Cloud Mesoscale Cellular Classification and Diurnal Cycle Using a Convolutional Neural Network (CNN)
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Date
2023-03-15
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Citation of Original Publication
Segal Rozenhaimer, Michal, David Nukrai, Haochi Che, Robert Wood, and Zhibo Zhang. 2023. "Cloud Mesoscale Cellular Classification and Diurnal Cycle Using a Convolutional Neural Network (CNN)" Remote Sensing 15, no. 6: 1607. https://doi.org/10.3390/rs15061607
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Attribution 4.0 International (CC BY 4.0)
Attribution 4.0 International (CC BY 4.0)
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Abstract
Marine stratocumulus (MSC) clouds are important to the climate as they cover vast areas
of the ocean’s surface, greatly affecting radiation balance of the Earth. Satellite imagery shows
that MSC clouds exhibit different morphologies of closed or open mesoscale cellular convection
(MCC) but many limitations still exist in studying MCC dynamics. Here, we present a convolutional
neural network algorithm to classify pixel-level closed and open MCC cloud types, trained by either
visible or infrared channels from a geostationary SEVIRI satellite to allow, for the first time, their
diurnal detection, with a 30 min. temporal resolution. Our probability of detection was 91% and
92% for closed and open MCC, respectively, which is in line with day-only detection schemes. We
focused on the South-East Atlantic Ocean during months of biomass burning season, between 2016
and 2018. Our resulting MCC type area coverage, cloud effective radii, and cloud optical depth
probability distributions over the research domain compare well with monthly and daily averages
from MODIS. We further applied our algorithm on GOES-16 imagery over the South-East Pacific
(SEP), another semi-permanent MCC domain, and were able to show good prediction skills, thereby
representing the SEP diurnal cycle and the feasibility of our method to be applied globally on different
satellite platforms.