Litcius/Paper detail

Toward Certification of Machine-Learning Systems for Low Criticality Airborne Applications

Konstantin Dmitriev, Johann Schumann, Florian Holzapfel

202121 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

CertificationAviationComputer scienceCriticalityWorkflowField (mathematics)Systems engineeringThe RenaissanceEngineering managementAeronauticsRisk analysis (engineering)EngineeringAerospace engineeringDatabaseBusinessArt historyMathematicsPolitical sciencePure mathematicsLawArtPhysicsNuclear physicsAdversarial Robustness in Machine LearningSafety Systems Engineering in AutonomyRisk and Safety Analysis
Toward Certification of Machine-Learning Systems for Low Criticality Airborne Applications | Litcius