Autonomous obstacle avoidance of an unmanned surface vehicle based on cooperative manoeuvring

Author:

Wu Peng,Xie Shaorong,Liu Hengli,Li Ming,Li Hengyu,Peng Yan,Li Xiaomao,Luo Jun

Abstract

Purpose Autonomous obstacle avoidance is important in unmanned surface vehicle (USV) navigation. Although the result of obstacle detection is often inaccurate because of the inherent errors of LIDAR, conventional methods typically emphasize on a single obstacle-avoidance algorithm and neglect the limitation of sensors and safety in a local region. Conventional methods also fail in seamlessly integrating local and global obstacle avoidance algorithms. This paper aims to present a cooperative manoeuvring approach including both local and global obstacle avoidance. Design/methodology/approach The global algorithm used in our USV is the Artificial Potential Field-Ant Colony Optimization (APF-ACO) obstacle-avoidance algorithm, which plans a relative optimal path on the specified electronic map before the cruise of USV. The local algorithm is a multi-layer obstacle-avoidance framework based on a single LIDAR to present an efficient solution to USV path planning in the case of sensor errors and collision risks. When obstacles are within a layer, the USV uses a corresponding obstacle-avoidance algorithm. Then the USV moves towards the global direction according to fuzzy rules in the fuzzy layer. Findings The presented method offers a solution for obstacle avoidance in a complex environment. The USV follows the global trajectory planed by the APF-ACO algorithm. While, the USV can bypass current obstacle in the local region based on the multi-layer method effectively. This fact was validated by simulations and field trials. Originality/value The method presented in this paper takes advantage of algorithm integration that remedies errors of obstacle detection. Simulation and experiments were also conducted for performance evaluation.

Publisher

Emerald

Subject

Industrial and Manufacturing Engineering,Computer Science Applications,Control and Systems Engineering

Reference33 articles.

1. A fast two-stage ACO algorithm for robotic path planning;Neural Computing and Applications,2013

2. Evaluation of a new heart beat classification method based on ABC algorithm, comparison with GA, PSO and ACO classifiers;International Journal of Reasoning-based Intelligent Systems,2014

3. 3D Surveillance coverage using maps extracted by a monocular slam algorithm,2011

4. Ant System: optimization by a colony of cooperating agents;IEEE Transactions on Systems, Man, and Cybernetics–Part B,1996

5. The Autonomous Maritime Navigation (AMN) project: field tests, autonomous and cooperative behaviors, data fusion, sensors, and vehicles;Journal of Field Robotics,2010

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