Adaptive learning of inland ship power propulsion under environmental disturbances
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hdl:2117/407911
Document typeArticle
Defense date2022-10
Rights accessOpen Access
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is licensed under a Creative Commons license
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Attribution-NonCommercial-NoDerivs 4.0 International
ProjectNOVIMOVE - Novel inland waterway transport concepts for moving freight effectively (EC-H2020-858508)
Abstract
This paper presents an adaptive approximation-based scheme for learning a partially known ship power propulsion plant under various environmental conditions. Considering the effect of water depth on the engine power, a dynamic model is defined comprised of the engine dynamics and the 1-DoF ship manoeuvring dynamics. The modelling challenge is the determination of ship resistance. To meet this challenge analytical modelling of ship resistance is combined with an error-filtering online learning (EFOL) scheme for computing an approximation of the unmodeled part of ship resistance related to wind and air. After simulations under multiple weather conditions, the trained model was demonstrated to efficiently estimate the unmodelled part of the ship resistance for an inland vessel.
Description
This research is supported by the project “Novel inland waterway transport concepts for moving freight effectively (NOVIMOVE)”. This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 858508.
CitationDann, N.; Segovia, P.; Reppa, V. Adaptive learning of inland ship power propulsion under environmental disturbances. "IFAC-PapersOnLine", Octubre 2022, vol. 55, núm. 31.
ISSN2405-8963
Publisher versionhttps://www.sciencedirect.com/science/article/pii/S2405896322024466
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