TY - JOUR
T1 - Enhancing FOWT performance through GA-based control parameter optimisation
T2 - A trade-off between power and fatigue
AU - Valles-Novoa, Ximena
AU - López-Queija, Javier
AU - Sanchez, Alberto
AU - Robles, Eider
AU - Tena, Ander
N1 - Publisher Copyright:
© 2025
PY - 2025/11/30
Y1 - 2025/11/30
N2 - Floating offshore wind turbines (FOWTs) are crucial for the clean energy transition. To ensure cost-effective and competitive deployment, it is essential to maximise power generation while extending operational lifetime. Environmental forces such as wind, waves, and currents induce structural fatigue, reducing lifespan. Optimising control strategies is vital, as they influence turbine dynamics, mitigate environmental loads, and enhance performance. Genetic Algorithms (GAs), inspired by biological evolution, are effective tools for optimising these strategies due to their robustness in handling complex, non-linear systems, improving both performance and durability. This study presents a methodology for optimising the Reference Open-Source Controller (ROSCO) parameters for a coupled FOWT model using GAs. The primary objective is to reduce structural fatigue without compromising power output. The approach follows a bottom-up strategy—starting with a limited set of tuning parameters and load cases, then progressively increasing complexity—to develop a comprehensive and generalisable optimisation framework. The methodology includes simulation time reduction techniques to ensure computational feasibility. Results: Show that the optimised controller achieves up to a 10.04 % reduction in tower base bending moment fatigue loads while maintaining power output within 7.40 % of the baseline. The analysis also highlights the trade-offs between control parameters and performance metrics, offering insights into their relative influence. This work contributes a flexible, scalable optimisation framework applicable to various FOWT designs and sites, with potential to reduce operational costs and extend turbine lifespan in real-world offshore wind technologies.
AB - Floating offshore wind turbines (FOWTs) are crucial for the clean energy transition. To ensure cost-effective and competitive deployment, it is essential to maximise power generation while extending operational lifetime. Environmental forces such as wind, waves, and currents induce structural fatigue, reducing lifespan. Optimising control strategies is vital, as they influence turbine dynamics, mitigate environmental loads, and enhance performance. Genetic Algorithms (GAs), inspired by biological evolution, are effective tools for optimising these strategies due to their robustness in handling complex, non-linear systems, improving both performance and durability. This study presents a methodology for optimising the Reference Open-Source Controller (ROSCO) parameters for a coupled FOWT model using GAs. The primary objective is to reduce structural fatigue without compromising power output. The approach follows a bottom-up strategy—starting with a limited set of tuning parameters and load cases, then progressively increasing complexity—to develop a comprehensive and generalisable optimisation framework. The methodology includes simulation time reduction techniques to ensure computational feasibility. Results: Show that the optimised controller achieves up to a 10.04 % reduction in tower base bending moment fatigue loads while maintaining power output within 7.40 % of the baseline. The analysis also highlights the trade-offs between control parameters and performance metrics, offering insights into their relative influence. This work contributes a flexible, scalable optimisation framework applicable to various FOWT designs and sites, with potential to reduce operational costs and extend turbine lifespan in real-world offshore wind technologies.
KW - Control systems
KW - Fatigue
KW - Floating offshore wind turbines
KW - Genetic algorithms
KW - Optimisation
KW - Power production
UR - https://www.scopus.com/pages/publications/105011841579
U2 - 10.1016/j.oceaneng.2025.122332
DO - 10.1016/j.oceaneng.2025.122332
M3 - Article
AN - SCOPUS:105011841579
SN - 0029-8018
VL - 340
JO - Ocean Engineering
JF - Ocean Engineering
M1 - 122332
ER -