GPROF-IR: An Improved Single-Channel Infrared Precipitation Retrieval for Merged Satellite Precipitation Products
Simon Pfreundschuh, Christian D. Kummerow, Jackson Tan, George J. Huffman

TL;DR
GPROF-IR introduces a neural network-based method to enhance single-channel IR precipitation retrievals, improving consistency and accuracy in satellite-based precipitation estimates.
Contribution
It presents a novel convolutional neural network model that leverages temporal IR data to significantly improve precipitation estimates from single-channel IR observations.
Findings
GPROF-IR reduces mean squared error compared to conventional IR methods.
It achieves higher correlation with independent measurements over land.
It provides a state-of-the-art approach for half-hourly IR precipitation retrievals.
Abstract
Current merged precipitation products such as IMERG, GSMAP, and CMORPH combine satellite estimates from passive microwave (PMW) and infrared (IR) observations. However, the different information content of these sensors makes it challenging to produce consistent precipitation estimates, even for coincident observations. The resulting inconsistencies between PMW and IR retrievals can introduce artifacts in the temporal evolution of merged precipitation fields and lead to an overreliance on time-propagated PMW estimates. We introduce GPROF-IR, a novel IR precipitation retrieval that leverages a convolutional neural network to improve precipitation estimates from single-channel IR observations. We demonstrate that the proposed model is able to leverage the temporal information in half-hourly IR observations to improve precipitation estimates. GPROF-IR is designed for integration into the…
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