强化学习
计算机科学
人工智能
过程(计算)
决策树
机器学习
深度学习
生产(经济)
人工神经网络
生产线
质量(理念)
工业工程
工程类
操作系统
哲学
宏观经济学
认识论
经济
机械工程
作者
Timo P. Gros,Joschka Gros,Verena Wolf
标识
DOI:10.1109/wsc48552.2020.9383884
摘要
Computer simulations of manufacturing processes are in widespread use for optimizing production planning and order processing. If unforeseeable events are common, real-time decisions are necessary to maximize the performance of the manufacturing process. Pre-trained AI-based decision support offers promising opportunities for such time-critical production processes. Here, we explore the effectiveness of deep reinforcement learning for real-time decision making in a car manufacturing process. We combine a simulation model of a central production part, the line buffer, with deep reinforcement learning algorithms, in particular with deep Q-Learning and Monte Carlo tree search. We simulate two different versions of the buffer, a single-agent and a multi-agent one, to generate large amounts of data and train neural networks to represent near-optimal strategies. Our results show that deep reinforcement learning performs extremely well and the resulting strategies provide near-optimal decisions in real-time, while alternative approaches are either slow or give strategies of poor quality.
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