Enhancing Strong PUF Security With Nonmonotonic Response Quantization

IEEE Transactions on Very Large Scale Integration (VLSI) Systems(2023)

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摘要
Strong physical unclonable functions (PUFs) provide a low-cost authentication primitive for resource-constrained devices. However, most strong PUF architectures can be modeled through learning algorithms with a limited number of CRPs. In this article, we introduce the concept of nonmonotonic response quantization for strong PUFs. Responses depend not only on which path is faster but also on the distance between the arriving signals. Our experiments show that the resulting PUF has increased security against learning attacks. To demonstrate, we designed and implemented a nonmonotonically quantized ring oscillator-based PUF in 65-nm technology. Measurement results show nearly ideal uniformity and uniqueness with a bit error rate of 13.4% over the temperature range from 0 °C to 50 °C.
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关键词
Learning resilience,physical unclonable function (PUF),quantization,secure
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