首页> 外文会议>Distributed Computing Systems Workshops (ICDCSW), 2012 32nd International Conference on >A Case Study of CPNS Intelligence: Provenance Reasoning over Tracing Cross Contamination in Food Supply Chain
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A Case Study of CPNS Intelligence: Provenance Reasoning over Tracing Cross Contamination in Food Supply Chain

机译:CPNS情报案例研究:追溯食品供应链中交叉污染的出处推理

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A Cyber-Physical System (CPS) is a system featuring a tight combination and coordination of the system's computational and physical elements. CPS integrates the executive ability of the physical world and the intelligence of the cyber world to add new capabilities to real-world physical systems. Recent years has witnessed the thriving of various applications in Cyber-Physical Networked System (CPNS), one of which is food distribution industry. Food supply chain is a typical case of model of networked systems. As food safety is becoming an increasing concern over the world, assurance in the quality and trace ability in food supply chain is essential. While data collection of food is available with CPNS, intelligent sensing and process in CPNS is insufficient, e.g., though it is easy to trace the origin of food, finding the source of cross contamination is an unsolved critical issue. In this paper, a case study of CPNS intelligence is presented to provide solutions for ceasing outbreaks of food borne disease. As the case of provenance reasoning, a heuristic approach to tracing cross contamination is studied, which is comprised of dynamic partition sampling strategy and heuristic tracing algorithm. With satisfactory performance and accuracy results for our approach in our simulation, we further suggest strategies regarding provenance reasoning to address the challenges of provenance as an open issue in cloud computing and domain specific intelligence (D.S.I) in Internet of Things (IoT) and CPS.
机译:网络物理系统(CPS)是一个系统,其系统计算和物理元素紧密结合并相互协调。 CPS整合了物理世界的执行能力和网络世界的智能,为现实世界的物理系统增加了新的功能。近年来,见证了网络物理联网系统(CPNS)中各种应用程序的蓬勃发展,其中之一是食品分销行业。食品供应链是网络系统模型的典型案例。随着食品安全日益成为世界关注的焦点,确保食品供应链的质量和追溯能力至关重要。尽管CPNS可以收集食物的数据,但是CPNS中的智能感测和处理仍然不足,例如,尽管很容易追踪食物的来源,但找到交叉污染的来源仍然是一个悬而未决的关键问题。在本文中,我们以CPNS情报为例进行了研究,为解决食源性疾病暴发提供了解决方案。以物源推理为例,研究了一种启发式的交叉污染追踪方法,该方法由动态分区采样策略和启发式追踪算法组成。通过在仿真中获得令人满意的性能和准确性结果,我们进一步提出了关于物源推理的策略,以解决物源作为物联网(IoT)和CPS中的云计算和领域特定智能(D.S.I)中的开放问题的挑战。

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