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Peer-Reviewed Journal for the 27th International Technical Conference on the Enhanced Safety of Vehicles (ESV)

How certain are we that our automated driving system is safe?

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Pages S131-S140 | Received 19 Aug 2022, Accepted 23 Feb 2023, Published online: 02 Jun 2023
 

Abstract

Objective

Regulations are currently being drafted by the European Commission for the safe introduction of automated driving systems (ADSs) with conditional or higher automation (SAE level 3 and above). One of the main challenges for complying with the drafted regulations is proving that the residual risk of an ADS is lower than the existing state of the art without the ADS and that the current safety state of European roads is not compromised. Therefore, much research has been conducted to estimate the safety risk of ADS. One proposed method for estimating the risk is data-driven, scenario-based assessment, where tests are partially automatically generated based on recorded traffic data. Although this is a promising method, uncertainties in the estimated risk arise from, among others, the limited number of tests that are conducted and the limited data that have been used to generate the tests. This work addresses the following question: “Given the limitations of the data and the number of tests, what is the uncertainty of the estimated safety risk of the ADS?”

Methods

To compute the safety risk, parameterized test scenarios are based on large-scale collections of road scenarios that are stored in a scenario database. The exposure of the scenarios and the parameter distributions are estimated using the data as well as confidence bounds of these estimates. Next, virtual simulations are conducted of the scenarios for a variety of parameter values. Using a probabilistic framework, all results are combined to estimate the residual risk as well as the uncertainty of this estimation.

Results

The results are used to provide confidence bounds on the calculated fatality rate in case an ADS is implemented in the vehicle. For example, using the proposed probabilistic framework, it is possible to claim with 95% certainty that the fatality rate is less than 107 fatalities per hour of driving. The proposed method is illustrated with a case study in which the risk and its uncertainty are quantified for a longitudinal controller in 3 different types of scenarios. The case study code is publicly available.

Conclusions

If results show that the uncertainty is too high, the proposed method allows answering questions like “How much more data do we need?” or “How many more (virtual) simulations must be conducted?” Therefore, the method can be used to set requirements on the amount of data and the number of (virtual) simulations. For a reliable risk estimate, though, much more data are needed than those used in the case study. Furthermore, because the method relies on (virtual) simulations, the reliability of the result depends on the validity of the models used in the simulations. The presented case study illustrates that the proposed method is able to quantify the uncertainty of the estimated safety risk of an ADS. Future work involves incorporating the proposed method into the type approval framework for future ADSs of SAE levels 3, 4, and 5, as proposed in the upcoming European Union implementing regulation for ADS.

Additional information

Funding

This project has received funding from the European Union’s Horizon 2020 Research and Innovation Programme under Grant Agreement No. 101006664. This work reflects only the authors’ views, and neither CINEA nor the EC is responsible for any use that may be made of the information it contains.