Toward Physically Unclonable Functions from Plasmonics-Enhanced Silicon Disc Resonators
June 17, 2019 ยท Declared Dead ยท ๐ Journal of Lightwave Technology
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Authors
Johann Knechtel, Jacek Gosciniak, Alabi Bojesomo, Satwik Patnaik, Ozgur Sinanoglu, Mahmoud Rasras
arXiv ID
1907.13229
Category
physics.app-ph
Cross-listed
cs.CR,
physics.optics
Citations
12
Venue
Journal of Lightwave Technology
Last Checked
1 month ago
Abstract
The omnipresent digitalization trend has enabled a number of related malicious activities, ranging from data theft to disruption of businesses, counterfeiting of devices, and identity fraud, among others. Hence, it is essential to implement security schemes and to ensure the reliability and trustworthiness of electronic circuits. Toward this end, the concept of physically unclonable functions (PUFs) has been established at the beginning of the 21st century. However, most PUFs have eventually, at least partially, fallen short of their promises, which are unpredictability, unclonability, uniqueness, reproducibility, and tamper resilience. That is because most PUFs directly utilize the underlying microelectronics, but that intrinsic randomness can be limited and may thus be predicted, especially by machine learning. Optical PUFs, in contrast, are still considered as promising---they can derive strong, hard-to-predict randomness independently from microelectronics, by using some kind of "optical token." Here we propose a novel concept for plasmonics-enhanced optical PUFs, or peo-PUFs in short. For the first time, we leverage two highly nonlinear phenomena in conjunction by construction: (i) light propagation in a silicon disk resonator, and (ii) surface plasmons arising from nanoparticles arranged randomly on top of the resonator. We elaborate on the physical phenomena, provide simulation results, and conduct a security analysis of peo- PUFs for secure key generation and authentication. This study highlights the good potential of peo-PUFs, and our future work is to focus on fabrication and characterization of such PUFs.
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