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arxiv 2309.15492 v2 pith:HKHXC3AO submitted 2023-09-27 cs.RO

EDGAR: An Autonomous Driving Research Platform -- From Feature Development to Real-World Application

classification cs.RO
keywords developmentautonomousresearchsoftwaredigitaledgarstackstwin
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While current research and development of autonomous driving primarily focuses on developing new features and algorithms, the transfer from isolated software components into an entire software stack has been covered sparsely. Besides that, due to the complexity of autonomous software stacks and public road traffic, the optimal validation of entire stacks is an open research problem. Our paper targets these two aspects. We present our autonomous research vehicle EDGAR and its digital twin, a detailed virtual duplication of the vehicle. While the vehicle's setup is closely related to the state of the art, its virtual duplication is a valuable contribution as it is crucial for a consistent validation process from simulation to real-world tests. In addition, different development teams can work with the same model, making integration and testing of the software stacks much easier, significantly accelerating the development process. The real and virtual vehicles are embedded in a comprehensive development environment, which is also introduced. All parameters of the digital twin are provided open-source at https://github.com/TUMFTM/edgar_digital_twin.

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