An Emulation Platform for Evaluating the Reliability of Deep Neural Networks

C. D. Sio, S. Azimi, L. Sterpone
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引用次数: 7

Abstract

In recent years, Deep Neural Networks have been increasingly adopted by a wide range of applications characterized by high-reliability requirements, such as aerospace and automotive. In this paper, we propose an FPGA-based platform for emulating faults in the architecture of DNNs. The approach exploits the reconfigurability of FPGAs to mimic faults affecting the hardware implementing DNNs. The platform allows the emulation of various kinds of fault models enabling the possibility to adapt to different types, devices, and architectures. In this work, a fault injection campaign has been performed on a convolutional layer of AlexNet, demonstrating the feasibility of the platform. Furthermore, the errors induced in the layer are analyzed with respect to the impact on the whole network inference classification.
深度神经网络可靠性评估的仿真平台
近年来,深度神经网络越来越多地应用于航空航天和汽车等具有高可靠性要求的应用领域。在本文中,我们提出了一个基于fpga的平台来模拟深度神经网络结构中的故障。该方法利用fpga的可重构性来模拟影响dnn硬件实现的故障。该平台允许仿真各种故障模型,从而能够适应不同的类型、设备和体系结构。在这项工作中,在AlexNet的卷积层上执行了故障注入活动,证明了该平台的可行性。进一步分析了该层中产生的误差对整个网络推理分类的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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