Statistical uncertainty analysis-based precipitation merging (SUPER): A new framework for improved global precipitation estimation

  • Jianzhi Dong*
  • , Wade T. Crow
  • , Xi Chen
  • , Natthachet Tangdamrongsub
  • , Man Gao
  • , Shanlei Sun
  • , Jianxiu Qiu
  • , Lingna Wei
  • , Hongkai Gao
  • , Zheng Duan
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

24 Scopus citations

Abstract

Multi-source merging is an established tool for improving large-scale precipitation estimates. Existing merging frameworks typically use gauge-based precipitation error statistics and neglect the inter-dependence of various precipitation products. However, gauge-observation uncertainties at daily and sub-daily time scales can bias merging weights and yield sub-optimal precipitation estimates, particularly over data-sparse regions. Likewise, frameworks ignoring inter-product error cross-correlation will overfit precipitation observation noise. Here, a Statistical Uncertainty analysis-based Precipitation mERging framework (SUPER) is proposed for addressing these challenges. Specifically, a quadruple collocation analysis is employed to estimate precipitation error variances and covariances for commonly used precipitation products. These error estimates are subsequently used for merging all products via a least-squares minimization approach. In addition, false-alarm precipitation events are removed via a reference rain/no-rain time series estimated by a newly developed categorical variable merging method. As such, SUPER does not require any rain gauge observations to reduce daily random and rain/no-rain classification errors. Additionally, by considering precipitation product inter-dependency, SUPER avoids overfitting measurement noise present in multi-source precipitation products. Results show that the overall RMSE of SUPER-based precipitation is 3.35 mm/day and the daily correlation with gauge observations is 0.71 [−] – metrics that are generally superior to recent precipitation reanalyses and remote sensing products. In this way, we seek to propose a new framework for robustly generating global precipitation datasets that can improve land surface and hydrological modeling skill in data-sparse regions.

Original languageEnglish
Article number113299
JournalRemote Sensing of Environment
Volume283
DOIs
StatePublished - 15 Dec 2022

Keywords

  • Data merging
  • Error cross correlation
  • Precipitation
  • Rain/norain classification
  • Uncertainty analysis

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