Wind speed and direction estimation from wave spectra using deep learning

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Abstract

High-frequency parts of ocean wave spectra are strongly coupled to the local wind. Measurements of ocean wave spectra can be used to estimate sea surface winds. In this study, two deep neural networks (DNNs) were used to estimate the wind speed and direction from the first five Fourier coefficients from buoys. The DNNs were trained by wind and wave measurements from more than 100 meteorological buoys during 2014-2018. It is found that the wave measurements can best represent the wind information about 40 min previously because the high-frequency portion of the wave spectrum integrates preceding wind conditions. The overall root-mean-square error (RMSE) of estimated wind speed is 1/41.1 m s-1, and the RMSE of the wind direction is g 1/4 14 when wind speed is 7-25 m s-1. This model can be used not only for the wind estimation for compact wave buoys but also for the quality control of wind and wave measurements from meteorological buoys.

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APA

Jiang, H. (2022). Wind speed and direction estimation from wave spectra using deep learning. Atmospheric Measurement Techniques, 15(1), 1–9. https://doi.org/10.5194/amt-15-1-2022

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