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Cannot avoid penalty for fluctuating order arrival rate? Let's minimize

机译:无法避免对波动订单到货率的惩罚?让我们尽量减少

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Warehouse management system assigns a preferred completion time for every order based on the customer profile and the good(s) that is/are ordered. Even though employing multi-robot systems to manage goods movement bring operational efficiency in a warehouse, it is difficult to meet these soft deadlines of tasks in the peak hours/seasons. This can impact the respective businesses significantly as the lateness of task completion incurs a direct/indirect penalty. In this work, we develop an online task scheduling algorithm for such a multi-robot system, called Online Minimum Penalty Scheduling (OMPS). Though there exists a large number of multi-robot task scheduling algorithms, they are not suitable (or less efficient) for a system where each task has a soft deadline and accumulates penalty if it is executed beyond its deadline. Moreover, the lack of knowledge of future tasks (online scheduling) makes task allocation a much more difficult job. OMPS provides a robust, scalable, and near-optimal online task schedule. By comparing with the state-of-the-art algorithm, we show that OMPS attracts up to 78% less penalty when a significant number of tasks are bound to miss the deadline. Additionally, it achieves a competitive ratio of up to 1 when compared with a state-of-the-art offline task scheduling algorithm.
机译:仓库管理系统根据客户配置文件分配每个订单的首选完成时间,以及订购的良好状态。尽管采用多机器人系统来管理商品运动,但在仓库中带来运营效率,难以满足高峰时段/季节中的这些任务截止日期。这可能会因任务完成的迟到而显着影响各自的业务,引发直接/间接罚款。在这项工作中,我们开发了一种用于这种多机器人系统的在线任务调度算法,称为在线最低惩罚计划(OMP)。虽然存在大量的多机器人任务调度算法,但对于一个系统而言,它们不适合(或更少有效),其中每个任务具有软截止日期并累积惩罚,如果它超出其截止日期。此外,对未来任务的知识缺乏了解(在线调度)使任务分配更加困难。 OMP提供了强大,可扩展,近最佳的在线任务计划。通过与最先进的算法进行比较,我们表明OMPS在肯定会错过截止日期时,常常吸引了高达78%的惩罚。此外,与最先进的离线任务调度算法相比,它达到最多1的竞争比率。

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