{"title":"元库存管理决策:一个理论模型","authors":"","doi":"10.1016/j.ijpe.2024.109339","DOIUrl":null,"url":null,"abstract":"<div><p>The manufacturing industry leverages the traceability and visibility of Industrial 4.0 to integrate digital and physical twins for solving the intricacy of a production system. Physical entities can be converted into digital twins with smart IoT (Internet of Things) devices and computational techniques. Research efforts have generally focused on the development of digital twin models for basic practical applications. Advanced applications of digital twins have not been widely reported. An innovative use of digital twins for inventory management has only been analysed theoretically and reported as meta-inventory management for the first time by Wang and Huang (2023). This paper extends the novel concept of meta-inventory by using a theoretical Newsvendor model for original equipment manufacturing (OEM) and own brand manufacturing (OBM) factories. The impacts of meta-inventory on both supply chain members, including the factory and its downstream retailer, are investigated through two kinds of response models (e.g., hybrid and separate response models). Analytical and numerical results show that a factory achieves better performance by using a separate model since it clarifies the responsibility of digital twins. The hybrid response model holds a higher proportion of digital inventory, but its final profits are less than that in the separate model due to fewer orders and higher prices and costs of uncertainty. OBM can better leverage the advantage of digital twins than OEM. Also, both supply chain members benefit from the implementation of meta-inventory out of profit increase, price reduction, and risk hedging. 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引用次数: 0
摘要
制造业利用工业 4.0 的可追溯性和可视性,整合数字孪生和物理孪生,以解决生产系统错综复杂的问题。物理实体可通过智能物联网设备和计算技术转化为数字孪生。研究工作一般都集中在为基本实际应用开发数字孪生模型上。数字孪生的高级应用尚未得到广泛报道。只有 Wang 和 Huang(2023 年)首次从理论上分析了数字孪生在库存管理中的创新应用,并将其报告为元库存管理。本文通过使用原始设备制造(OEM)和自有品牌制造(OBM)工厂的新闻供应商(Newsvendor)理论模型,扩展了元库存的新概念。本文通过两种响应模型(如混合响应模型和单独响应模型)研究了元库存对供应链成员(包括工厂及其下游零售商)的影响。分析和数值结果表明,工厂使用独立模型能取得更好的绩效,因为它明确了数字双胞胎的责任。混合响应模型持有较高比例的数字库存,但由于订单较少、价格和不确定性成本较高,其最终利润低于独立模型。与原始设备制造商相比,OBM 能更好地利用数字双胞胎的优势。此外,实施元库存后,供应链成员都能从利润增加、价格下降和风险对冲中获益。这项研究为生产基地实施数字孪生提供了指导,减少了他们对投资元库存的顾虑。
Meta-inventory management decisions: A theoretical model
The manufacturing industry leverages the traceability and visibility of Industrial 4.0 to integrate digital and physical twins for solving the intricacy of a production system. Physical entities can be converted into digital twins with smart IoT (Internet of Things) devices and computational techniques. Research efforts have generally focused on the development of digital twin models for basic practical applications. Advanced applications of digital twins have not been widely reported. An innovative use of digital twins for inventory management has only been analysed theoretically and reported as meta-inventory management for the first time by Wang and Huang (2023). This paper extends the novel concept of meta-inventory by using a theoretical Newsvendor model for original equipment manufacturing (OEM) and own brand manufacturing (OBM) factories. The impacts of meta-inventory on both supply chain members, including the factory and its downstream retailer, are investigated through two kinds of response models (e.g., hybrid and separate response models). Analytical and numerical results show that a factory achieves better performance by using a separate model since it clarifies the responsibility of digital twins. The hybrid response model holds a higher proportion of digital inventory, but its final profits are less than that in the separate model due to fewer orders and higher prices and costs of uncertainty. OBM can better leverage the advantage of digital twins than OEM. Also, both supply chain members benefit from the implementation of meta-inventory out of profit increase, price reduction, and risk hedging. This research provides guidance for manufacturing sites to implement digital twins and reduce their concerns on investing in meta-inventory.
期刊介绍:
The International Journal of Production Economics focuses on the interface between engineering and management. It covers all aspects of manufacturing and process industries, as well as production in general. The journal is interdisciplinary, considering activities throughout the product life cycle and material flow cycle. It aims to disseminate knowledge for improving industrial practice and strengthening the theoretical base for decision making. The journal serves as a forum for exchanging ideas and presenting new developments in theory and application, combining academic standards with practical value for industrial applications.