空间环境下卷积神经网络的量化退化

E. Altland, Julia Mahon Kuzin, Ali Mohammadian, A. S. Abdalla, William C. Headley, Alan J. Michaels, Jonathan Castellanos, Joshua Detwiler, Paolo Fermin, Raquel Ferrá, Conor Kelly, Casey Latoski, Tiffany Ma, Thomas Maher
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引用次数: 2

摘要

机器学习在图像处理、自然语言处理和直接摄取射频信号方面的应用继续加速。然而,很少有人关注这些机器学习算法在实际硬件上实施时的弹性,以及在执行过程中遭受无意和/或恶意错误时的弹性,例如来自空间的单事件干扰(SEU)。本文提出了一系列结果,量化了当卷积神经网络(cnn)在单精度数字表示中遭受选择误码时发生的性能退化的速率和水平。本文提供了基于十个不同错误案例事件的结果,以隔离影响,表明CNN的性能可以逐渐降低或减少到基于错误出现的随机猜测。当部署到空间辐射环境时,这些退化被转化为四个cnn的预期使用寿命。讨论还为正在进行的研究提供了基础,这些研究增强了随机和恶意错误事件下神经网络架构和空间实现的整体弹性,对当前实现进行了重大改进。未来的工作是扩展这些CNN弹性评估,以建筑设计元素和众所周知的纠错方法为条件,也介绍了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifying Degradations of Convolutional Neural Networks in Space Environments
Advances in machine learning applications for image processing, natural language processing, and direct ingestion of radio frequency signals continue to accelerate. Less attention, however, has been paid to the resilience of these machine learning algorithms when implemented on real hardware and subjected to unintentional and/or malicious errors during execution, such as those occurring from space-based single event upsets (SEU). This paper presents a series of results quantifying the rate and level of performance degradation that occurs when convolutional neural nets (CNNs) are subjected to selected bit errors in single-precision number representations. This paper provides results that are conditioned upon ten different error case events to isolate the impacts showing that CNN performance can be gradually degraded or reduced to random guessing based on where errors arise. The degradations are then translated into expected operational lifetimes for each of four CNNs when deployed to space radiation environments. The discussion also provides a foundation for ongoing research that enhances the overall resilience of neural net architectures and implementations in space under both random and malicious error events, offering significant improvements over current implementations. Future work to extend these CNN resilience evaluations, conditioned upon architectural design elements and well-known error correction methods, is also introduced.
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