Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning
Three-dimensional (3-D) radiative-transfer effects are a major source of retrieval errors in satellite-based optical remote sensing of clouds. The challenge is that 3-D effects manifest themselves across multiple satellite pixels, which traditional single-pixel approaches cannot capture. In this...
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doaj-80a4364c63e341f787c02104c30fc14e2020-11-24T20:52:39ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482017-12-01104747475910.5194/amt-10-4747-2017Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learningR. Okamura0H. Iwabuchi1K. S. Schmidt2Center for Atmospheric and Oceanic Studies, Graduate School of Science, Tohoku University, 6-3 Aoba Aramaki-aza, Sendai, Miyagi, 980-8578, JapanCenter for Atmospheric and Oceanic Studies, Graduate School of Science, Tohoku University, 6-3 Aoba Aramaki-aza, Sendai, Miyagi, 980-8578, JapanDepartment of Atmospheric and Oceanic Sciences, University of Colorado, Boulder, CO, USAThree-dimensional (3-D) radiative-transfer effects are a major source of retrieval errors in satellite-based optical remote sensing of clouds. The challenge is that 3-D effects manifest themselves across multiple satellite pixels, which traditional single-pixel approaches cannot capture. In this study, we present two multi-pixel retrieval approaches based on deep learning, a technique that is becoming increasingly successful for complex problems in engineering and other areas. Specifically, we use deep neural networks (DNNs) to obtain multi-pixel estimates of cloud optical thickness and column-mean cloud droplet effective radius from multispectral, multi-pixel radiances. The first DNN method corrects traditional bispectral retrievals based on the plane-parallel homogeneous cloud assumption using the reflectances at the same two wavelengths. The other DNN method uses so-called convolutional layers and retrieves cloud properties directly from the reflectances at four wavelengths. The DNN methods are trained and tested on cloud fields from large-eddy simulations used as input to a 3-D radiative-transfer model to simulate upward radiances. The second DNN-based retrieval, sidestepping the bispectral retrieval step through convolutional layers, is shown to be more accurate. It reduces 3-D radiative-transfer effects that would otherwise affect the radiance values and estimates cloud properties robustly even for optically thick clouds.https://www.atmos-meas-tech.net/10/4747/2017/amt-10-4747-2017.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
R. Okamura H. Iwabuchi K. S. Schmidt |
spellingShingle |
R. Okamura H. Iwabuchi K. S. Schmidt Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning Atmospheric Measurement Techniques |
author_facet |
R. Okamura H. Iwabuchi K. S. Schmidt |
author_sort |
R. Okamura |
title |
Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
title_short |
Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
title_full |
Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
title_fullStr |
Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
title_full_unstemmed |
Feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
title_sort |
feasibility study of multi-pixel retrieval of optical thickness and droplet effective radius of inhomogeneous clouds using deep learning |
publisher |
Copernicus Publications |
series |
Atmospheric Measurement Techniques |
issn |
1867-1381 1867-8548 |
publishDate |
2017-12-01 |
description |
Three-dimensional (3-D) radiative-transfer effects are a major source of
retrieval errors in satellite-based optical remote sensing of clouds. The
challenge is that 3-D effects manifest themselves across multiple satellite
pixels, which traditional single-pixel approaches cannot capture. In this
study, we present two multi-pixel retrieval approaches based on deep
learning, a technique that is becoming increasingly successful for complex
problems in engineering and other areas. Specifically, we use deep neural
networks (DNNs) to obtain multi-pixel estimates of cloud optical thickness and
column-mean cloud droplet effective radius from multispectral, multi-pixel
radiances. The first DNN method corrects traditional bispectral retrievals
based on the plane-parallel homogeneous cloud assumption using the
reflectances at the same two wavelengths. The other DNN method uses so-called
convolutional layers and retrieves cloud properties directly from the
reflectances at four wavelengths. The DNN methods are trained and tested on
cloud fields from large-eddy simulations used as input to a 3-D radiative-transfer model to simulate upward radiances. The second DNN-based retrieval,
sidestepping the bispectral retrieval step through convolutional layers, is
shown to be more accurate. It reduces 3-D radiative-transfer effects that
would otherwise affect the radiance values and estimates cloud properties
robustly even for optically thick clouds. |
url |
https://www.atmos-meas-tech.net/10/4747/2017/amt-10-4747-2017.pdf |
work_keys_str_mv |
AT rokamura feasibilitystudyofmultipixelretrievalofopticalthicknessanddropleteffectiveradiusofinhomogeneouscloudsusingdeeplearning AT hiwabuchi feasibilitystudyofmultipixelretrievalofopticalthicknessanddropleteffectiveradiusofinhomogeneouscloudsusingdeeplearning AT ksschmidt feasibilitystudyofmultipixelretrievalofopticalthicknessanddropleteffectiveradiusofinhomogeneouscloudsusingdeeplearning |
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1716799040112295936 |