Affiliation:
1. School of Science, Wuhan University of Technology, Wuhan 430070, China
Abstract
Aiming at the problem of difficult obstacle avoidance for unmanned ground vehicles (UGVs) in complex dynamic environments, an improved A*-APF algorithm (BA*-MAPF algorithm) is proposed in this paper. Addressing the A* algorithm’s challenges of lengthy paths, excess nodes, and lack of smoothness, the BA*-MAPF algorithm integrates a bidirectional search strategy, applies interpolation to remove redundant nodes, and uses cubic B-spline curves for path smoothing. To rectify the traditional APF algorithm’s issues with local optimization and ineffective dynamic obstacle avoidance, the BA*-MAPF algorithm revises the gravitational field function by incorporating a distance factor, and fine-tunes the repulsive field function to vary with distance. This adjustment ensures a reduction in gravitational force as distance increases and moderates the repulsive force near obstacles, facilitating more effective local path planning and dynamic obstacle navigation. Through our experimental analysis, the BA*-MAPF algorithm has been validated to significantly outperform existing methods in achieving optimal path planning and dynamic obstacle avoidance, thereby markedly boosting path planning efficiency in varied scenarios.
Reference37 articles.
1. Multilevel Humanlike Motion Planning for Mobile Robots in Complex Indoor Environments;Zhang;IEEE Trans. Autom. Sci. Eng.,2019
2. Trends in Intelligent Unmanned Autonomous Systems;Zhang;Unmanned Syst. Technol.,2018
3. A Review of Driverless Vehicle Research and Development Outlook;Pan;Technol. Innov. Appl.,2017
4. An overview of the development of self-driving cars;Chen;Auto Ind. Res.,2018
5. Research on path planning of three-neighbor search A* algorithm combined with artificial potential field;Chen;Int. J. Adv. Robot. Syst.,2021
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