论文标题
Covid-19期间紧急医疗面膜生产的实时神经网络计划
Real-Time Neural Network Scheduling of Emergency Medical Mask Production during COVID-19
论文作者
论文摘要
在新型冠状病毒肺炎(Covid-19)爆发期间,对医疗面具的需求很大。面具制造商通常会收到大量超出其能力的订单。因此,对于制造商来说,尽可能有效地安排掩盖生产任务至关重要。但是,现有的调度方法通常需要大量的计算资源,因此不能有效地应对订单的激增。在本文中,我们提出了一个端到端神经网络,用于安排实时生产任务。神经网络采用一系列生产任务,作为预测不同时间表的分布的输入,采用强化学习来使用负面的总拖延作为奖励信号来优化网络参数,并最终为调度问题提供了高质量的解决方案。我们采用了建议的方法来安排在中国Covid-19峰期间为医疗面具制造商安排紧急生产任务。计算结果表明,神经网络调度程序可以在几秒钟内通过数百个任务解决问题实例。神经网络调度程序产生的目标函数值(即,总的加权迟到)明显优于现有的建设性启发式方法,并且与最先进的元启发式学的计算时间在实践中是无法承受的。
During the outbreak of the novel coronavirus pneumonia (COVID-19), there is a huge demand for medical masks. A mask manufacturer often receives a large amount of orders that are beyond its capability. Therefore, it is of critical importance for the manufacturer to schedule mask production tasks as efficiently as possible. However, existing scheduling methods typically require a considerable amount of computational resources and, therefore, cannot effectively cope with the surge of orders. In this paper, we propose an end-to-end neural network for scheduling real-time production tasks. The neural network takes a sequence of production tasks as inputs to predict a distribution over different schedules, employs reinforcement learning to optimize network parameters using the negative total tardiness as the reward signal, and finally produces a high-quality solution to the scheduling problem. We applied the proposed approach to schedule emergency production tasks for a medical mask manufacturer during the peak of COVID-19 in China. Computational results show that the neural network scheduler can solve problem instances with hundreds of tasks within seconds. The objective function value (i.e., the total weighted tardiness) produced by the neural network scheduler is significantly better than those of existing constructive heuristics, and is very close to those of the state-of-the-art metaheuristics whose computational time is unaffordable in practice.