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Beat Frequency Detector--Based High-Speed True Random Number Generators: Statistical Modeling and Analysis

Beat Frequency Detector--Based High-Speed True Random Number Generators: Statistical Modeling and... Beat Frequency Detector­Based High-Speed True Random Number Generators: Statistical Modeling and Analysis YINGJIE LAO, QIANYING TANG, CHRIS H. KIM, and KESHAB K. PARHI, University of Minnesota True random number generators (TRNGs) are crucial components for the security of cryptographic systems. In contrast to pseudo­random number generators (PRNGs), TRNGs provide higher security by extracting randomness from physical phenomena. To evaluate a TRNG, statistical properties of the circuit model and raw bitstream should be studied. In this article, a model for the beat frequency detector­based high-speed TRNG (BFD-TRNG) is proposed. The parameters of the model are extracted from the experimental data of a test chip. A statistical analysis of the proposed model is carried out to derive mean and variance of the counter values of the TRNG. Our statistical analysis results show that mean of the counter values is inversely proportional to the frequency difference of the two ring oscillators (ROSCs), whereas the dynamic range of the counter values increases linearly with standard deviation of environmental noise and decreases with increase of the frequency difference. Without the measurements from the test data, a model cannot be created; similarly, without a model, performance of a TRNG cannot be predicted. The key http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png ACM Journal on Emerging Technologies in Computing Systems (JETC) Association for Computing Machinery

Beat Frequency Detector--Based High-Speed True Random Number Generators: Statistical Modeling and Analysis

Beat Frequency Detector--Based High-Speed True Random Number Generators: Statistical Modeling and Analysis


Beat Frequency Detector­Based High-Speed True Random Number Generators: Statistical Modeling and Analysis YINGJIE LAO, QIANYING TANG, CHRIS H. KIM, and KESHAB K. PARHI, University of Minnesota True random number generators (TRNGs) are crucial components for the security of cryptographic systems. In contrast to pseudo­random number generators (PRNGs), TRNGs provide higher security by extracting randomness from physical phenomena. To evaluate a TRNG, statistical properties of the circuit model and raw bitstream should be studied. In this article, a model for the beat frequency detector­based high-speed TRNG (BFD-TRNG) is proposed. The parameters of the model are extracted from the experimental data of a test chip. A statistical analysis of the proposed model is carried out to derive mean and variance of the counter values of the TRNG. Our statistical analysis results show that mean of the counter values is inversely proportional to the frequency difference of the two ring oscillators (ROSCs), whereas the dynamic range of the counter values increases linearly with standard deviation of environmental noise and decreases with increase of the frequency difference. Without the measurements from the test data, a model cannot be created; similarly, without a model, performance of a TRNG cannot be predicted. The key contribution of the proposed approach lies in fitting the model to measured data and the ability to use the model to predict performance of BFD-TRNGs that have not been fabricated. Several novel alternate BFD-TRNG architectures are also proposed; these include parallel BFD, cascade BFD, and parallel-cascade BFD. These TRNGs are analyzed using the proposed model, and it is shown that the parallel BFD structure requires less area per bit, whereas the cascade BFD structure has a larger dynamic range while maintaining the same mean of the counter values as the original BFD-TRNG. It is shown that 3.25M and 4M random bits can be obtained per counter...
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Publisher
Association for Computing Machinery
Copyright
Copyright © 2016 by ACM Inc.
ISSN
1550-4832
DOI
10.1145/2866574
Publisher site
See Article on Publisher Site

Abstract

Beat Frequency Detector­Based High-Speed True Random Number Generators: Statistical Modeling and Analysis YINGJIE LAO, QIANYING TANG, CHRIS H. KIM, and KESHAB K. PARHI, University of Minnesota True random number generators (TRNGs) are crucial components for the security of cryptographic systems. In contrast to pseudo­random number generators (PRNGs), TRNGs provide higher security by extracting randomness from physical phenomena. To evaluate a TRNG, statistical properties of the circuit model and raw bitstream should be studied. In this article, a model for the beat frequency detector­based high-speed TRNG (BFD-TRNG) is proposed. The parameters of the model are extracted from the experimental data of a test chip. A statistical analysis of the proposed model is carried out to derive mean and variance of the counter values of the TRNG. Our statistical analysis results show that mean of the counter values is inversely proportional to the frequency difference of the two ring oscillators (ROSCs), whereas the dynamic range of the counter values increases linearly with standard deviation of environmental noise and decreases with increase of the frequency difference. Without the measurements from the test data, a model cannot be created; similarly, without a model, performance of a TRNG cannot be predicted. The key

Journal

ACM Journal on Emerging Technologies in Computing Systems (JETC)Association for Computing Machinery

Published: Apr 13, 2016

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