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A systematic literature review of supply chain decision making supported by the Internet of Things and Big Data Analytics

机译:物联网和大数据分析支持供应链决策的系统文献综述

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摘要

The willingness to invest in Internet of Things (IoT) and Big Data Analytics (BDA) seems not to depend on supply nor demand of technological innovations. The required sensing and communication technologies have already matured and became affordable for most organizations. Businesses on the other hand require more operational data to address the dynamic and stochastic nature of supply chains. So why should we wait for the actual implementation of tracking and monitoring devices within the supply chain itself? This paper provides an objective overview of state-of-the-art IoT developments in today's supply chain and logistics research. The main aim is to find examples of academic literature that explain how organizations can incorporate real-time data of physically operating objects into their decision making. A systematic literature review is conducted to gain insight into the IoT's analytical capabilities, resulting into a list of 79 cross-disciplinary publications. Most researchers integrate the newly developed measuring devices with more traditional ICT infrastructures to either visualize the current way of operating, or to better predict the system's future state. The resulting health/condition monitoring systems seem to benefit production environments in terms of dependability and quality, while logistics operations are becoming more flexible and faster due to the stronger emphasis on prescriptive analytics (e.g., association and clustering). Further research should extend the IoT's perception layer with more context-aware devices to promote autonomous decision making, invest in wireless communication networks to stimulate distributed data processing, bridge the gap in between predictive and prescriptive analytics by enriching the spectrum of pattern recognition models used, and validate the benefits of the monitoring systems developed.
机译:投资事物互联网(物联网)和大数据分析(BDA)的意愿似乎不依赖于供应,也不依赖于技术创新的需求。所需的感应和通信技术已经成熟,并且对于大多数组织而言是负担得起的。另一方面的企业需要更多的操作数据来解决供应链的动态和随机性质。那么我们为什么要等待供应链本身内的跟踪和监控设备的实际实现?本文提供了当今供应链和物流研究中最先进的物联网发展概述。主要目的是寻找学术文献的例子,解释组织如何将物理操作对象的实时数据纳入其决策。进行系统文献综述,以了解IOT的分析能力,导致79个跨学科出版物的列表。大多数研究人员将新开发的测量设备集成了更传统的ICT基础设施,以便可视化当前的操作方式,或者更好地预测系统的未来状态。由此产生的健康/条件监测系统似乎在可靠性和质量方面受益生产环境,而物流业务越来越灵活,由于规定的分析强调(例如,关联和聚类)。进一步的研究应该通过更多的背景感知设备扩展到IOT的感知层,以促进自主决策,投资无线通信网络来激发分布式数据处理,通过丰富所用模式识别模型的频谱来弥合预测和规定分析之间的差距。并验证监控系统的益处。

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