Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data

<p>An ability to accurately detect convective regions is essential for initializing models for short-term precipitation forecasts. Radar data are commonly used to detect convection, but radars that provide high-temporal-resolution data are mostly available over land, and the quality of the dat...

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Main Authors: Y. Lee, C. D. Kummerow, I. Ebert-Uphoff
Format: Article
Language:English
Published: Copernicus Publications 2021-04-01
Series:Atmospheric Measurement Techniques
Online Access:https://amt.copernicus.org/articles/14/2699/2021/amt-14-2699-2021.pdf
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spelling doaj-daf315443a984472982e9918c017ccd02021-04-08T06:13:10ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482021-04-01142699271610.5194/amt-14-2699-2021Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) dataY. Lee0C. D. Kummerow1C. D. Kummerow2I. Ebert-Uphoff3I. Ebert-Uphoff4Department of Atmospheric Science, Colorado State University, Fort Collins, Colorado, USADepartment of Atmospheric Science, Colorado State University, Fort Collins, Colorado, USACooperative Institute for Research in the Atmosphere, Fort Collins, Colorado, USACooperative Institute for Research in the Atmosphere, Fort Collins, Colorado, USADepartment of Electrical and Computer Engineering, Colorado State University, Fort Collins, Colorado, USA<p>An ability to accurately detect convective regions is essential for initializing models for short-term precipitation forecasts. Radar data are commonly used to detect convection, but radars that provide high-temporal-resolution data are mostly available over land, and the quality of the data tends to degrade over mountainous regions. On the other hand, geostationary satellite data are available nearly anywhere and in near-real time. Current operational geostationary satellites, the Geostationary Operational Environmental Satellite-16 (GOES-16) and Satellite-17, provide high-spatial- and high-temporal-resolution data but only of cloud top properties; 1 min data, however, allow us to observe convection from visible and infrared data even without vertical information of the convective system. Existing detection algorithms using visible and infrared data look for static features of convective clouds such as overshooting top or lumpy cloud top surface or cloud growth that occurs over periods of 30 min to an hour. This study represents a proof of concept that artificial intelligence (AI) is able, when given high-spatial- and high-temporal-resolution data from GOES-16, to learn physical properties of convective clouds and automate the detection process.</p> <p>A neural network model with convolutional layers is proposed to identify convection from the high-temporal resolution GOES-16 data. The model takes five temporal images from channel 2 (0.65 <span class="inline-formula">µ</span>m) and 14 (11.2 <span class="inline-formula">µ</span>m) as inputs and produces a map of convective regions. In order to provide products comparable to the radar products, it is trained against Multi-Radar Multi-Sensor (MRMS), which is a radar-based product that uses a rather sophisticated method to classify precipitation types. Two channels from GOES-16, each related to cloud optical depth (channel 2) and cloud top height (channel 14), are expected to best represent features of convective clouds: high reflectance, lumpy cloud top surface, and low cloud top temperature. The model has correctly learned those features of convective clouds and resulted in a reasonably low false alarm ratio (FAR) and high probability of detection (POD). However, FAR and POD can vary depending on the threshold, and a proper threshold needs to be chosen based on the purpose.</p>https://amt.copernicus.org/articles/14/2699/2021/amt-14-2699-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Y. Lee
C. D. Kummerow
C. D. Kummerow
I. Ebert-Uphoff
I. Ebert-Uphoff
spellingShingle Y. Lee
C. D. Kummerow
C. D. Kummerow
I. Ebert-Uphoff
I. Ebert-Uphoff
Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
Atmospheric Measurement Techniques
author_facet Y. Lee
C. D. Kummerow
C. D. Kummerow
I. Ebert-Uphoff
I. Ebert-Uphoff
author_sort Y. Lee
title Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
title_short Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
title_full Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
title_fullStr Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
title_full_unstemmed Applying machine learning methods to detect convection using Geostationary Operational Environmental Satellite-16 (GOES-16) advanced baseline imager (ABI) data
title_sort applying machine learning methods to detect convection using geostationary operational environmental satellite-16 (goes-16) advanced baseline imager (abi) data
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2021-04-01
description <p>An ability to accurately detect convective regions is essential for initializing models for short-term precipitation forecasts. Radar data are commonly used to detect convection, but radars that provide high-temporal-resolution data are mostly available over land, and the quality of the data tends to degrade over mountainous regions. On the other hand, geostationary satellite data are available nearly anywhere and in near-real time. Current operational geostationary satellites, the Geostationary Operational Environmental Satellite-16 (GOES-16) and Satellite-17, provide high-spatial- and high-temporal-resolution data but only of cloud top properties; 1 min data, however, allow us to observe convection from visible and infrared data even without vertical information of the convective system. Existing detection algorithms using visible and infrared data look for static features of convective clouds such as overshooting top or lumpy cloud top surface or cloud growth that occurs over periods of 30 min to an hour. This study represents a proof of concept that artificial intelligence (AI) is able, when given high-spatial- and high-temporal-resolution data from GOES-16, to learn physical properties of convective clouds and automate the detection process.</p> <p>A neural network model with convolutional layers is proposed to identify convection from the high-temporal resolution GOES-16 data. The model takes five temporal images from channel 2 (0.65 <span class="inline-formula">µ</span>m) and 14 (11.2 <span class="inline-formula">µ</span>m) as inputs and produces a map of convective regions. In order to provide products comparable to the radar products, it is trained against Multi-Radar Multi-Sensor (MRMS), which is a radar-based product that uses a rather sophisticated method to classify precipitation types. Two channels from GOES-16, each related to cloud optical depth (channel 2) and cloud top height (channel 14), are expected to best represent features of convective clouds: high reflectance, lumpy cloud top surface, and low cloud top temperature. The model has correctly learned those features of convective clouds and resulted in a reasonably low false alarm ratio (FAR) and high probability of detection (POD). However, FAR and POD can vary depending on the threshold, and a proper threshold needs to be chosen based on the purpose.</p>
url https://amt.copernicus.org/articles/14/2699/2021/amt-14-2699-2021.pdf
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