Automotive Safety and Machine Learning: Initial Results from a Study on How to Adapt the ISO 26262 Safety Standard

Jens Henriksson, Markus Borg, Cristofer Englund
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引用次数: 39

Abstract

Machine learning (ML) applications generate a continuous stream of success stories from various domains. ML enables many novel applications, also in safety-critical contexts. However, the functional safety standards such as ISO 26262 did not evolve to cover ML. We conduct an exploratory study on which parts of ISO 26262 represent the most critical gaps between safety engineering and ML development. While this paper only reports the first steps toward a larger research endeavor, we report three adaptations that are critically needed to allow ISO 26262 compliant engineering, and related suggestions on how to evolve the standard.
汽车安全和机器学习:如何适应ISO 26262安全标准研究的初步结果
机器学习(ML)应用程序产生了来自各个领域的连续成功案例。ML支持许多新颖的应用程序,在安全关键环境中也是如此。然而,像ISO 26262这样的功能安全标准并没有发展到涵盖机器学习。我们对ISO 26262的哪些部分代表了安全工程和机器学习开发之间最关键的差距进行了探索性研究。虽然本文只报告了迈向更大研究努力的第一步,但我们报告了三种适应ISO 26262的关键需要,以及如何发展标准的相关建议。
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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