Digital Twin Test Method for Autonomous Vehicles Based on
PanoSim 2023-01-7056
This paper proposes an intelligent car testing and evaluation method based on
digital twins, which is crucial for ensuring the proper functioning of
autonomous driving systems. This method utilizes digital twin testing technology
to effectively map and integrate real vehicles in real-world testing scenarios
with virtual test environments. By enriching the testing and validation
environment for smart cars, this approach improves testing efficiency and
reduces costs. This study connects real test vehicles with simulation software
testing toolchains to build a digital twin autonomous driving testing platform.
This platform facilitates the validation, testing, and evaluation of functional
algorithms, and case study is conducted through testing and validation of an
emergency collision avoidance system. By rapidly applying digital twin testing
and evaluation techniques for intelligent cars, this approach accelerates the
development and deployment of autonomous vehicles.