The exceptional progress in the field of machine learning (ML) in recent years has attracted a lot of interest in using this technology in aviation. Possible airborne applications of ML include safety-critical functions, which must be developed in compliance with rigorous certification standards of the aviation industry. Current certification standards for the aviation industry were developed prior to the ML renaissance without taking specifics of ML technology into account. There are some fundamental incompatibilities between traditional design assurance approaches and certain aspects of ML-based systems. In this paper, we analyze the current airborne certification standards and show that all objectives of the standards can be achieved for a low-criticality ML-based system if certain assumptions about ML development workflow are applied.
翻译:近年来在机器学习(ML)领域所取得的特殊进展吸引了人们对在航空中使用这一技术的极大兴趣,在空中可能应用ML包括安全关键功能,这些功能必须依照航空业严格的认证标准开发,航空业目前的认证标准是在ML复兴之前制定的,没有考虑到ML技术的具体细节,传统设计保证办法与基于ML系统的某些方面存在着一些根本的不一致之处,在本文件中,我们分析了目前的空中认证标准,并表明如果对ML开发工作流程的某些假设得到应用,这些标准的所有目标都能够实现。