Trautmann J, Teich J, Wildermann S (2022)
Publication Language: English
Publication Type: Conference contribution, Original article
Publication year: 2022
Publisher: IEEE
Conference Proceedings Title: 30th IEEE International Symposium on Field-Programmable Custom Computing Machines
DOI: 10.1109/FCCM53951.2022.9786190
FPGAs offer fast and reliable near-data processing and are therefore 
suitable candidates for implementing IoT and edge computing systems. As 
they are usually deployed in exposed locations, they are vulnerable to 
physical attacks, especially Side-Channel Analysis (SCA). 
In this 
paper, we characterize side-channels and how they can be exploited for 
SCA on FPGA-based off-the-shelf boards, i.e. without having to make any 
modifications to the board, hardware, or software. The basic requirement
 for any kind of SCA is that the individual Cryptographic Operations 
(COs) in the side-channel traces can be detected. 
To this end, we 
apply a SCA for semi-automatic CO detection that can be generically 
applied off-the-shelf to a wide variety of boards. Additionally, we 
introduce a new metric called Signal of COs to Noise Ratio (SCONR), that
 allows to quantify the pronouncedness of COs versus noise in a side 
channel. We then evaluate side channels measured on three different 
boards containing Xilinx 7 series FPGAs. We further investigate the 
influence of other sources of noise and how much they affect the 
attackability of a system.
Our results show that FPGAs have a high 
vulnerability to SCA in general and that even noise from an operating 
system will not hinder the recording and finding of COs in an automated 
fashion as long as there are no countermeasures in place. Finally, SCONR
 converges after fewer recorded traces and gives a clearer indication 
whether a side channel is susceptible to this type of automated attack 
than leakage assessment techniques such as TVLA.
APA:
Trautmann, J., Teich, J., & Wildermann, S. (2022). Characterization of Side Channels on FPGA-based Off-The-Shelf Boards against Automated Attacks. In 30th IEEE International Symposium on Field-Programmable Custom Computing Machines. New York City, US: IEEE.
MLA:
Trautmann, Jens, Jürgen Teich, and Stefan Wildermann. "Characterization of Side Channels on FPGA-based Off-The-Shelf Boards against Automated Attacks." Proceedings of the 30th IEEE International Symposium on Field-Programmable Custom Computing Machines, New York City IEEE, 2022.
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