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Decision support system for adaptive sourcing and inventory management in small- and medium-sized enterprises

机译:中小企业自适应采购和库存管理的决策支持系统

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Elevated business uncertainties and competition over recent years have caused changes to the data-driven supply chain management of sourcing and inventories across industries. However, only large-sized enterprises have the resources to harness data for aiding their decision-making and planning. By contrast, small- and medium-sized enterprises (SMEs) commonly have limited resources and knowledge, which affects their ability to collect and utilize data. Thus, it is a challenge for them to implement advanced decision support tools to mitigate the effects of market uncertainties. This paper proposes a decision support system (DSS) for sourcing and inventory management, with the aims of helping SMEs compile and exploit data, and supporting their decisions under business ambiguities. The DSS was developed using a simulation-optimization approach by incorporating an artificial neural network and a genetic algorithm for problem representation and optimizing decision support solutions. The exploitation of observational and empirical data reduces the burden of data compilation obtained from unorganized data sources across SME operations. Further, uncertainty factors such as raw material demand, price, and supply lead time were considered. When implemented in a medium-sized food industry company, the DSS can provide decision support solutions that integrate the selection of recommended suppliers and optimal order quantities. It can also help decision-makers to shape their inventory management policies under uncertain raw material demands, while also considering service levels, sales promotions, lead times, and material availability from multiple suppliers. Consequently, implementation of the DSS helped to reduce the total purchased raw material costs by an average of 51.62% and reduced the order interval and on-hand inventory costs by an average of 54.24%.
机译:近年来的业务不确定因素和竞争提高了对跨行业采购和库存的数据驱动供应链管理造成了变化。但是,只有大型企业有资源来利用数据来实现他们的决策和规划。相比之下,中小型企业(中小企业)通常具有有限的资源和知识,这影响了他们收集和利用数据的能力。因此,他们实现高级决策支持工具是一个挑战,以减轻市场不确定性的影响。本文提出了一个用于采购和库存管理的决策支持系统(DSS),其目的在于帮助中小企业编译和利用数据,并支持业务歧义的决策。通过掺入人工神经网络和解决问题表示和优化决策支持解决方案的遗传算法,使用模拟优化方法开发DSS。对观察和经验数据的开发减少了从中小企业运营中未经组织的数据源获得的数据编译的负担。此外,考虑了原材料需求,价格和供应交换时间等不确定性因素。在中型食品工业公司实施时,DSS可以提供​​决策支持解决方案,可以整合推荐供应商的选择和最佳订单量。它还可以帮助决策者在不确定的原材料需求下塑造其库存管理政策,同时考虑到多个供应商的服务水平,销售促销,交货时间和材料可用性。因此,DSS的实施有助于将总购买的原材料成本降低了平均51.62%,并将订单间隔和手工库存成本降低了54.24%。

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