommended to predict both wind speed and direction using diverse spatial data points, and high-resolution data are recommended along with the usage of deep learning models.

Funder

LARSyS

ARDITI—Agência Regional para o Desenvolvimento da Investigação, Tecnologia e Inovação

European Social Fund

OET—Ordem dos Engenheiros Técnicos

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

Reference52 articles.

1. (2017). WMO-No. 1198—Guidelines for Nowcasting Techniques, World Meteorological Organization.

2. Long short-term memory (LSTM)-based wind speed prediction during a typhoon for bridge traffic control;Lim;J. Wind. Eng. Ind. Aerodyn.,2021

3. An EMD-recursive ARIMA method to predict wind speed for railway strong wind warning system;Liu;J. Wind. Eng. Ind. Aerodyn.,2015

4. Atmospheric flow simulation strategies to assess turbulent wind conditions for safe drone operations in urban environments;Giersch;J. Wind. Eng. Ind. Aerodyn.,2022

5. Wapler, K., de Coning, E., and Buzzi, M. (2019). Reference Module in Earth Systems and Environmental Sciences, Elsevier.

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