Marco Palmieri
From Wind to Wave energy resource: forecasting methods analysis.
Rel. Giovanni Bracco, Beatrice Fenu, Giulia Cervelli. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Energetica E Nucleare, 2022
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Abstract
The need for a more sustainable future led humanity to investigate new renewable energy sources, such as waves. Just like wind, the greatest advantage of the waves over other alternative energy sources is that it is easily predictable through the study of winds. Adequate wave predictions are crucial for the proper mapping and design of the wave farms that will contribute more and more to renewable energy generation in the future. The thesis aims to provide a general overview of wave prediction methods and then to build, analyze and compare three different types: an empirical method, that is the Sverdrup-Munk-Bretschneider (SMB) method, a multiple regression method and an artificial intelligence method, specifically a machine learning one called Artificial Neural Network (ANN).
The selected site is the Island of Pantelleria
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