Real Time Local Wind Inference for Robust Autonomous Navigation
arXiv cs.RO / 4/2/2026
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Key Points
- The thesis proposes a real-time onboard method for aerial robots to infer local wind flow fields by fusing navigational LiDAR range measurements with sparse in situ wind measurements.
- It evaluates whether topographical data alone can accurately predict wind in dense urban environments, and studies when learned local wind models improve motion planning.
- The approach integrates local wind model priors into a receding-horizon optimal controller to optimize energy efficiency and obstacle avoidance while improving robustness.
- Results from simulations and sub-scale wind-tunnel free-flight experiments indicate the algorithms can run in real time on embedded flight hardware and improve navigation metrics such as crash rates and energy use when wind information is included.
- The work frames a broader paradigm shift toward localized wind inference and navigation without prior environmental knowledge, enabling operation in unknown windy conditions.
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