Mooring-based frequency-domain and AI-based time-domain optimization for improved power capture performance of the TALOS wave energy converter

Yavuz, Hakan and Sheng, Wanan and Aggidis, George (2026) Mooring-based frequency-domain and AI-based time-domain optimization for improved power capture performance of the TALOS wave energy converter. Renewable Energy: 125241. ISSN 0960-1481 (In Press)

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Abstract

Mooring-based frequency-domain analysis combined with AI-based time-domain optimization offers a systematic approach to improving power capture performance in multi degree-of-freedom wave energy converters. While most existing studies focus on single degree-of-freedom systems, enhanced energy absorption can be achieved by exploiting the dynamic potential of multi-DoF configurations. This study investigates the TALOS wave energy converter, a six-degree-of-freedom system, with the objective of improving its power capture capability through coordinated mooring and power take-off (PTO) optimization. The optimization framework begins with a frequency-domain analysis to assess the influence of mooring parameters on the system response. Based on this analysis, two refined configurations, denoted as TALOS-L and TALOS-H, are developed using optimized mooring stiffness characteristics. Subsequently, time-domain simulations are conducted using a genetic algorithm to determine optimal PTO damping settings under site-specific sea conditions. The results show that adaptive tuning of both mooring and PTO parameters significantly improves power capture across different sea states. In particular, the TALOS-H configuration, featuring tuned surge mooring stiffness and genetically optimized PTO damping, consistently outperforms the baseline configuration. These findings highlight the importance of site-specific tuning and demonstrate the effectiveness of AI-based optimization for enhancing the adaptability and efficiency of multi-degree-of-freedom wave energy converters.

Item Type:
Journal Article
Journal or Publication Title:
Renewable Energy
Uncontrolled Keywords:
Research Output Funding/yes_externally_funded
Subjects:
?? yes - externally fundedrenewable energy, sustainability and the environment ??
ID Code:
234772
Deposited By:
Deposited On:
12 Jan 2026 15:50
Refereed?:
Yes
Published?:
In Press
Last Modified:
21 Jan 2026 00:15