Probabilistic precipitation downscaling for ungauged mountain sites: a pilot study for the Hindu Kush Himalaya
Creators
- 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)
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Additional details
Identifiers
Publishing information
- Title
- Hydrology and Earth System Sciences (HESS)
- Volume
- 29
- Issue
- 14
- Pages
- 3073–3100
- ISSN
- 1607-7938