pp. 2679-2691
S&M2648 Research Paper of Special Issue https://doi.org/10.18494/SAM.2021.3396 Published: August 10, 2021 Improved Ant Colony Algorithm-based Automated Guided Vehicle Path Planning Research for Sensor-aware Obstacle Avoidance [PDF] Rong Liu (Received March 23, 2021; Accepted June 23, 2021) Keywords: ant colony algorithm, automated guided vehicle, sensor-aware obstacle avoidance, path planning, logistics management
Automated guided vehicles (AGVs) are the main delivery vehicle for the horizontal transport of containers between the quayside and yard of automated container terminals (ACTs). The coordination of AGVs with the quayside bridge and yard bridge is necessary for loading and unloading operations at the wharf and to improve logistics management efficiency. Toward solving the problem of AGV path planning and sensor-aware obstacle avoidance in a dynamic complex environment for the Internet of Things (IoT), we proposed an improved ant colony algorithm based on an adaptive dynamic parameter adjustment strategy (IACA-ADPA) in this paper. The grid method is first used to construct a motion space model because it is easy to implement, analyze, store, and express, and make the AGV reach its target node safely and smoothly. Then the proposed IACA-ADPA is used for global path planning and for efficient AGV path design and adjustment. Finally, the improved time window adjusts the waiting time of the AGV to avoid local collisions. The simulation results of different scale paradigms show that the IACA-ADPA can effectively avoid road section obstacles and node obstacles, and improve the safety and efficiency of a multi-AGV system.
Corresponding author: Rong LiuThis work is licensed under a Creative Commons Attribution 4.0 International License. Cite this article Rong Liu, Improved Ant Colony Algorithm-based Automated Guided Vehicle Path Planning Research for Sensor-aware Obstacle Avoidance, Sens. Mater., Vol. 33, No. 8, 2021, p. 2679-2691. |