Optimization methods for the fault injection tool SEInjector

Xiankai Meng, QingPing Tan, Z. Shao, N. Zhang, Jianjun Xu, -Haoyu Zhang
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引用次数: 4

Abstract

In the space environment, computer is easily affected by high-energy particle irradiation, which may incur transient faults, also known as soft errors. Soft error is one of the serious problems for space computation, making the space computer system unreliable. Many efforts have been made in this research area. One of them is fault injection technique, an experimental method for software reliability evaluation. To evaluate the software reliability running on x86/x64 architecture, we have designed a fault injection framework SEInjector. Like many other fault injection tools, SEInjector has been designed as making statistically sampling by randomized selection of fault locations. But, in some cases, we need detail analysis for fault-tolerance related design decisions, and full fault space exploration is required. However, the vast fault space makes the complete fault space exploration impractical. In this paper, we propose several methods to prune the fault space. We prune the known-outcome faults by the registers usage information, and we prune faults leading to the same outcome by classify the faults into equivalence classes. Experiment and calculation show that using these methods, the full fault space coverage time consumption can be largely reduced.
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故障注入工具SEInjector的优化方法
在空间环境中,计算机容易受到高能粒子辐射的影响,产生瞬态故障,也称为软错误。软误差是空间计算中的一个严重问题,它使空间计算机系统不可靠。在这个研究领域已经做了很多努力。故障注入技术是软件可靠性评估的一种实验方法。为了评估软件在x86/x64架构下的可靠性,我们设计了一个故障注入框架SEInjector。与许多其他断层注入工具一样,SEInjector被设计为通过随机选择断层位置进行统计采样。但是,在某些情况下,我们需要对与容错相关的设计决策进行详细分析,并且需要对整个故障空间进行探索。然而,巨大的断层空间使完整的断层空间勘探变得不切实际。本文提出了几种对故障空间进行剪枝的方法。通过寄存器使用信息对已知结果的故障进行剪枝,并将故障划分为等价类,对导致相同结果的故障进行剪枝。实验和计算表明,使用这些方法可以大大减少全故障空间覆盖的时间消耗。
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