Novel strong PUF based on nonlinearity of MOSFET subthreshold operation

Many strong silicon physical unclonable functions (PUFs) are known to be vulnerable to machine-learning attacks due to linear separability of the output function. This significantly limits their potential as reliable security primitives. We introduce a novel strong silicon PUF based on the exponenti...

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Bibliographic Details
Published inHOST : 2013 IEEE International Symposium on Hardware-Oriented Security and Trust : 2-3 June 2013 pp. 13 - 18
Main Authors Kalyanaraman, Mukund, Orshansky, Michael
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.06.2013
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ISBN1479905593
9781479905591
DOI10.1109/HST.2013.6581558

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Summary:Many strong silicon physical unclonable functions (PUFs) are known to be vulnerable to machine-learning attacks due to linear separability of the output function. This significantly limits their potential as reliable security primitives. We introduce a novel strong silicon PUF based on the exponential current-voltage behavior in subthreshold region of FET operation which injects strong nonlinearity into the response of the PUF. The PUF, which we term subthreshold current array (SCA) PUF, is implemented as a pair of two-dimensional n × k transistor arrays with all devices subject to stochastic variability operating in subthreshold region. Our PUF is fundamentally different from earlier attempts to inject nonlinearity via digital control techniques, which could also be used with SCA-PUF. Voltages produced by nominally identical arrays are compared to produce a random binary response. SCA-PUF shows excellent security properties. The average inter-class Hamming distance, a measure of uniqueness, is 50.2%. The average intra-class Hamming distance, a measure of response stability, is 4.17%. Crucially, we demonstrate that the introduced PUF is much less vulnerable to modeling attacks. Using machine-learning techniques of support-vector machine with radial basis function kernel and logistic regression for best nonlinear learnability, we observe that "information leakage" (rate of error reduction with learning) is much lower than for delay-based PUFs. Over a wide range of the number of observed challenge-response pairs, the error rate is 3-35X higher than for the delay-based PUF. We also demonstrate an enhanced SCAPUF design utilizing XOR scrambling and show that it has an up to 30X higher error rate compared to the XOR delay-based PUF.
ISBN:1479905593
9781479905591
DOI:10.1109/HST.2013.6581558