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Wave energy forecasting using artificial neural networks in the Caspian Sea
Author(s) -
Sanaz Hadadpour,
Amir EtemadShahidi,
Bahareh Kamranzad
Publication year - 2013
Publication title -
proceedings of the institution of civil engineers - maritime engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.477
H-Index - 21
eISSN - 1751-7737
pISSN - 1741-7597
DOI - 10.1680/maen.13.00004
Subject(s) - energy flux , flux (metallurgy) , artificial neural network , energy (signal processing) , meteorology , geology , physics , computer science , mathematics , statistics , artificial intelligence , materials science , astronomy , metallurgy
Providing energy without unfavourable impact on the environment is an important issue that is considered by societies. This paper focuses on forecasting the wave energy over horizons of 1-12 h, in the southern part of the Caspian Sea. For this purpose, an artificial neural network was used to obtain the wave energy flux using two different methods. First, the components of wave energy flux, including the significant wave height and peak wave period were predicted separately and the wave energy flux was calculated by combining them; and second, the wave energy flux was forecast directly. The results showed that the prediction of components separately yielded more accurate results. It was found that the longer the forecasting time horizon, the less accurate was the prediction. This is because in large time horizons, the previous wave characteristics have little influence on the wave energy flux. The forecast wave energy flux in both methods correlated well with observed data in short horizons.Full Tex

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