Power Output Prediction of Wave Farms Using Fully Connected Networks

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2021

Authors

Ceylan, Oguzhan
Neshat, Mehdi

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IEEE

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Abstract

One of the most important factors in the amount of power generated by a wave farm is the Wave Energy Converters (WECs) arrangement along with the usual wave conditions. Therefore, forming an appropriate arrangement of WECs in an array is a significant parameter in maximizing power absorption. This paper focuses on developing a fully connected neural model in order to predict the total power output of a wave farm based on the placement of the converters, derived from the four real wave scenarios on the southern coast of Australia. The applied converter model is a fully submerged three-tether converter called CETO. Data collected from the test sites is used to design a neural model for predicting the wave farm's power output produced. A precise analysis of the WEC placement is investigated to reveal the amount of power generated by the wave farms on the test site. We finally proposed a suitable configuration of a fully connected neural model to forecast the power output with high accuracy.

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56th International Universities Power Engineering Conference (UPEC) - Powering Net Zero Emissions -- AUG 31-SEP 03, 2021 -- Teesside Univ, ELECTR NETWORK

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Neural-Networks, Ocean wave energy, Absorption, wave energy converters, artificial neural networks, Neural-Networks, fully connected neural networks, Absorption, forecasting model

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2021 56th International Universities Power Engineering Conference (Upec 2021): Powering Net Zero Emissions

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