ISO 22133:2026
International Standard
Current Edition
·
Approved on
27 January 2026
Road vehicles — Test object monitoring and control for active safety and automated/autonomous vehicle testing — Functional requirements, specifications and communication protocol
ISO 22133:2026 Files
English
116 Pages
Current Edition
OMR
110.76
ISO 22133:2026 Scope
This document specifies requirements, procedures and message formats for controlling and monitoring of test objects, used for testing of active safety functions and autonomous vehicles.
This document specifies functionality and messaging for monitoring and controlling of test objects by a control centre facilitating an interoperable test object environment. This document defines a communication protocol which allows for the control centre to safely execute tests using test objects from multiple vendors.
This document does not specify the internal architecture of the test object nor control centre.
This document does not specify how testing of the vehicles shall be performed.
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