Towards Quantifying the Uncertainty in Estimating Observed Scaling Rates

Haider Ali*, Hayley J. Fowler, David Pritchard, Geert Lenderink, Stephen Blenkinsop, Elizabeth Lewis

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Short-duration precipitation extremes (PE) increase at a rate of around 7%/K explained by the Clausius-Clapeyron relationship. Previous studies show uncertainty in the extreme precipitation-temperature relationship (scaling) due to various thermodynamic/dynamic factors. Here, we show that uncertainty may arise from the choice of data and methods. Using hourly precipitation (PPT) and daily dewpoint temperature (DPT) across 2,905 locations over the United States, we found higher scaling for quality-controlled data, all locations showing positive (median 6.2%/K) scaling, as compared to raw data showing positive (median 5.3%/K) scaling over 97.5% of locations. We found higher scaling for higher measurement precision of PPT (0.25 mm: median 7.8%/K; 2.54 mm: median 6.6%/K). The method that removes seasonality in PPT and DPT gives higher (with seasonality: median 6.2%/K; without seasonality: median 7.2%/K) scaling. Our results demonstrate the importance of quality-controlled, high-precision observations and robust methods in estimating accurate scaling for a better understanding of PE change with warming.

Original languageEnglish
Article numbere2022GL099138
JournalGeophysical Research Letters
Volume49
Issue number12
DOIs
Publication statusPublished - 28 Jun 2022

Keywords

  • dewpoint temperature
  • extreme precipitation
  • observed precipitation
  • quality-control
  • rain-gauge data
  • scaling

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