A Novel Data-Driven Tool Based on Non-Linear Optimization for Offshore Wind Farm Siting

Author:

Polykarpou Marina1ORCID,Karathanasi Flora12ORCID,Soukissian Takvor3ORCID,Loukaidi Vasiliki23,Kyriakides Ioannis14ORCID

Affiliation:

1. Cyprus Marine and Maritime Institute, Vasileos Pavlou Square, Larnaca 6023, Cyprus

2. Hellenic Hydrocarbons and Energy Resources Management Company, Dim. Margari 18, 115 25 Athens, Greece

3. Hellenic Centre for Marine Research, 46.7 km Athens Sounio Ave., 190 13 Anavyssos, Greece

4. Department of Engineering, School of Engineering, University of Nicosia, 46 Makedonitissas Ave., Nicosia 2417, Cyprus

Abstract

One preliminary key step for developing an offshore wind farm is identifying favorable sites. The process of sitting involves multiple requirements and constraints, and therefore, its feasible implementation requires either approximating assumptions or an optimization method that is capable of handling non-linear relationships and heterogeneous factors. A new optimization method is proposed to address this problem that efficiently and accurately combines essential technical criteria, such as wind speed, water depth, and distance from shore, to identify favorable areas for offshore wind farm development through a user-friendly data-driven tool. Appropriate ranks and weighting factors are carefully selected to obtain realistic results. The proposed methodology is applied in the central Aegean Sea, which has a high offshore wind energy potential. The application of the proposed optimization method reveals large areas suitable for developing floating wind energy structures. The algorithm matches the accuracy of the exhaustive search method. It, therefore, produces the optimum outcome, however, at a lower computational expense demonstrating the proposed method’s potential for larger spatial-scale analysis and use as a decision support tool.

Funder

European Regional Development Fund and the Republic of Cyprus

EU H2020 Research and Innovation Programme

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference64 articles.

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