New Adaptive Template Attacks Against Montgomery-Ladder-Based ECCs in IoT Devices

Chun-Heng You, Chih-Hao Chiang,Paul C.-P. Chao, Wen-Ching Lin, Kai-Hsin Chuang

IEEE Internet of Things Journal(2024)

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摘要
This study proposes a new adaptive template attack scheme for extracting secret keys in Montgomery-ladder-based elliptic curve cryptography (ECC) by effectively exploiting the leakage difference between key bits 1 and 0. To determine the key length and number of computation cycles per bit of the ECC to be attacked, the proposed adaptive attack employs an adaptive leakage-windowing technique and correlation analysis on the power trace obtained from an ECC module with a secret key. The point of interest (POI) is identified at the bit with the maximum difference in leakage between key bits 1 and 0 using the leakage window per bit. The trace from the victim ECC hardware with secret key is compared to those collected in prior templates with key bits 1 and 0 to recover the key. To validate the performance, a Xilinx Artix-7 FPGA chip was used to implement an Edward-curve digital signature algorithm (EdDSA) with Ed25519 and SHA-512 accelerators. The experimental results show a favorable key recovery rate of 100%. Further attack results are presented for the ECC modules with advanced countermeasures against side-channel attack, such as projective coordinate and/or scalar randomization It is validated that the proposed adaptive attack is able to exploit successfully 100% the keys of Montgomery-ladder-based ECC accelerators without and with countermeasures of projective coordinate or scalar randomization. Only a heavily resource-consumed ECC module with implemented projective coordinate, scalar randomization and a cryptographic secure random number generator is capable of defending the proposed attack.
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关键词
Template Attack,Edwards-Curve Digital Signature Algorithm (EdDSA),Montgomery Ladder,Differential Power Analysis (DPA),Points of Interest (POIs),Internet of Things (IoT) devices
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