首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >SIMULATION AIDED, KNOWLEDGE BASED ROUTING FOR AGVS IN A DISTRIBUTION WAREHOUSE
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SIMULATION AIDED, KNOWLEDGE BASED ROUTING FOR AGVS IN A DISTRIBUTION WAREHOUSE

机译:分布式仓库中AGVS的基于仿真的知识路由

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Traditional routing algorithms for real world AGV systems in warehouses compute static paths, which can only be adjusted to a limited degree in the event of unplanned disturbances. In our approach, we aim for a higher reactivity in such events and plan small steps of a path incrementally. The current traffic situation and also up to date time constraints for each AGV can then be considered. We compute each step in real time based on empirical data stored in a knowledge base. It contains information covering a broad temporal horizon of the system to prevent costly decisions that may occur when only considering short term consequences. The knowledge is gathered through machine learning from the results of multiple experiments in a discrete event simulation during preprocessing. We implemented and experimentally evaluated the algorithm in a test scenario and achieve a natural robustness against delays and failures.
机译:用于仓库中现实世界中的AGV系统的传统路由算法会计算静态路径,只有在发生计划外干扰时才可以将其调整到有限的程度。在我们的方法中,我们的目标是在此类事件中提高反应性,并逐步计划路径的小步骤。然后可以考虑每个AGV的当前交通状况以及最新的时间限制。我们基于存储在知识库中的经验数据实时计算每个步骤。它包含的信息涵盖了系统的广泛时间范围,以防止仅考虑短期后果时可能发生的昂贵决策。在预处理期间,通过离散事件模拟中多个实验的结果通过机器学习来收集知识。我们在测试场景中实施并通过实验评估了该算法,并针对延迟和故障实现了自然的鲁棒性。

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