Abstract

Objective: The Vision Zero initiative pursues the goal of eliminating all traffic fatalities and severe injuries. Today’s advanced driver assistance systems (ADAS) are an important part of the strategy toward Vision Zero. In Germany in 2018 more than 26,000 people were killed or severely injured by traffic accidents on motorways and rural roads due to road accidents. Focusing on collision avoidance, a simulative evaluation can be the key to estimating the performance of state-of-the-art ADAS and identifying resulting potentials for system improvements and future systems.This project deals with the effectiveness assessment of a combination of ADAS for longitudinal and lateral intervention based on German accident data. Considered systems are adaptive cruise control (ACC), autonomous emergency braking (AEB), and lane keeping support (LKS).Methods: As an approach for benefit estimation of ADAS, the method of prospective effectiveness assessment is applied. Using the software rateEFFECT, a closed-loop simulation is performed on accident scenario data from the German In-Depth Accident Study (GIDAS) precrash matrix (PCM). To enable projection of results, the simulative assessment is amended with detailed single case studies of all treated cases without PCM data.Results: Three categories among today’s accidents on German rural roads and motorways are reported in this study: Green, grey, and white spots.Green spots identify accidents that can be avoided by state-of-the-art ADAS ACC, AEB, and LKS. Grey spots contain scenarios that require minor system modifications, such as reducing the activation speed or increasing the steering torque. Scenarios in the white category cannot be addressed by state-of-the-art ADAS. Thus, which situations demand future systems are shown. The proportions of green, grey, and white spots are determined related to the considered data set and projected to the entire GIDAS.Conclusions: This article describes a systematic approach for assessing the effectiveness of ADAS using GIDAS PCM data to be able to project results to Germany. The closed-loop simulation run in rateEFFECT covers ACC, AEB, and LKS as well as relevant sensors for environment recognition and actuators for longitudinal and lateral vehicle control.Identification of green spots evaluates safety benefits of state-of-the-art level 0–2 functions as a baseline for further system improvements to address grey spots. Knowing which accidents could be avoided by standard ADAS helps focus the evolution of future driving functions on white spots and thus aim for Vision Zero.

Highlights

  • During the last 5 years the number of annual traffic fatalities in Germany has remained nearly static at a level of less than 3,500 (Statistisches Bundesamt (DESTATIS) 2018)

  • Vision Zero puts the aim to reduce the number of fatalities and severely injured persons caused by traffic accidents to zero (Deutscher Verkehrssicherheitsrat 2017; Ministry of Transport and Communications 1997)

  • Prospective effectiveness assessment helps to evaluate the benefit of advanced driver assistance systems (ADAS) for crash avoidance and to identify scenarios among present accident data requiring further systems

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Summary

Introduction

During the last 5 years the number of annual traffic fatalities in Germany has remained nearly static at a level of less than 3,500 (Statistisches Bundesamt (DESTATIS) 2018). Prospective effectiveness assessment helps to evaluate the benefit of ADAS for crash avoidance and to identify scenarios among present accident data requiring further systems. As long as appropriate simulation data and system models exist, the evaluation method can be applied to other systems and countries. The main part of this article is structured in 3 parts: The Methods section provides an overview of different methodologies for effectiveness evaluation and focuses the simulative approach applied in this study. The Results section reports the outcomes of the simulation and the consequent assessment of the system effectiveness for collision avoidance. Assumptions and limitations of input data and the simulation environment are discussed with a focus on their influence on results. The capacity and relevance of the results are debated considering these assumptions and limitations

Methods
GIDAS subset
Assessment data set 491 cases
Findings
Results
Full Text
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