Published July 22, 2025
Journal article Open

Probabilistic precipitation downscaling for ungauged mountain sites: a pilot study for the Hindu Kush Himalaya

  • 1. British Antarctic Survey, UK Research and Innovation, Cambridge, UK
  • 2. Department of Engineering, University of Cambridge, Cambridge, UK
  • 3. School of Geography, Earth and Environmental Sciences, University of Birmingham, Birmingham, UK
  • 4. WTW Research Network, WTW, London, UK
  • 5. U.S.-Pakistan Center for Advanced Studies in Water, Mehran University of Engineering and Technology, Jamshoro, Pakistan
  • 6. The Alan Turing Institute, London, UK
  • 7. Atmospheric and Oceanic Sciences, University of California Los Angeles, Los Angeles, CA, USA
  • 8. Mott MacDonald, Cambridge, UK
  • 9. Institute of Geography and Regional Science, University of Graz, Graz, Austria
  • 10. Himalayan University Consortium, Lalitpur, Nepal

Description

This study introduces a novel approach to post-processing (i.e. downscaling and bias-correcting) reanalysis-driven regional climate model daily precipitation outputs that can be generalised to ungauged mountain locations by leveraging sparse in situ observations and a probabilistic regression framework. We call this post-processing approach generalised probabilistic regression (GPR) and implement it using both generalised linear models and artificial neural networks (i.e. multi-layer perceptrons). By testing the GPR post-processing approach across three Hindu Kush Himalaya (HKH) basins with varying hydro-meteorological characteristics and four experiments, which are representative of real-world scenarios, we find it performs consistently much better than both raw regional climate model output and deterministic bias correction methods for generalising daily precipitation post-processing to ungauged locations. We also find that GPR models are flexible and can be trained using data from a single region or multiple regions combined together, without major impacts on model performance. Additionally, we show that the GPR approach results in superior skill for post-processing entirely ungauged regions, by leveraging data from other regions as well as ungauged high-elevation ranges. This suggests that GPR models have potential for extending post-processing of daily precipitation to ungauged areas of HKH. Whilst multi-layer perceptrons yield marginally improved results overall, generalised linear models are a robust choice, particularly for data-scarce scenarios, i.e. post-processing extreme precipitation events and generalising to completely ungauged regions.

Files

Probabilistic precipitation downscaling for ungauged mountain.pdf

Files (7.7 MB)

Additional details

Publishing information

Title
Hydrology and Earth System Sciences (HESS)
Volume
29
Issue
14
Pages
3073–3100
ISSN
1607-7938