Improved Decentral Task Allocation for Autonomous Guided Vehicle Systems based on Karis Pro
Keywords:
AGV, Karis Pro, Task Allocation, Simulation, AnyLogicAbstract
In this paper, we extended an existing decentralised method for allocating tasks to AGVs, by additionally considering vehicles which already are assigned to a task. This was achieved by also taking into account the opportunity costs arising from a vehicle passing a current task to another vehicle and subsequently accepting a new task. This loosened restriction is enabling the vehicle fleet for a higher flexibility, which can be used for improving the efficiency of the overall system. By means of simulation, our findings confirm the notion that our extended method - namely Karis Pro+ - leads to lower traffic density and higher flexibility, both of which are important KPI for large-scale transport vehicle systems.
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Copyright (c) 2020 Maximilian Selmair
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.