Abstract
New vehicle designs with advanced driver assistance systems need to be validated with respect to human perceptions of comfort and risk. Therefore, human-in-the-loop simulations are used to evaluate a wide range of scenarios in driving simulators. In order to improve human-in-the-loop simulation, the chapter begins by reporting solver advancements that enable the real-time simulation of complex mechatronic systems using high fidelity multibody and multi-physics simulation models. A driving simulator setup is then presented that makes use of the high-fidelity vehicle models and can simulate vehicles with advanced driver assistance systems. The essential components of the simulator are outlined and initial results of a comparison study between high fidelity model and equivalent low fidelity models. Finally, two test cases are described that use respectively an adaptive cruise control function and an autonomous intersection crossing function.
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Abbreviations
- ABS:
-
Anti-Lock Braking System
- ACC:
-
Adaptive Cruise Control
- ADAS:
-
Advanced Driver-Assistance Systems
- ADF:
-
Automated Driving Functionality
- AIC:
-
Autonomous Intersection Crossing
- CFD:
-
Computational Fluid Dynamics
- DoF:
-
Degree(s) of Freedom
- DTM:
-
Double Track Model
- EPS:
-
Electric Power Steering
- ESP:
-
Electronic Stability Program
- HiL:
-
Hardware in the Loop
- HuiL:
-
Human in the Loop
- ICE:
-
Internal Combustion Engine
- MBS:
-
Multibody Simulation
- MCA:
-
Motion Cueing Algorithm
- OEM:
-
Original Equipment Manufacturer
- SiL:
-
Software in the Loop
- STM:
-
Single Track Model
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Acknowledgements
The authors would like to acknowledge the ENABLE-S3 project that has received funding from the ECSEL Joint Undertaking under grant agreement No. 692455. This joint undertaking receives support from the European Union’s HORIZON 2020 research and innovation programme and from the governments of Spain, Portugal, Poland, Ireland, Belgium, France, Netherlands, United Kingdom, Slovakia, Norway.
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Grottoli, M., van der Heide, A., Lemmens, Y. (2020). A High Fidelity Driving Simulation Platform for the Development and Validation of Advanced Driver Assistance Systems. In: Yan, XT., Bradley, D., Russell, D., Moore, P. (eds) Reinventing Mechatronics. Springer, Cham. https://doi.org/10.1007/978-3-030-29131-0_7
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DOI: https://doi.org/10.1007/978-3-030-29131-0_7
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