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Learning Critical Scenarios in Feedback Control Systems for Automated Driving | IEEE Conference Publication | IEEE Xplore

Learning Critical Scenarios in Feedback Control Systems for Automated Driving


Abstract:

Testing is essential for verifying and validating control designs, especially in safety-critical applications. In particular, the control system governing an automated dr...Show More

Abstract:

Testing is essential for verifying and validating control designs, especially in safety-critical applications. In particular, the control system governing an automated driving vehicle must be proven reliable enough for its acceptance on the market. Recently, much research has focused on scenario-based methods. However, the number of possible driving scenarios to test is in principle infinite. In this paper, we formalize a learning-based optimization framework to generate corner test-cases, where we take into account the operational design domain. We examine the approach on the case of a feedback control system for automated driving, for which we suggest the design of the objective function expressing the criticality of scenarios. Numerical tests on two logical scenarios of the case study demonstrate that the approach can identify critical scenarios within a limited number of closed-loop experiments.
Date of Conference: 24-28 September 2023
Date Added to IEEE Xplore: 13 February 2024
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Conference Location: Bilbao, Spain

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