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首页> 外文期刊>Journal of modelling in management >Improving the operational efficiency of outbound retail logistics using clustering of retailers and consumers
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Improving the operational efficiency of outbound retail logistics using clustering of retailers and consumers

机译:通过零售商和消费者的聚集来提高对外零售物流的运营效率

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Purpose - The purpose of this paper is to investigate ways to improve operational efficiency of outbound retail logistics considering retailers and consumers by using clustering approach. The retailers are allocated to serve a cluster of consumers. This study demonstrates economic and environment benefits that are achieved in terms of reduced delivery time, transportation cost and carbon emissions. Design/methodology/approach - This study is based on modeling the outbound logistics of a retail chain by using Kohonen self-organizing map (KSOM). KSOM is an unsupervised learning and data analysis method for vector quantization, which is based on Euclidean distance method to form clusters. Findings - Appropriate clustering of retailers and consumers provides efficient locations of retailers that are identified using the KSOM training algorithm. It provides optimum distance with lesser delivery time, transportation cost and carbon emissions. Research limitations/implications - The implication of research includes modeling of operational procedures in a retail supply chain, which is a crucial task for a business. These operations positively affect the reduction in inventory and distribution costs, improvement in customer service and responsiveness to the ever-changing markets of consumer durables. Overall results are insightful and practical in the sense that implementation would result in consumer convenience, eco-friendly environment etc. Originality/value - There is not enough research available on outbound retail logistics considering retailers and consumers using clustering approach.
机译:目的-本文的目的是研究通过使用聚类方法来提高零售商和消费者的出站零售物流运营效率的方法。分配零售商以服务于一群消费者。这项研究表明,在减少交货时间,运输成本和碳排放方面可以实现经济和环境效益。设计/方法/方法-这项研究基于使用Kohonen自组织图(KSOM)对零售链的外向物流进行建模的基础。 KSOM是一种用于向量量化的无监督学习和数据分析方法,它基于欧氏距离方法形成聚类。调查结果-零售商和消费者的适当聚集可提供使用KSOM训练算法确定的零售商的有效位置。它提供了最佳的距离,同时缩短了交货时间,运输成本和碳排放量。研究的局限性/含义-研究的含义包括对零售供应链中的操作程序进行建模,这对企业而言是一项至关重要的任务。这些操作对库存和分销成本的降低,客户服务的改善以及对不断变化的耐用消费品市场的响应能力有积极影响。总体结果是有见地且实用的,从某种意义上讲,实施会给消费者带来便利,生态友好的环境等。原创性/价值-考虑到零售商和消费者使用聚类方法,对出站零售物流的研究不足。

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