机载机器学习中辐射误差的模拟与检测

R. Granat, K. Wagstaff, B. Bornstein, Benyang Tang, M. Turmon
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引用次数: 9

摘要

航天器处理器和存储器受到高辐射剂量的影响,因此采用抗辐射组件。然而,这些组件比典型的桌面组件贵了几个数量级,而且在速度和大小方面落后了很多年。我们已经将基于算法的容错(ABFT)方法集成到机载数据分析算法中,以检测辐射引起的错误,最终可能允许使用不需要完全硬化的航天器存储器,同时降低成本并提高能力。我们还开发了一个轻量级的软件辐射模拟器,BITFLIPS,它允许以受控的方式评估错误检测策略,包括辐射率的规范和单个数据结构的选择性暴露。使用BITFLIPS,我们评估了使用支持向量机分析火星奥德赛航天器收集的数据时的错误检测方法。我们观察到现有的矩阵乘法ABFT方法和一种新的求幂ABFT方法都有良好的性能。这些技术使我们离“难”的机器学习算法又近了一步。
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Simulating and Detecting Radiation-Induced Errors for Onboard Machine Learning
Spacecraft processors and memory are subjected to high radiation doses and therefore employ radiation-hardened components. However, these components are orders of magnitude more expensive than typical desktop components, and they lag years behind in terms of speed and size. We have integrated algorithm-based fault tolerance (ABFT) methods into onboard data analysis algorithms to detect radiation-induced errors, which ultimately may permit the use of spacecraft memory that need not be fully hardened, reducing cost and increasing capability at the same time. We have also developed a lightweight software radiation simulator, BITFLIPS, that permits evaluation of error detection strategies in a controlled fashion, including the specification of the radiation rate and selective exposure of individual data structures. Using BITFLIPS, we evaluated our error detection methods when using a support vector machine to analyze data collected by the Mars Odyssey spacecraft. We observed good performance from both an existing ABFT method for matrix multiplication and a novel ABFT method for exponentiation. These techniques bring us a step closer to "rad-hard" machine learning algorithms.
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