Simulation-Based Deep Reinforcement Learning For Modular Production Systems

N. Feldkamp, S. Bergmann, S. Strassburger
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Abstract

Modular production systems aim to supersede the traditional line production in the automobile industry. The idea here is that highly customized products can move dynamically and autonomously through a system of flexible workstations without fixed production cycles. This approach has challenging demands regarding planning and organization of such systems. Since each product can define its way through the system freely and individually, implementing rules and heuristics that leverage the flexibility in the system in order to increase performance can be difficult in this dynamic environment. Transport tasks are usually carried out by automated guided vehicles (AGVs). Therefore, integration of AI-based control logics offer a promising alternative to manually implemented decision rules for operating the AGVs. This paper presents an approach for using reinforcement learning (RL) in combination with simulation in order to control AGVs in modular production systems. We present a case study and compare our approach to heuristic rules.
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基于仿真的模块化生产系统深度强化学习
模块化生产系统旨在取代传统的流水线生产。这里的想法是,高度定制的产品可以通过灵活的工作站系统动态和自主地移动,而不需要固定的生产周期。这种方法在规划和组织此类系统方面具有挑战性。由于每个产品都可以自由和单独地定义其通过系统的方式,因此在这种动态环境中,实现利用系统灵活性来提高性能的规则和启发式可能会很困难。运输任务通常由自动导引车(agv)执行。因此,集成基于人工智能的控制逻辑为操作agv提供了一种有希望的替代方案,以替代手动实现的决策规则。本文提出了一种将强化学习(RL)与仿真相结合的方法来控制模块化生产系统中的agv。我们提出了一个案例研究和比较我们的方法启发式规则。
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