Particle Filter Based Ship State and Parameter Estimation for Vessel Maneuvers
Abstract
Vessel states and parameters estimation is essential for maneuvering and collision avoidance. This study presents an application of particle filter (PF) algorithm to estimate vessel states and parameters. Particularly, to reduce the impact of the vessel’s underactuated property and complex environmental disturbance, the estimation process contains a kinematic curvilinear motion model that describes vessel’s motion. The estimated result can help navigators or ship onboard computers well comprehend the current vessel maneuvering condition. Besides, it can also serve as the necessary data source for vessel’s future trajectory prediction. Therefore, it can be integrated into vessel’s situation awareness (SA) module that supports safety navigation for both conventional and autonomous vessels.
Publisher
International Society of Offshore & Polar EngineersCitation
Wang, Perera, Batalden: Particle Filter Based Ship State and Parameter Estimation for Vessel Maneuvers. In: ISOPE. Proceedings of the Thirty-first (2021) International Ocean and Polar Engineering Conference, Rhodes, Greece, June 20 – 25, 2021, 2021. International Society of Offshore & Polar EngineersMetadata
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