A Model-Based Framework to Assess the Reliability of Safety-Critical Applications

Lucas Matana Luza, A. Ruospo, A. Bosio, Ernesto Sánchez, L. Dilillo
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引用次数: 3

Abstract

Solutions based on artificial intelligence and brain-inspired computations like Artificial Neural Networks (ANNs) are suited to deal with the growing computational complexity required by state-of-the-art electronic devices. Many applications that are being deployed using these computational models are considered safety-critical (e.g., self-driving cars), producing a pressing need to evaluate their reliability. Besides, state-of-theart ANNs require significant memory resources to store their parameters (e.g., weights, activation values), which goes outside the possibility of many resource-constrained embedded systems. In this light, Approximate Computing (AxC) has become a significant field of research to improve memory footprint, speed, and energy consumption in embedded and high-performance systems. The use of AxC can significantly reduce the cost of ANN implementations, but it may also reduce the inherent resiliency of this kind of application. On this scope, reliability assessments are carried out by performing fault injection test campaigns. The intent of the paper is to propose a framework that, relying on the results of radiation tests in Commercial-Off-The-Shelf (COTS) devices, is able to assess the reliability of a given application. To this end, a set of different radiation-induced errors in COTS memories is presented. Upon these, specific fault models are extracted to drive emulation-based fault injections.
基于模型的安全关键应用可靠性评估框架
基于人工智能和大脑启发计算的解决方案,如人工神经网络(ann),适合处理最先进的电子设备所要求的日益增长的计算复杂性。使用这些计算模型部署的许多应用程序都被认为是安全关键(例如,自动驾驶汽车),因此迫切需要评估其可靠性。此外,最先进的人工神经网络需要大量的内存资源来存储它们的参数(例如,权重,激活值),这超出了许多资源受限的嵌入式系统的可能性。在这种情况下,近似计算(AxC)已经成为一个重要的研究领域,以改善嵌入式和高性能系统的内存占用、速度和能耗。使用AxC可以显著降低人工神经网络实现的成本,但它也可能降低这类应用程序的固有弹性。在此范围内,通过执行故障注入测试活动来进行可靠性评估。本文的目的是提出一个框架,该框架依靠商用现货(COTS)设备的辐射测试结果,能够评估给定应用的可靠性。为此,提出了一套不同的辐射诱发误差的COTS存储器。在此基础上,提取特定的故障模型来驱动基于仿真的故障注入。
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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