4.6 Article

An Optimization-Based Path Planning Approach for Autonomous Vehicles Using the DynEFWA-Artificial Potential Field

Journal

IEEE TRANSACTIONS ON INTELLIGENT VEHICLES
Volume 7, Issue 2, Pages 263-272

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIV.2021.3123341

Keywords

Path planning; Autonomous vehicles; Vehicle dynamics; Roads; Mathematical models; Heuristic algorithms; Safety; Autonomous vehicles; path planning; artificial potential field; enhanced fireworks algorithm

Funding

  1. National Natural Science Foundation of China [51975048, U1764257]
  2. Beijing Institute of Technology Research Fund Program for Young Scholars

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A real-time path planning method for autonomous vehicles using the dynamic enhanced firework algorithm-APF is proposed in this paper. By improving the traditional APF method to enhance path safety and smoothness, the autonomous vehicle successfully avoids obstacles and arrives at the goal position using the proposed method.
With the rapid development of autonomous driving technology, collision avoidance has become a research hotspot since it has the potential to increase safety. To obtain a collision-free path, the artificial potential field (APF) is widely used as a path planning method. APF is capable of establishing functional relationships between the vehicle and surrounding objects. However, the function features of the traditional APF method can cause autonomous vehicles to fall into the local minimum, and the generated zigzag path may be difficult to follow. Motivated by these challenges, this paper proposes a real-time path planning method for autonomous vehicles using the dynamic enhanced firework algorithm-APF. Firstly, to improve the safety and smoothness of the planned path by the traditional APF method, the constraints of the vehicle dynamics and different types of obstacles are taken into consideration. Secondly, an optimization problem is formulated to find an optimal path with the least cost in the driving area. Finally, the proposed method is verified with both a simulation and a hardware-in-loop test environment. The results show that the studied autonomous vehicle successfully avoids obstacles and arrives at the goal position by using the proposed path-planning method, and the path smoothness is improved.

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