Semiconductor manufacturing is a notoriously complex and costly multi-step process involving a long sequence of operations on expensive and quantity-limited equipment. Recent chip shortages and their impacts have highlighted the importance of semiconductors in the global supply chains and how reliant on those our daily lives are. Due to the investment cost, environmental impact, and time scale needed to build new factories, it is difficult to ramp up production when demand spikes. This work introduces a method to successfully learn to schedule a semiconductor manufacturing facility more efficiently using deep reinforcement and self-supervised learning. We propose the first adaptive scheduling approach to handle complex, continuous, stochastic, dynamic, modern semiconductor manufacturing models. Our method outperforms the traditional hierarchical dispatching strategies typically used in semiconductor manufacturing plants, substantially reducing each order's tardiness and time until completion. As a result, our method yields a better allocation of resources in the semiconductor manufacturing process.
翻译:半导体制造是一个臭名昭著的复杂和昂贵的多步骤过程,涉及对昂贵和数量有限的设备进行一系列长期操作。最近的芯片短缺及其影响凸显了半导体在全球供应链中的重要性以及我们日常生活中如何依赖这些人的重要性。由于投资成本、环境影响和建造新工厂所需的时间规模,当需求激增时很难加快生产。这项工作引入了一种方法,以便利用深度增强和自我监督的学习,成功地安排半导体制造设施。我们提出了第一个适应性时间安排方法,以处理复杂、连续、随机、动态、现代半导体制造模型。我们的方法超过了半导体制造厂通常使用的传统等级发送战略,大大缩短了每个订单的延迟和时间,直到完成。结果,我们的方法使得半导体制造过程中的资源得到更好的分配。