Validating the safety of Highly Automated Vehicles (HAVs) is a significant autonomy challenge. HAV safety validation strategies based solely on brute force on-road testing campaigns are unlikely to be viable. While simulations and exercising edge case scenarios can help reduce validation cost, those techniques alone are unlikely to provide a sufficient level of assurance for full-scale deployment without adopting a more nuanced view of validation data collection and safety analysis. Validation approaches can be improved by using higher fidelity testing to explicitly validate the assumptions and simplifications of lower fidelity testing rather than just obtaining sampled replication of lower fidelity results. Disentangling multiple testing goals can help by separating validation processes for requirements, environmental model sufficiency, autonomy correctness, autonomy robustness, and test scenario sufficiency. For autonomy approaches with implicit designs and requirements, such as machine learning training data sets, establishing observability points in the architecture can help ensure that vehicles pass the right tests for the right reason. These principles could improve both efficiency and effectiveness for demonstrating HAV safety as part of a phased validation plan that includes both a “driver test” and lifecycle monitoring as well as explicitly managing validation uncertainty.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Toward a Framework for Highly Automated Vehicle Safety Validation


    Additional title:

    Sae Technical Papers


    Contributors:

    Conference:

    WCX World Congress Experience ; 2018



    Publication date :

    2018-04-03




    Type of media :

    Conference paper


    Type of material :

    Print


    Language :

    English




    Toward a Framework for Highly Automated Vehicle Safety Validation

    Koopman, Philip / Wagner, Michael | British Library Conference Proceedings | 2018



    Measuring automated vehicle safety : forging a framework

    Fraade-Blanar, Laura / Blumenthal, Marjory S. / Anderson, James M. et al. | TIBKAT | 2018


    A Proposed Safety Case Framework for Automated Vehicle Safety Evaluation

    Wishart, Jeffrey / Zhao, Junfeng / Woodard, Braeden et al. | IEEE | 2023


    Automated Vehicle Pose Validation

    BABIN PHILIPPE / DESAI KUNAL ANIL / FU TAO V et al. | European Patent Office | 2024

    Free access