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Optimal ATM Cash Replenishment Planning in a Smart City using Deep Q-Network

机译:使用Deep Q-Network的智能城市最佳ATM现金补货计划

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摘要

ATMs are no longer just machines, these connected devices are smart, intelligent things in the Internet of Things (IoT). Access to cash for many in society is remaining essential during the current COVID-19 lock-down around the globe. A cash inventory management system is necessary to decide whether ATM should be replenished on each day of the week. In this paper, we study the real-time cash replenishment planning problem under outflow uncertainty where the fee of the security companies grows if the replenishment ends up falling on a weekends/holidays. Our model is based by the Double Deep Q-Network (DQN) algorithm which combines popular Q-learning with a deep neural network. The proposed method is used to control replenishment operation in order to minimize replenishment cost where the cash demand changes dynamically at each day. Experiment results show that our proposed method can work effectively on the real outflow time-series and it is able to reduce the ATM operational cost compared with the other state-of-the-art cash demand prediction schemes.
机译:自动取款机不再只是机器,这些连接的设备是智能,智能的东西在内容中(物联网)。在当前的Covid-19锁定期间,在全球的Covid-19锁定期间仍然是必要的。现金库存管理系统是决定是否应在一周中的每一天补充ATM。在本文中,我们研究了水中的实时现金补充计划问题,如果补充的补货最终落在周末/假期的落下,则在漏出的不确定性下的实时现金补充计划问题。我们的模型基于双层Q-Network(DQN)算法,其与深神经网络相结合的流行Q-Learning。该方法用于控制补货操作,以最大限度地减少在每天动态变化现金需求的补货费用。实验结果表明,我们所提出的方法可以有效地在实际流出时间系列上工作,与其他最先进的现金需求预测方案相比,它能够降低ATM运营成本。

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