[SWELL] Smart Wave Energy Conversion via Learning and Low-Cost Control
Ente: European Commission
Scadenza: 2029-06-15
Importo max: 332.913,72 EUR
Paese: EU
Descrizione
This project (SWELL) aims to pioneer the next generation of smart control technology for wave energy converters (WECs), addressing the urgent challenge of reducing their levelized cost of energy to attract investments in this promising renewable energy technology. Despite recent progress in WEC control, improvements in wave energy conversion remain limited due to the difficulties of handling accurate nonlinear models in the controller design. To overcome this, SWELL will develop the first data-driven model predictive controller (MPC) tailored to WECs, combining cutting-edge control methods, hydrodynamics, and machine learning. SWELL will deliver accurate and validated models capturing the ubiquitous nonlinear effects of WECs and exploit them in the design of an MPC that optimizes energy conversion. By integrating expertise from three world-class hosts, the unique nature of SWELL will enable efficient, fast, and practical control implementation with real-time capabilities and a low-cost design, supporting the pathway towards the effective commercialization of wave energy. This project comprises four scientific work packages, which accomplish: (i) accurate nonlinear hydrodynamic modeling of wave energy converters, (ii) efficient MPC design exploitating the explicit MPC paradigm enabled by convex relaxation techniques, (iii) experimental validation of the developed models and control, through the definition of a custom analog electronic circuit efficiently implementing the designed MPC, and (iv) release of open-source software implementing the developed methods. This fellowship will expand the career horizons of the fellow through a highly multidisciplinary plan, building upon and extending beyond his current competencies. The fellow is well-positioned to undertake this project, enabling him to develop innovative concepts based on his PhD research. The unprecedented nature of this action will launch the fellow on a trajectory to a productive scientific career.
Settori: Wave Energy; Hydrodynamics; Machine Learning; System Identification; Electronic Engineering; Model Predictive Control
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