Building Suitable Datasets for Soft Computing and Machine Learning Techniques from Meteorological Data Integration: A Case Study for Predicting Significant Wave Height and Energy Flux

Published in Energies, 2021

Recommended citation: Antonio Manuel Gómez-Orellana, Juan Carlos Fernández, Manuel Dorado-Moreno, Pedro Antonio Gutiérrez, César Hervás-Martínez, "Building Suitable Datasets for Soft Computing and Machine Learning Techniques from Meteorological Data Integration: A Case Study for Predicting Significant Wave Height and Energy Flux." Energies, Vol. 14(2), 2021, pp.468. http://doi.org/10.3390/en14020468

JCR(2021): 3.252 Position: 80/119 (Q3) Category: ENERGY {\&} FUELS

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