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A method of noise optimization for Hardware Trojans detection based on BP neural network

机译:基于BP神经网络的硬件木马检测噪声优化方法。

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The Hardware Trojans act as a new malicious attack for the underlying hardware, the research of method based on side-channel analysis become one of important contents for information security. But the method of Hardware Trojans detection based on side-channel analysis easily been affected by noise, and its detection model has low precision. This article uses the technology of BP neural network for Hardware Trojan detection, puts forward a method for the noise optimization by wavelet transform. We implant a hardware Trojan circuit occupied areas 0.54% in AES circuit, and make the realization of circuit and power analysis based on the FPGA platform. Experimental results show that the method of noise optimization by wavelet can eliminate the high frequency noise, improve the Hardware Trojan detection sensitivity based on neural network, and the detection sensitivity increased from 92.2% to 99.2%.
机译:硬件木马是对底层硬件的一种新的恶意攻击,基于旁信道分析的方法的研究成为信息安全的重要内容之一。但是基于边信道分析的硬件木马检测方法容易受到噪声的影响,其检测模型精度较低。本文利用BP神经网络技术进行硬件木马检测,提出了一种基于小波变换的噪声优化方法。我们在AES电路中植入了硬件Trojan电路占地0.54%,并基于FPGA平台实现了电路和功耗分析。实验结果表明,小波噪声优化方法可以消除高频噪声,提高基于神经网络的硬件木马检测灵敏度,检测灵敏度从92.2%提高到99.2%。

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