Ergo, SMIRK is safe: a safety case for a machine learning component in a pedestrian automatic emergency brake system

Author:

Borg MarkusORCID,Henriksson Jens,Socha Kasper,Lennartsson Olof,Sonnsjö Lönegren Elias,Bui Thanh,Tomaszewski Piotr,Sathyamoorthy Sankar Raman,Brink Sebastian,Helali Moghadam Mahshid

Abstract

AbstractIntegration of machine learning (ML) components in critical applications introduces novel challenges for software certification and verification. New safety standards and technical guidelines are under development to support the safety of ML-based systems, e.g., ISO 21448 SOTIF for the automotive domain and the Assurance of Machine Learning for use in Autonomous Systems (AMLAS) framework. SOTIF and AMLAS provide high-level guidance but the details must be chiseled out for each specific case. We initiated a research project with the goal to demonstrate a complete safety case for an ML component in an open automotive system. This paper reports results from an industry-academia collaboration on safety assurance of SMIRK, an ML-based pedestrian automatic emergency braking demonstrator running in an industry-grade simulator. We demonstrate an application of AMLAS on SMIRK for a minimalistic operational design domain, i.e., we share a complete safety case for its integrated ML-based component. Finally, we report lessons learned and provide both SMIRK and the safety case under an open-source license for the research community to reuse.

Funder

VINNOVA

Knut och Alice Wallenbergs Stiftelse

RISE Research Institutes of Sweden

Publisher

Springer Science and Business Media LLC

Subject

Safety, Risk, Reliability and Quality,Software

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2. Design of the Safety Case of the Reinforcement Learning-Enabled Component of a Quanser Autonomous Vehicle;2024 IEEE 32nd International Requirements Engineering Conference Workshops (REW);2024-06-24

3. Approach for Argumenting Safety on Basis of an Operational Design Domain;Proceedings of the IEEE/ACM 3rd International Conference on AI Engineering - Software Engineering for AI;2024-04-14

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