基于rfid的批量召回中的工业隐私

Leonardo Weiss Ferreira Chaves, F. Kerschbaum
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引用次数: 20

摘要

批量召回是制造商和生产者的一个重要话题。特别是在食品和制药行业,生产商有义务实施召回,以遵守法律。在极端情况下,不合规可能导致生命损失,例如当变质的食品或药品到达消费者手中时。当前的批量召回做法既昂贵又困难,因为许多供应链合作伙伴需要将其ERP系统中的数据结合起来。射频识别(RFID)可用于有效地实施批次召回,例如,通过存储所有制造步骤中使用的零件/成分的批号。但这引发了对行业隐私的担忧,因为竞争对手可能会利用这些信息来深入了解整个供应链。我们通过在RFID标签上存储跟踪信息并对信息进行加密来克服这个问题,这样它只在召回时可用。我们使用基于身份的加密对信息进行加密,并进一步允许沿着供应链进行通用的再加密,以防止密文泄露信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial Privacy in RFID-based Batch Recalls
Batch recalls are an important topic for manufacturers and producers. Especially in the food and in the pharmaceutical industry, producers are obliged to implement recalls in order to comply with legislation. In extreme cases, non-compliance can cause loss of life, e.g. when perished food or medicine reaches the consumer. Current batch recall practice is expensive and difficult, since many supply chain partners need to combine the data from their ERP systems. Radio frequency identification (RFID) can be used to efficiently implement batch recalls, e.g. by storing batch numbers from the parts/ingredients used in all manufacturing steps. But this raises concerns on industrial privacy, since competitors could use this information to gain insight into the whole supply chain. We overcome this problem by storing tracing information on RFID tags and encrypting the information, such that it is only available in case of a recall. We encrypt the information using identity based encryption and furthermore allow universal re-encryption along the supply chain to prevent information leakages from the ciphertexts.
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