posted on 2025-11-13, 16:13authored byCarrie Hall, Yueqi Wu, Igor Rizaev, Wanan Sheng, Robert DorrellRobert Dorrell, George Aggidis
As global energy demands and climate con-cerns continue to grow, the need for renewable energy is becoming increasingly clear and wave energy converter (WEC) systems are receiving growing interest. WECs often utilize optimal control techniques for power take-off operation and leverage a prediction of the upcoming wave force to ensure power production optimization. Prior work has clearly demonstrated that high power production can be achieved when an exact system model is used and the upcoming wave conditions are known, but uncertainty in the underlying model or the wave prediction can degrade performance. The uncertainty in these predictions and the model could degrade the WEC’s power output. This work examines the impact of uncertainty on the control of a WEC system that leverages machine learning to predict wave forces over the upcoming time horizon. This paper quantifies wave prediction uncertainty and its seasonal variation and illustrates that this uncertainty may only minimally degrade power output on complex multi-axis WECs due to the strong influence of constraints in the system.<p></p>
Funding
Fulbright-Lancaster University Scholar Award 2022-2023
Novel High Performance Wave Energy Converters with advanced control, reliability and survivability systems through machine-learning forecasting
Engineering and Physical Sciences Research Council
This is an open access article distributed under the terms of the Creative Commons Attribution 4.0 International license. CC BY https://creativecommons.org/licenses/by/4.0/.
Acceptance date
2025-01-13
Publication date
2025-05-31
Copyright date
2025
Notes
Part of a special issue for EWTEC 2023. Original version published in EWTEC 2023 proceedings at https://doi.org/10.36688/ewtec-2023-453.