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LBIST-PUF: An LBIST Scheme Towards Efficient Challenge-Response Pairs Collection and Machine-Learning Attack Tolerance Improvement

机译:Lbist-Puf:Lbist方案,旨在有效挑战 - 反应对收集和机器学习攻击公差改进

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Device identification using challenge-response pairs (CRPs), in which the response is obtained from a physically unclonable function (PUF), is a promising countermeasure for the counterfeit of integrated circuits (ICs). To achieve secure device identification, a large number of CRPs are collected by the manufacturers, thereby increasing the measurement costs. This paper proposes a novel scheme, which employs a logic built-in self-test (LBIST) circuit, to efficiently collect the CRPs during production tests. As a result, no additional measurement is required for the CRP collection. In addition, the proposed technique can counter machine-learning (ML) attacks because of the complicated relationship between challenge and response through the LBIST circuit. Through the proof-of-concept implementation, in which a field-programmable gate array (FPGA) is used, we demonstrate the PUF performance can be evaluated by a test pattern generated by the LBIST circuit. Furthermore, the vulnerability due to ML attacks using a support vector machine (SVM) and random forest (RF) is lowered by more than two times compared to the naive usage of PUF.
机译:使用挑战响应对(CRP)的设备识别,其中响应是从物理上不可渗透的功能(PUF)获得的,是集成电路(IC)的假冒伪劣的有希望的对策。为了实现安全的设备识别,制造商收集了大量CRP,从而提高了测量成本。本文提出了一种新颖的方案,它采用逻辑内置自检(LBIST)电路,在生产测试期间有效地收集CRP。结果,CRP收集不需要额外的测量。此外,所提出的技术可以根据LBIST电路之间的挑战与响应之间的复杂关系来抵消机器学习(ML)攻击。通过概念证据实现,其中使用现场可编程门阵列(FPGA),我们演示了PUF性能可以通过由Lbist电路产生的测试模式来评估。此外,与使用支持向量机(SVM)和随机森林(RF)的ML攻击引起的漏洞由PUF的幼稚用法相比减少了两次以上。

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