Can machine learning correct microwave humidity radiances for the influence of clouds?
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Published:2021-04-20
Issue:4
Volume:14
Page:2957-2979
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Kaur InderpreetORCID, Eriksson PatrickORCID, Pfreundschuh Simon, Duncan David IanORCID
Abstract
Abstract. A methodology based on quantile regression neural networks (QRNNs) is presented that identifies and corrects the cloud impact on microwave humidity sounder radiances at 183 GHz. This approach estimates the posterior distributions of noise-free clear-sky (NFCS) radiances, providing nearly bias-free estimates of clear-sky radiances with a full posterior error distribution. It is first demonstrated by application to a present sensor, the MicroWave Humidity Sounder 2 (MWHS-2); then the applicability to sub-millimetre (sub-mm) sensors is also analysed. The QRNN results improve upon what operational cloud filtering techniques like a scattering index can achieve but are ultimately imperfect due to limited information content on cirrus impact from traditional microwave channels – the negative departures associated with high cloud impact are successfully corrected, but thin cirrus clouds cannot be fully corrected. In contrast, when sub-mm observations are used, QRNN successfully corrects most cases with cloud impact, with only 2 %–6 % of the cases left partially corrected. The methodology works well even if only one sub-mm channel (325 GHz) is available. When using sub-mm observations, cloud correction usually results in error distributions with a standard deviation less than typical channel noise values. Furthermore, QRNN outputs predicted quantiles for case-specific uncertainty estimates, successfully representing the uncertainty of cloud correction for each observation individually. In comparison to deterministic correction or filtering approaches, the corrected radiances and attendant uncertainty estimates have great potential to be used efficiently in assimilation systems due to being largely unbiased and adding little further uncertainty to the measurements.
Funder
European Organization for the Exploitation of Meteorological Satellites Swedish National Space Agency
Publisher
Copernicus GmbH
Subject
Atmospheric Science
Reference47 articles.
1. Abel, S. and Boutle, I.: An improved representation of the raindrop size
distribution for single-moment microphysics schemes, Q. J. R. Meteorol. Soc.,
138, 2151–2162, 2012. a 2. Aires, F., Prigent, C., Bernardo, F., Jiménez, C., Saunders, R., and
Brunel, P.: A Tool to Estimate Land-Surface Emissivities at Microwave
frequencies (TELSEM) for use in numerical weather prediction, Q. J. R.
Meteorol. Soc., 137, 690–699, 2011. a 3. Barlakas, V. and Eriksson, P.: Three dimensional radiative effects in passive
millimeter/sub-millimeter all-sky observations, Remote Sensing, 12, 531,
https://doi.org/10.3390/rs12030531, 2020. a 4. Bennartz, R. and Bauer, P.: Sensitivity of microwave radiances at 85–183 GHz to precipitating ice particles, Radio Sci., 38, 8075, https://doi.org/10.1029/2002RS002626, 2003. a 5. Berg, W., Bilanow, S., Chen, R., Datta, S., Draper, D., Ebrahimi, H., Farrar, S., Jones, W. L., Kroodsma, R., McKague, D., Payne, V., Wang, J., Wilheit, T., and Yang, J. X.: Intercalibration of the
GPM microwave radiometer constellation, J. Atmos. Ocean. Tech., 33,
2639–2654, 2016. a
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