安全SAR ADC抗功率侧信道攻击的lsb -重用保护技术

Lele Fang, Jiahao Liu, Yan Zhu, Chi-Hang Chan, R. Martins
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引用次数: 1

摘要

逐次逼近寄存器模数转换器(SAR ADC)以其结构简单、高能效等优点被广泛应用于物联网系统中。不幸的是,SAR ADC在转换不同的输入信号时会耗散各种独特的功率特性,导致严重的功率侧信道攻击(PSA)。对手可以通过仅测量来自模拟电源引脚(AVDD),数字电源引脚(DVDD)和/或参考引脚(Ref)的功率信息来准确地导出输入信号,这些引脚提供给训练有素的机器学习模型。本文首先对SAR ADC的功率侧信道攻击(PSA)进行了详细的数学分析,得出与其他电源引脚相比,来自AVDD的功率信息最容易受到PSA攻击的结论。在此基础上,提出了一种利用SAR ADC本身LSB的特性对PSA进行保护的LSB复用保护技术。最后,在一个采用65nm技术实现的12位5 MS/s安全SAR ADC中验证了该技术。利用AVDD的电流波形,采用卷积神经网络(CNN)算法,在无保护的SAR ADC中,从LSB到MSB的预测精度可以达到>99%。在提出的保护下,比特精度下降到50%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LSB-Reused Protection Technique in Secure SAR ADC against Power Side-Channel Attack
Successive approximation register analog-to-digital converter (SAR ADC) is widely adopted in the Internet of Things (IoT) systems due to its simple structure and high energy efficiency. Unfortunately, SAR ADC dissipates various and unique power features when it converts different input signals, leading to severe vulnerability to power side-channel attack (PSA). The adversary can accurately derive the input signal by only measuring the power information from the analog supply pin (AVDD), digital supply pin (DVDD), and/or reference pin (Ref) which feed to the trained machine learning models. This paper first presents the detailed mathematical analysis of power side-channel attack (PSA) to SAR ADC, concluding that the power information from AVDD is the most vulnerable to PSA compared with the other supply pin. Then, an LSB-reused protection technique is proposed, which utilizes the characteristic of LSB from the SAR ADC itself to protect against PSA. Lastly, this technique is verified in a 12-bit 5 MS/s secure SAR ADC implemented in 65nm technology. By using the current waveform from AVDD, the adopted convolutional neural network (CNN) algorithms can achieve >99% prediction accuracy from LSB to MSB in the SAR ADC without protection. With the proposed protection, the bit-wise accuracy drops to around 50%.
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