TY - JOUR
T1 - Deep Learning Forecast Uncertainty for Precipitation over the Western United States
AU - Hu, Weiming
AU - Ghazvinian, Mohammadvaghef
AU - Chapman, William E.
AU - Sengupta, Agniv
AU - Ralph, Fred Martin
AU - MonachE, Luca Delle
N1 - Publisher Copyright:
© 2023 American Meteorological Society.
PY - 2023/6
Y1 - 2023/6
N2 - Reliably quantifying uncertainty in precipitation forecasts remains a critical challenge. This work examines the application of a deep learning (DL) architecture, Unet, for postprocessing deterministic numerical weather predictions of precipitation to improve their skills and for deriving forecast uncertainty. Daily accumulated 0-4-day precipitation forecasts are generated from a 34-yr reforecast based on the West Weather Research and Forecasting (West-WRF) mesoscale model, developed by the Center for Western Weather and Water Extremes. The Unet learns the distributional parameters associated with a censored, shifted gamma distribution. In addition, the DL framework is tested against state-of-the-art benchmark methods, including an analog ensemble, nonhomogeneous regression, and mixed-type meta-Gaussian distribution. These methods are evaluated over four years of data and the western United States. The Unet outperforms the benchmark methods at all lead times as measured by continuous ranked probability and Brier skill scores. The Unet also produces a reliable estimation of forecast uncertainty, as measured by binned spread-skill relationship diagrams. Additionally, the Unet has the best performance for extreme events (i.e., the 95th and 99th percentiles of the distribution) and for these cases, its performance improves as more training data are available.
AB - Reliably quantifying uncertainty in precipitation forecasts remains a critical challenge. This work examines the application of a deep learning (DL) architecture, Unet, for postprocessing deterministic numerical weather predictions of precipitation to improve their skills and for deriving forecast uncertainty. Daily accumulated 0-4-day precipitation forecasts are generated from a 34-yr reforecast based on the West Weather Research and Forecasting (West-WRF) mesoscale model, developed by the Center for Western Weather and Water Extremes. The Unet learns the distributional parameters associated with a censored, shifted gamma distribution. In addition, the DL framework is tested against state-of-the-art benchmark methods, including an analog ensemble, nonhomogeneous regression, and mixed-type meta-Gaussian distribution. These methods are evaluated over four years of data and the western United States. The Unet outperforms the benchmark methods at all lead times as measured by continuous ranked probability and Brier skill scores. The Unet also produces a reliable estimation of forecast uncertainty, as measured by binned spread-skill relationship diagrams. Additionally, the Unet has the best performance for extreme events (i.e., the 95th and 99th percentiles of the distribution) and for these cases, its performance improves as more training data are available.
KW - Atmosphere
KW - Forecast verification/skill
KW - Machine learning
KW - Postprocessing
KW - Probabilistic Quantitative Precipitation Forecasting (PQPF)
KW - Short-range prediction
UR - https://www.scopus.com/pages/publications/85162035102
U2 - 10.1175/MWR-D-22-0268.1
DO - 10.1175/MWR-D-22-0268.1
M3 - Article
AN - SCOPUS:85162035102
SN - 0027-0644
VL - 151
SP - 1367
EP - 1385
JO - Monthly Weather Review
JF - Monthly Weather Review
IS - 6
ER -