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An enhanced classification-based golden chips-free hardware Trojan detection technique

机译:基于分类的增强型无金屑硬件特洛伊木马检测技术

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Recently, integrated circuits (ICs) are becoming increasing vulnerable to hardware Trojans. Most of existing works require golden chips to provide references for hardware Trojan detection. However, obtaining a golden chip is extremely difficult or even not exists. This paper presents a novel automated hardware Trojan detection technique based on enhanced two-class classification while eliminating the need of golden chips after fabrication. We formulate the Trojan detection problem into a classification problem, and train the algorithms using simulated ICs during IC design flow. The algorithm will form a classifier which can automatically identify Trojan-free and Trojan-inserted ICs during test-time. Moreover, we propose several optional optimized methods to enhance the technique: 1) we propose adaptive iterative optimization of one algorithm by focusing on errors, in which the weight-adjusting are based on how successful the algorithm was in the previous iteration; 2) we analyze the misclassified ICs' numbers of certain algorithms and present the matched algorithm-pairs; 3) we alter the algorithms to take into account of the costs of making different detection decisions, called cost-sensitive detection; 4) we present the suitable algorithm settings against high level of process variations. Experiment results on benchmark circuits show that the proposed technique can detect both known Trojans and various unknown Trojans with high accuracy and recall (90%~100%). Since we didn't add any extra circuit to the design, there is no overhead of this approach.
机译:最近,集成电路(IC)变得越来越容易受到硬件木马的攻击。现有的大多数作品都需要黄金芯片来提供硬件特洛伊木马检测的参考。但是,获得金芯片非常困难,甚至根本不存在。本文提出了一种基于增强的两类分类的新颖的自动硬件木马检测技术,同时消除了制造后对金芯片的需求。我们将特洛伊木马检测问题公式化为分类问题,并在IC设计流程中使用仿真的IC训练算法。该算法将构成一个分类器,该分类器可以在测试期间自动识别没有Trojan的和插入Trojan的IC。此外,我们提出了几种可选的优化方法来增强该技术:1)通过关注误差提出一种算法的自适应迭代优化,其中权重调整基于算法在先前迭代中的成功程度; 2)我们分析某些算法的错误分类的IC数量,并给出匹配的算法对; 3)我们更改算法以考虑做出不同检测决策的成本,称为成本敏感检测; 4)我们针对高水平的工艺变化提出了合适的算法设置。在基准电路上的实验结果表明,该技术能够同时检测出已知的特洛伊木马和各种未知的特洛伊木马,具有较高的准确率和查全率(90%〜100%)。由于我们没有在设计中添加任何额外的电路,因此这种方法没有任何开销。

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