Navigating the Evolving Landscape of Safety Standards for Machine Learning-based Road Vehicle Functions

EPR2024017

08/26/2024

Features
Authors Abstract
Content
ML approaches to solving some of the key perception and decision challenges in automated vehicle functions are maturing at an incredible rate. However, the setbacks experienced during initial attempts at widespread deployment have highlighted the need for a careful consideration of safety during the development and deployment of these functions. To better control the risk associated with this storm of complex functionality, open operating environments, and cutting-edge technology, there is a need for industry consensus on best practices for achieving an acceptable level of safety.
Navigating the Evolving Landscape of Safety Standards for Machine Learning-based Road Vehicle Functions provides an overview of standards relevant to the safety of ML-based vehicle functions and serves as guidance for technology providers—including those new to the automotive sector—on how to interpret the evolving standardization landscape. The report also contains practical guidance, along with an example from the perspective of a developer of an ML-based perception function on how to interpret the requirements of these standards.
Meta TagsDetails
DOI
https://doi.org/10.4271/EPR2024017
Pages
32
Citation
Burton, S., "Navigating the Evolving Landscape of Safety Standards for Machine Learning-based Road Vehicle Functions," SAE Research Report EPR2024017, 2024, https://doi.org/10.4271/EPR2024017.
Additional Details
Publisher
Published
Aug 26
Product Code
EPR2024017
Content Type
Research Report
Language
English