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.

Abstract

This thesis presents a solution that enables aerial robots to reason about surrounding wind flow fields in real time using on board sensors and embedded flight hardware. The core novelty of this research is the fusion of range measurements with sparse in situ wind measurements to predict surrounding flow fields. We aim to address two fundamental questions: first, the sufficiency of topographical data for accurate wind prediction in dense urban environments; and second, the utility of learned wind models for motion planning with an emphasis on energy efficiency and obstacle avoidance. Drawing on tools from deep learning, fluid mechanics, and optimal control, we establish a framework for local wind prediction using navigational LiDAR, and then incorporate local wind model priors into a receding-horizon optimal controller to study how local wind knowledge affects energy use and robustness during autonomous navigation. Through simulated demonstrations in diverse urban wind scenarios we evaluate the predictive capabilities of the wind predictor, and quantify improvements to autonomous urban navigation in terms of crash rates and energy consumption when local wind information is integrated into the motion planning. Sub-scale free flight experiments in an open-air wind tunnel demonstrate that these algorithms can run in real time on an embedded flight computer with sufficient bandwidth for stable control of a small aerial robot. Philosophically, this thesis contributes a new paradigm for localized wind inference and motion planning in unknown windy environments. By enabling robots to rapidly assess local wind conditions without prior environmental knowledge, this research accelerates the introduction of aerial robots into increasingly challenging environments.