4.7 Article

QRF4P-NRT: Probabilistic Post-Processing of Near-Real-Time Satellite Precipitation Estimates Using Quantile Regression Forests

Journal

WATER RESOURCES RESEARCH
Volume 58, Issue 5, Pages -

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1029/2022WR032117

Keywords

Ensemble; near-real-time; post-processing; probabilistic; quantile regression; satellite precipitation estimates

Funding

  1. National Key Research and Development Program of China [2018YFE0196000]
  2. U.S. Department of Energy (DOE) [DE-IA0000018]
  3. Natural Science Foundation of China [51879009]
  4. Second Tibetan Plateau Scientific Expedition and Research Program [2019QZKK0405]

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Accurate and reliable near-real-time satellite precipitation estimation is crucial for flood forecasting and drought monitoring. We propose a probabilistic post-processing method based on quantile modeling, which improves the overall quality of precipitation estimates and provides both deterministic and probabilistic predictions. The experiment demonstrates that our method outperforms other products in complex terrains and effectively improves the quality of precipitation estimates.
Accurate and reliable near-real-time satellite precipitation estimation is of great importance for operational large-scale flood forecasting and drought monitoring. The state-of-the-art precipitation post-processing model is based on a deterministic approach to construct relationships between satellites estimates and ground observations. We propose a probabilistic postprocessor, the Probabilistic Post-Processing of Near-Real-Time Satellite Precipitation Estimates using Quantile Regression Forests (QRF4P-NRT), based on quantile modeling, yielding both deterministic and probabilistic predictions. The experimental design incorporates different solutions of near-real-time predictors to further improve the model performance. Using the Integrated Multi-satellitE Retrievals Early Run for Global Precipitation Measurement Mission (IMERG-E) product as an example, we illustrate that the proposed method significantly improves the overall quality of the raw IMERG-E and is also superior to the bias-corrected product (IMERG Final Run, IMERG-F) at daily scale in a complex mountain basin. Evaluations of the corrected IMERG-E, raw IMERG-E, and IMERG-F using ground observation show that the corrected IMERG-E improves correlation coefficients (0.7), mean error (-0.14 mm/day) and root mean square error (3.3 mm/day) relative to the raw IMERG-E (0.31, -0.72 and 5.5 mm/day) and IMERG-F (0.34, -0.09 and 6.0 mm/day). The error decomposition further confirms that the QRF4P-NRT improves on the various deficiencies of the raw IMERG-E product. The ensemble assessment also demonstrates that the quantile outputs provide reliable prediction spread and sharp prediction intervals. The promising results indicate the great potential of the proposed method for probabilistic post-processing for near-real-time satellite precipitation estimates, and for further applications such as hydrological ensemble forecasting.

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