Publicly Available Specification
ISO/PAS 8800:2024
Road vehicles — Safety and artificial intelligence
Reference number
ISO/PAS 8800:2024
Edition 1
2024-12
Publicly Available Specification
Preview
ISO/PAS 8800:2024
83303
Indisponible en français
Publiée (Edition 1, 2024)

ISO/PAS 8800:2024

ISO/PAS 8800:2024
83303
Langue
Format
CHF 216
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Résumé

This document applies to safety-related systems that include one or more electrical and/or electronic (E/E) systems that use AI technology and that is installed in series production road vehicles, excluding mopeds. It does not address unique E/E systems in special vehicles, such as E/E systems designed for drivers with disabilities.

This document addresses the risk of undesired safety-related behaviour at the vehicle level due to output insufficiencies, systematic errors and random hardware errors of AI elements within the vehicle. This includes interactions with AI elements that are not part of the vehicle itself but that can have a direct or indirect impact on vehicle safety.

EXAMPLE 1         Examples of AI elements within the vehicle include the trained AI model and AI system.

EXAMPLE 2         Direct impact on safety can be due to object detection by elements external to the vehicle.

EXAMPLE 3         Indirect impact on safety can be due to field monitoring by elements external to the vehicle.

The development of AI elements that are not part of the vehicle is not within the scope of this document. These elements can conform to domain-specific safety guidance. This document can be used as a reference where such domain-specific guidance does not exist.

This document describes safety-related properties of AI systems that can be used to construct a convincing safety assurance claim for the absence of unreasonable risk.

This document does not provide specific guidelines for software tools that use AI methods.

This document focuses primarily on a subclass of AI methods defined as machine learning (ML). Although it covers the principles of established and well-understood classes of ML, it does not focus on the details of any specific AI methods e.g. deep neural networks.

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