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Real-Time Wave Excitation Forces Estimation: An Application on the ISWEC Device

Mauro Bonfanti, Andrew Hillis, Sergej Antonello Sirigu, Panagiotis Dafnakis, Giovanni Bracco, Giuliana Mattiazzo, Andrew Plummer

2020Journal of Marine Science and Engineering30 citationsDOIOpen Access PDF

Abstract

Optimal control strategies represent a widespread solution to increase the extracted energy of a Wave Energy Converter (WEC). The aim is to bring the WEC into resonance enhancing the produced power without compromising its reliability and durability. Most of the control algorithms proposed in literature require for the knowledge of the Wave Excitation Force (WEF) generated from the incoming wave field. In practice, WEFs are unknown, and an estimate must be used. This paper investigates the WEF estimation of a non-linear WEC. A model-based and a model-free approach are proposed. First, a Kalman Filter (KF) is implemented considering the WEC linear model and the WEF modelled as an unknown state to be estimated. Second, a feedforward Neural Network (NN) is applied to map the WEC dynamics to the WEF by training the network through a supervised learning algorithm. Both methods are tested for a wide range of irregular sea-states showing promising results in terms of estimation accuracy. Sensitivity and robustness analyses are performed to investigate the estimation error in presence of un-modelled phenomena, model errors and measurement noise.

Topics & Concepts

Robustness (evolution)Kalman filterArtificial neural networkControl theory (sociology)Reliability (semiconductor)Sensitivity (control systems)Computer scienceEngineeringPower (physics)Artificial intelligenceControl (management)Electronic engineeringPhysicsGeneChemistryBiochemistryQuantum mechanicsWave and Wind Energy SystemsUnderwater Vehicles and Communication SystemsOcean Waves and Remote Sensing
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