后 COVID 时代绿色物流运输网络的混合数据挖掘和数据驱动算法:美国案例研究

Sina Abbasi , Seyedeh Saeideh Mousavi , Ebrahim Farbod , Mohammad Yousefi Sorkhi , Mohammad Parvin
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引用次数: 0

摘要

本研究探讨了在后 COVID 环境下的商品分配问题,该环境中存在各种产品和庞大的客户群。由于互联网的普及和网上购物意愿的增强,客户数量有所增加。在商品种类繁多、客户数量众多的情况下,商品或服务的及时交付、分散仓库中订单的选择和去向、客户的仓库分配等问题难以解决。有人建议将数学模型与元启发式求解技术相结合来解决这些问题。然而,由于存在许多不同的位置情况,求解数学模型非常耗时耗力。由于计算能力和内存容量的进步,研究人员一直在寻找数据驱动的解决方案来解决这些问题。本研究旨在通过提出一种数据挖掘与数学建模相结合的混合数据驱动方法,以更短的时间高精度地求解数学定位模型,从而解决后 COVID 时代的商品多样性和消费者数量问题。本文基于美国真实案例的数据实施。
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Hybrid data mining and data-driven algorithms for a green logistics transportation network in the post-COVID era: A case study in the USA
This study examines the problem of item allocation in a post-COVID environment with various products and a large customer base. The number of customers has increased due to the rise of internet access and the growing willingness to shop online. Problems such as the timely delivery of goods or services, the selection and destination of orders in decentralized warehouses, and the allocation of warehouses to customers are difficult to overcome with a large variety of items and many customers. It has been proposed that mathematical modeling in combination with meta-heuristic solution techniques solve these problems. However, solving mathematical models is very time-consuming and labor-intensive because there are many different location situations. Due to computing power and memory capacity advances, researchers have been looking at data-driven solutions to these problems. This study aims to tackle the diversity of commodities and the number of consumers in the post-COVID era by proposing a hybrid data-driven approach that combines data mining and mathematical modeling to solve mathematical location models with high accuracy in less time. This paper was implemented based on data from real cases in the USA.
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