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Detection of Hardware Trojans using Machine Learning in SoC FPGAs

机译:使用SoC FPGA中的机器学习检测硬件木马

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In this paper, a hardware trojan detection technique was proposed and implemented. Initially, different hardware Trojan benchmarks based on AES encryption are collected and each of them was separately simulated using vivado design suite. The simulated code was synthesized and implemented on the SoC FPGA board. After the writing of the bitstream for the benchmarks, the temperature and voltage values are estimated and separately saved so that the values are used as the dataset for the next phase. In the next phase, a supervised classification technique is utilized. A neural network is trained with the help of the data collected from the various benchmarks. The created model is tested against new data benchmarks which are having Trojans and not having Trojans and their accuracy was evaluated.
机译:本文提出并实现了一种硬件木马检测技术。最初,收集了基于AES加密的不同硬件Trojan基准,并使用vivado设计套件分别对每个基准进行了仿真。仿真的代码已合成并在SoC FPGA板上实现。在为基准写入位流之后,将估算温度和电压值并分别保存,以便将这些值用作下一阶段的数据集。在下一阶段,将使用监督分类技术。借助从各种基准收集的数据来训练神经网络。将针对具有特洛伊木马和不具有特洛伊木马的新数据基准测试创建的模型,并评估其准确性。

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