Enhancing Safety Assessment of Automated Driving Systems with Key Enabling Technology Assessment Templates

Author:

Skoglund Martin1ORCID,Warg Fredrik1ORCID,Thorsén Anders1ORCID,Bergman Mats2

Affiliation:

1. RISE—Research Institutes of Sweden, 504 62 Borås, Sweden

2. Telia Company, 169 94 Solna, Sweden

Abstract

The emergence of Automated Driving Systems (ADSs) has transformed the landscape of safety assessment. ADSs, capable of controlling a vehicle without human intervention, represent a significant shift from traditional driver-centric approaches to vehicle safety. While traditional safety assessments rely on the assumption of a human driver in control, ADSs require a different approach that acknowledges the machine as the primary driver. Before market introduction, it is necessary to confirm the vehicle safety claimed by the manufacturer. The complexity of the systems necessitates a new comprehensive safety assessment that examines and validates the hazard identification and safety-by-design concepts and ensures that the ADS meets the relevant safety requirements throughout the vehicle lifecycle. The presented work aims to enhance the effectiveness of the assessment performed by a homologation service provider by using assessment templates based on refined requirement attributes that link to the operational design domain (ODD) and the use of Key Enabling Technologies (KETs), such as communication, positioning, and cybersecurity, in the implementation of ADSs. The refined requirement attributes can serve as safety-performance indicators to assist the evaluation of the design soundness of the ODD. The contributions of this paper are: (1) outlining a method for deriving assessment templates for use in future ADS assessments; (2) demonstrating the method by analysing three KETs with respect to such assessment templates; and (3) demonstrating the use of assessment templates on a use case, an unmanned (remotely assisted) truck in a limited ODD. By employing assessment templates tailored to the technology reliance of the identified use case, the evaluation process gained clarity through assessable attributes, assessment criteria, and functional scenarios linked to the ODD and KETs.

Funder

European Union’s Horizon Europe Research and Innovation Actions

Vinnova, Sweden’s innovation agency

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Automotive Engineering

Reference44 articles.

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3. WP.29/GRVA (2023, December 01). Current Draft of the Guidelines and Recommendations Concerning Safety Requirements for ADS (FRAV). Available online: https://unece.org/transport/documents/2022/05/informal-documents/frav-current-draft-guidelines-and-recommendations.

4. Advancements, Prospects, and Impacts of Automated Driving Systems;Chan;Int. J. Transp. Sci. Technol.,2017

5. Chen, C., Zhao, Q., Zheng, T., Zhai, Y., and Zhu, X. (2022, January 17–22). The Research on Current Automated Driving ODD Regulations, Standards and Applications. Proceedings of the 2022 IEEE International Conference on Real-Time Computing and Robotics (RCAR), Guiyang, China.

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