A Review of Classification Problems and Algorithms in Renewable Energy Applications

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Author
Pérez-Ortiz, María
Jiménez-Fernández, Silvia
Gutiérrez, Pedro A.
Alexandre, Enrique
Salcedo Sanz, S.
Hervás-Martínez, César
Publisher
MDPIDate
2016Subject
Classification algorithmsMachine learning
Renewable energy
Applications
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Show full item recordAbstract
Classification problems and their corresponding solving approaches constitute one of the
fields of machine learning. The application of classification schemes in Renewable Energy (RE) has
gained significant attention in the last few years, contributing to the deployment, management and
optimization of RE systems. The main objective of this paper is to review the most important
classification algorithms applied to RE problems, including both classical and novel algorithms.
The paper also provides a comprehensive literature review and discussion on different classification
techniques in specific RE problems, including wind speed/power prediction, fault diagnosis in
RE systems, power quality disturbance classification and other applications in alternative RE systems.
In this way, the paper describes classification techniques and metrics applied to RE problems,
thus being useful both for researchers dealing with this kind of problem and for practitioners
of the field.