Journals - MOST Wiedzy

Logo

ERROR MITIGATION ALGORITHM BASED ON BIDIRECTIONAL FITTING METHOD FOR COLLISION AVOIDANCE OF UNMANNED SURFACE VEHICLE

Abstract

Radars and sensors are essential devices for an Unmanned Surface Vehicle (USV) to detect obstacles. Their precision has improved significantly in recent years with relatively accurate capability to locate obstacles. However, small detection errors in the estimation and prediction of trajectories of obstacles may cause serious problems in accuracy, thereby damaging the judgment of USV and affecting the effectiveness of collision avoidance. In this study, the effect of radar errors on the prediction accuracy of obstacle position is studied on the basis of the autoregressive prediction model. The cause of radar error is also analyzed. Subsequently, a bidirectional adaptive filtering algorithm based on polynomial fitting and particle swarm optimization is proposed to eliminate the observed errors in vertical and abscissa coordinates. Then, simulations of obstacle tracking and prediction are carried out, and the results show the validity of the algorithm. Finally, the method is used to simulate the collision avoidance of USV, and the results show the validity and reliability of the algorithm.

Keywords:

Unmanned Surface Vehicle, Position prediction, Error mitigation, Autoregressive model, Particle Swarm Optimization

Details

Issue
Vol. 25 No. 4(100) (2018)
Section
Latest Articles
Published
18-01-2019
DOI:
https://doi.org/10.2478/pomr-2018-0127
Licencja:
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Open Access License

This journal provides immediate open access to its content under the Creative Commons BY 4.0 license. Authors who publish with this journal retain all copyrights and agree to the terms of the CC BY 4.0 license.

 

Authors

  • Lifei Song

    School of Transportation Wuhan University of Technology
  • Zhuo Chen

    Key Laboratory of High Performance Ship Technology, Wuhan University of Technology, Ministry of Education
  • Yunsheng Mao

    Key Laboratory of High Performance Ship Technology, Wuhan University of Technology, Ministry of Education
  • Zaopeng Dong

    Key Laboratory of High Performance Ship Technology, Wuhan University of Technology, Ministry of Education
  • Zuquan Xiang

    Key Laboratory of High Performance Ship Technology, Wuhan University of Technology, Ministry of Education

Download paper