WindSeer: real-time volumetric wind prediction over complex terrain aboard a small uncrewed aerial vehicle


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Date

2024-04-25

Publication Type

Journal Article

ETH Bibliography

yes

Citations

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Data

Abstract

Real-time high-resolution wind predictions are beneficial for various applications including safe crewed and uncrewed aviation. Current weather models require too much compute and lack the necessary predictive capabilities as they are valid only at the scale of multiple kilometers and hours – much lower spatial and temporal resolutions than these applications require. Our work demonstrates the ability to predict low-altitude time-averaged wind fields in real time on limited-compute devices, from only sparse measurement data. We train a deep neural network-based model, WindSeer, using only synthetic data from computational fluid dynamics simulations and show that it can successfully predict real wind fields over terrain with known topography from just a few noisy and spatially clustered wind measurements. WindSeer can generate accurate predictions at different resolutions and domain sizes on previously unseen topography without retraining. We demonstrate that the model successfully predicts historical wind data collected by weather stations and wind measured by drones during flight.

Publication status

published

Editor

Book title

Volume

15 (1)

Pages / Article No.

3507

Publisher

Nature

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

Organisational unit

02620 - Inst. f. Robotik u. Intelligente Systeme / Inst. Robotics and Intelligent Systems

Notes

Funding

ETH-10 20-1 - AVALMAPPER - Remote avalanche mapping with long flight-duration UAVs (ETHZ)

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