Conference In: cienciavitae
Ocean Vessel Trajectory estimation and prediction based on Extended Kalman Filter
Proceedings of the Second International Conference on Adaptive and Self-adaptive Systems and Applications (ADAPTIVE 2010)
— 2010
Key information
Authors:
Published in
2010
Abstract
The accurate estimation and prediction of the trajectories of maneuvering vessels in ocean navigation are important tools to improve maritime safety and security. Therefore, many conventional ocean navigation systems and Vessel Traffic Management & Reporting Services are equipped with Radar facilities for this purpose. However, the accuracy of the predictions of maneuvering trajectories of vessels depends mainly on the goodness of estimation of vessel position, velocity and acceleration. Hence, this study presents a maneuvering ocean vessel model based on a curvilinear motion model with the measurements based on a linear position model for the same purpose. Furthermore, the system states and measurements models associated with a white Gaussian noise are also assumed. The Extended Kalman Filter is proposed as an adaptive filter algorithm for the estimation of position, velocity and acceleration that are used for prediction of maneuvering ocean vessel trajectory. Finally, the proposed models are implemented and successful computational results are obtained with respect to prediction of maneuvering trajectories of vessels in ocean navigation in this study.
Publication details
Authors in the community:
Lokukaluge Prasad Channa Perera
ist33250
Carlos Guedes Soares
ist11869
Publication version
VoR - Version of Record
Title of the publication container
Proceedings of the Second International Conference on Adaptive and Self-adaptive Systems and Applications (ADAPTIVE 2010)
Location of the conference
Lisbon, Portugal
Conference date start
November 21, 2010
Conference date end
November 26, 2010
First page or article number
14
Last page
20
Fields of Science and Technology (FOS)
other-engineering-and-technologies - Other engineering and technologies
Keywords
- Trajectory estimation
- Trajectory prediction
- Target tracking
- Extended Kalman Filter
- Curvilinear motion model
Publication language (ISO code)
eng - English
Rights type:
Restricted access