基于RFID的供应链多维防伪异常监测模型

Mengjie Luo, Xiao-ming Yao, Chaoyu Li
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引用次数: 0

摘要

在启用rfid的供应链中存在伪造和误操作两种异常情况,但现有的防伪模型无法对其进行区分。为此,本文基于异常活动及其依赖关系的定义,提出了大数据技术产生的“频繁模式”的异常检测规则。从多维度角度出发,结合EPC数据和之前节点发送的先验信息,可以有效区分伪造活动和操作异常。在此基础上,实现了一个安全的rfid供应链防伪与异常监控可视化系统,并取得了满意的效果
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Multi-dimensional Anti-counterfeiting Anomaly Monitoring Model Based on RFID in Supply Chain
There are two kinds of abnormal conditions in the RFID-enabled supply chain such as forgery and miss operation, but the existing anti-counterfeiting model is not used to distinguish them. In this regard, based on the definition of abnormal activity and its dependencies, this paper proposes the abnormality detection rules of the “frequent pattern” yielded by big data techniques. From a multi-dimensional perspective, combined with EPC data and prior information sent from the previous nodes, it can effectively distinguish between forgery activities and operational anomalies. Consequently, asecure visualization system for anti-counterfeiting and anomaly monitoring in rfid-enabled supply chain is implemented with satisfactory results
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