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Published February 27, 2024 | Version v1
Preprint Open

Complexity Assessment of Analog Security Primitives Using the Disentropy of Autocorrelation

  • 1. ROR icon École Centrale de Lyon
  • 2. ROR icon Institut National des Sciences Appliquées de Lyon
  • 3. ROR icon Claude Bernard University Lyon 1
  • 4. CPE lyon
  • 5. ROR icon Institut des Nanotechnologies de Lyon
  • 6. ROR icon French National Centre for Scientific Research
  • 7. CPE Lyon
  • 8. ROR icon RMIT University
  • 9. ROR icon Grenoble Alpes University
  • 10. ROR icon Université Savoie Mont Blanc
  • 11. Grenoble INP
  • 12. ROR icon Institut de Microélectronique, Electromagnétisme et Photonique

Description

The study of regularity in signals can be of great importance, typically in medicine to analyse electrocardiogram (ECG) or electromyography (EMG) signals, but also in climate studies, finance or security. In this work we focus on security primitives such as Physical Unclonable Functions (PUFs) or Pseudo-Random Number Generators (PRNGs). Such primitives must have a high level of complexity or entropy in their responses to guarantee enough security for their applications. There are several ways of assessing the complexity of their responses, especially in the binary domain. With the development of analog PUFs such as optical (photonic) PUFs, it would be useful to be able to assess their complexity in the analog domain when designing them, for example, before converting analog signals into binary. In this numerical study, we decided to explore the potential of the disentropy of autocorrelation as a measure of complexity for security primitives as PUFs or PRNGs with analog output or responses. We compare this metric to others used to assess regularities in analog signals such as Approximate Entropy (ApEn) and Fuzzy Entropy (FuzEn). We show that the disentropy of autocorrelation is able to differentiate between well-known PRNGs and non-optimised or bad PRNGs in the analog and binary domain with a better contrast than ApEn and FuzEn. Next, we show that the disentropy of autocorrelation is able to detect small patterns injected in PUFs responses and then we applied it to photonic PUFs simulations.

Files

Complexity_Assessment_of_Analog_Security_Primitives_Using_the_Disentropy_of_Autocorrelation_2_2024.pdf

Additional details

Funding

NEUROPULS – NEUROmorphic energy-efficient secure accelerators based on Phase change materials aUgmented siLicon photonicS 101070238
European Commission

Software