减轻侧信道攻击的安全片上网络

Farid Kenarangi, Inna Partin-Vaisband
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引用次数: 0

摘要

硬件安全是集成电路设计和制造中的一个关键问题。当代硬件威胁包括数十种先进的侵入性和非侵入性攻击,这些攻击危及现代ic的安全性。针对单个威胁,已经提出了许多针对攻击的对策,以交换系统的功率,面积,速度和设计复杂性来保证安全性。这些典型的开销加上先进技术节点严格的性能要求和现代集成电路的高复杂性,往往使多种对策的协同设计变得不切实际。在本文中,利用片上分配网络来检测那些需要非侵入性的硬件安全威胁,但与受攻击的操作设备进行物理交互(例如,在侧信道攻击中收集敏感信息的测量设备)。利用所提出的方法,恶意物理干扰对被攻击设备的影响以片上电压变化的形式被捕获,并用于检测受损设备中的恶意活动。机器学习(ML)安全IC被训练成基于片上分配网络中信号的感知变化来预测系统安全性。经过训练的ML集成电路分布在片上,产生了一个强大的、高可信度的片上安全网络。为了阻止主动攻击,可以在攻击检测后以经济有效的方式执行各种所需的反措施。本文从功率攻击、时序攻击和电磁分析攻击三个方面论证了这些安全网络的适用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security Network On-Chip for Mitigating Side-Channel Attacks
Hardware security is a critical concern in design and fabrication of integrated circuits (ICs). Contemporary hardware threats comprise tens of advance invasive and non-invasive attacks for compromising security of modern ICs. Numerous attack-specific countermeasures against the individual threats have been proposed, trading power, area, speed, and design complexity of a system for security. These typical overheads combined with strict performance requirements in advanced technology nodes and high complexity of modern ICs often make the codesign of multiple countermeasures impractical. In this paper, on-chip distribution networks are exploited for detecting those hardware security threats that require non-invasive, yet physical interaction with an operating device-under-attack (e.g., measuring equipment for collecting sensitive information in side-channel attacks). With the proposed approach, the effect of the malicious physical interference with the device-under-attack is captured in the form of on-chip voltage variations and utilized for detecting malicious activity in the compromised device. A machine learning (ML) security IC is trained to predict system security based on sensed variations of signals within on-chip distribution networks. The trained ML ICs are distributed on-chip, yielding a robust and high-confidence security network on-chip. To halt an active attack, a variety of desired counteractions can be executed in a cost-effective manner upon the attack detection. The applicability and effectiveness of these security networks is demonstrated in this paper with respect to power, timing, and electromagnetic analysis attacks.
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