Digital Twins Meet the Koopman Operator: Data-Driven Learning for Robust Autonomy
Contrary to on-road autonomous navigation, off-road autonomy is complicated by various factors ranging from sensing challenges to terrain variability. In such a milieu, data-driven approaches have been commonly employed to capture intricate vehicle-environment interactions effectively. However, the...
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Zusammenfassung: | Contrary to on-road autonomous navigation, off-road autonomy is complicated
by various factors ranging from sensing challenges to terrain variability. In
such a milieu, data-driven approaches have been commonly employed to capture
intricate vehicle-environment interactions effectively. However, the success of
data-driven methods depends crucially on the quality and quantity of data,
which can be compromised by large variability in off-road environments. To
address these concerns, we present a novel workflow to recreate the exact
vehicle and its target operating conditions digitally for domain-specific data
generation. This enables us to effectively model off-road vehicle dynamics from
simulation data using the Koopman operator theory, and employ the obtained
models for local motion planning and optimal vehicle control. The capabilities
of the proposed methodology are demonstrated through an autonomous navigation
problem of a 1:5 scale vehicle, where a terrain-informed planner is employed
for global mission planning. Results indicate a substantial improvement in
off-road navigation performance with the proposed algorithm (5.84x) and
underscore the efficacy of digital twinning in terms of improving the sample
efficiency (3.2x) and reducing the sim2real gap (5.2%). |
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DOI: | 10.48550/arxiv.2409.10347 |