Author:
Zhang Lin,Zhang Yingjie,Zeng Manni,Li Yangfan
Abstract
Purpose
The purpose of this paper is to put forward a path planning method in complex environments containing dynamic obstacles, which improves the performance of the traditional A* algorithm, this method can plan the optimal path in a short running time.
Design/methodology/approach
To plan an optimal path in a complex environment with dynamic and static obstacles, a novel improved A* algorithm is proposed. First, obstacles are identified by GoogLeNet and classified into static obstacles and dynamic obstacles. Second, the ray tracing algorithm is used for static obstacle avoidance, and a dynamic obstacle avoidance waiting rule based on dilate principle is proposed. Third, the proposed improved A* algorithm includes adaptive step size adjustment, evaluation function improvement and path planning with quadratic B-spline smoothing. Finally, the proposed improved A* algorithm is simulated and validated in real-world environments, and it was compared with traditional A* and improved A* algorithms.
Findings
The experimental results show that the proposed improved A* algorithm is optimal and takes less execution time compared with traditional A* and improved A* algorithms in a complex dynamic environment.
Originality/value
This paper presents a waiting rule for dynamic obstacle avoidance based on dilate principle. In addition, the proposed improved A* algorithm includes adaptive step adjustment, evaluation function improvement and path smoothing operation with quadratic B-spline. The experimental results show that the proposed improved A* algorithm can get a shorter path length and less running time.
Subject
Industrial and Manufacturing Engineering,Control and Systems Engineering
Reference16 articles.
1. Semi-lazy probabilistic roadmap: a parameter-tuned, resilient and robust path planning method for manipulator robots;The International Journal of Advanced Manufacturing Technology,2016
2. Roadmap-based motion planning in dynamic environments;IEEE Transactions on Robotics,2005
3. A formal basis for the heuristic determination of minimum cost paths;IEEE Transactions on Systems Science and Cybernetics,1968
4. Multi-objective mobile robot path planning based on a* search,2016
5. An ant colony optimization algorithm for partitioning graphs with supply and demand;Applied Soft Computing,2016
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