Precipitation estimation from the Arctic Weather Satellite: An initial study using probabilistic deep learning
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Examensarbete för masterexamen
Master's Thesis
Master's Thesis
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Accurate precipitation information is important for understanding the hydrological
cycle, improving weather forecasts and supporting hydrological applications. How
ever, precipitation is difficult to observe with sufficient spatial and temporal coverage.
Rain gauges provide only local measurements and ground-based radars are limited
to regions where they are available. Satellite observations can complement these sys
tems by providing precipitation information over larger and sparsely instrumented
domains.
Passive microwave observations are widely used for precipitation estimation, and
the newly launched Arctic Weather Satellite (AWS) offers a novel extension of this
capability. AWS is a compact satellite carrying a 19-channel microwave radiometer
and the first mission to include sub-millimetre channels around 325 GHz for this
purpose. This thesis primarily investigates whether AWS observations can be used
to retrieve surface precipitation rates using supervised machine learning. A secondary
aim is to determine if these novel sub-millimetre channels have a positive effect on the
retrieval performance. To achieve this, a dataset is constructed by matching AWS
antenna temperatures with Multi-Radar Multi-Sensor (MRMS) radar precipitation
estimates over the contiguous United States. Quantile regression neural networks are
trained to predict conditional quantiles of the surface precipitation rate, providing
both deterministic estimates and probabilistic estimates of retrieval uncertainty.
Results demonstrate that AWS antenna temperatures contain valuable information
for surface precipitation retrieval. The trained model captures broad precipitation
structures and achieves near-zero overall bias on the independent test set. Although
the predictions do not fully capture the intensity of the precipitation the spatial
mapping is consistent with the radar reference. An additional model trained with
out the sub-millimetre channels evaluates the specific impact of these sensors. Com
parisons indicate that the sub-millimetre channels provide a modest but consistent
improvement across the overall evaluation metrics. These findings serve as an initial
assessment of AWS-based precipitation retrieval. This investigation is particularly
relevant due to the upcoming launch of EPS-Sterna, a constellation of AWS satellites
which could significantly enhance the temporal sampling of global precipitation ob
servations. Further efforts could explore using other reference precipitation products
ii to expand the geographical domain, as well as incorporating longer data records as
newer AWS observations become available.
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Precipitation estimation from the Arctic Weather Satellite: An initial study using probabilistic deep learning
