DARNS:A randomized multi-modulo RNS architecture for double-and-add in ECC to prevent power analysis side channel attacks

Jude Angelo Ambrose, H. Pettenghi, L. Sousa
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引用次数: 7

Abstract

Security in embedded systems is of critical importance since most of our secure transactions are currently made via credit cards or mobile phones. Power analysis based side channel attacks have been proved as the most successful attacks on embedded systems to retrieve secret keys, allowing impersonation and theft. State-of-the-art solutions for such attacks in Elliptic Curve Cryptography (ECC), mostly in software, hinder performance and repeatedly attacked using improved techniques. To protect the ECC from both simple power analysis and differential power analysis, as a hardware solution, we propose to take advantage of the inherent parallelization capability in Multi-modulo Residue Number Systems (RNS) architectures to obfuscate the secure information. Random selection of moduli is proposed to randomly choose the moduli sets for each key bit operation. This solution allows us to prevent power analysis, while still providing all the benefits of RNS. In this paper, we show that Differential Power Analysis is thwarted, as well as correlation analysis.
DARNS:一种随机多模RNS架构,用于ECC中的双加和加,以防止功率分析侧信道攻击
嵌入式系统的安全性至关重要,因为我们目前大多数安全交易都是通过信用卡或手机进行的。基于功率分析的侧信道攻击已被证明是对嵌入式系统检索密钥的最成功的攻击,允许冒充和盗窃。针对椭圆曲线加密(ECC)中此类攻击的最新解决方案,主要是在软件中,会阻碍性能并使用改进的技术重复攻击。为了保护ECC免受简单功耗分析和差分功耗分析的影响,作为一种硬件解决方案,我们建议利用多模剩余数系统(RNS)架构固有的并行化能力来混淆安全信息。提出了随机选择模的方法,随机选择每个密钥位操作的模集。该解决方案允许我们避免功率分析,同时仍然提供RNS的所有优点。在本文中,我们展示了差分功率分析的挫败,以及相关分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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