Baggage Routing with Scheduled Departures using Deep Reinforcement Learning

René Arendt Sørensen, Jens Rosenberg, H. Karstoft
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Abstract

As the number of travellers in airports increase, the load on the Baggage Handling Systems naturally gets higher. To accommodate this, airports can either expand or optimize their Baggage Handling System. Therefore, capacity is a common parameter to evaluate Baggage Handling Systems, and methods that can increase the capacity are highly valued within the airport industry. Previous work has shown that Deep Reinforcement Learning methods can be applied to increase the system capacity when a high load is constantly applied. It is, however, still not clear, how well such Deep Reinforcement Learning agents perform when the load of the system can change according to distributed flight schedules and realistic distributions of incoming baggage. In this work, we apply Deep Reinforcement Learning to a simulated Baggage Handling System with flight schedules and a distribution of incoming baggage generalized from data from a real airport. As opposed to previous work, we allow empty baggage totes to be stored at the entry point until new baggage arrives. The centralized Deep Reinforcement Learning agent must learn to balance the number of baggage totes in the entry queue, while also learning optimal routing strategies, ensuring that all bags meet their scheduled departure times. The performance is measured by the average number of delivered bags and the average number of rush bags that occurred in the example environment. We find that by using Deep Reinforcement Learning in this type of congested system with scheduled departures, we can reduce the number of rush bags, compared to a dynamic shortest path method with deadlock avoidance, resulting in a higher number of delivered bags in the system.
使用深度强化学习的计划出发行李路由
随着机场旅客数量的增加,行李处理系统的负荷自然也会增加。为了适应这种情况,机场可以扩展或优化他们的行李处理系统。因此,容量是评估行李处理系统的一个常用参数,能够增加容量的方法在机场行业受到高度重视。以前的工作表明,深度强化学习方法可以应用于增加系统容量时,高负载的持续应用。然而,目前还不清楚,当系统的负载可以根据分布式航班时刻表和实际的入境行李分布而改变时,这种深度强化学习代理的表现如何。在这项工作中,我们将深度强化学习应用于一个模拟的行李处理系统,该系统具有航班时刻表和从真实机场的数据中归纳出来的入境行李分布。与以前的工作相反,我们允许将空的行李袋存放在入口处,直到新行李到达。集中式深度强化学习代理必须学会平衡入境队列中的行李数量,同时学习最佳路线策略,确保所有行李都符合预定的出发时间。性能是通过在示例环境中出现的交付包的平均数量和匆忙包的平均数量来衡量的。我们发现,与避免死锁的动态最短路径方法相比,通过在这种具有预定出发的拥挤系统中使用深度强化学习,我们可以减少rush bags的数量,从而导致系统中交付的bags数量增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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