Review of current artificial intelligence methods and metaheuristic algorithms for wind power prediction
- 1. Laboratory of Systems Engineering (LAGES), Ecole Hassania des Travaux Publics (EHTP), Casablanca, Morocco
Description
Due to the insufficient fossil resources and the increasing environmental challenges, the world is heading for a more use-oriented to renewable energy sources, specifically to wind energy. A number of predictive techniques are available for the efficient use of wind energy. This article, which is a review of methods of artificial intelligence (AI) and meta-heuristic algorithms for wind energy prediction, fits into this context. There are two distinct categories: the first consists of traditional methods that are commonly used in this context, like different types of artificial neural networks (ANN), support vector machines (SVM) and fuzzy logic; the second is a combined approach which mixes the classic artificial intelligence methods and the meta-heuristic algorithms for the optimization of the forecast output. Then, a summary and comparison between the methodologies are established, and the advantages and limits of each technique are defined. The combination of the classic artificial intelligence and metaheuristic algorithms has a greater performance than the utilization of classic methods only. Nevertheless, using hybrid metaheuristic algorithms with classic artificial intelligence prediction methods can provide a higher precision.
Files
29135-59821-1-PB.pdf
Files
(389.0 kB)
Name | Size | Download all |
---|---|---|
md5:55be1a55ee64619962a91e0781066296
|
389.0 kB | Preview Download |