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Statistical downscaling or bias adjustment? A case study involving implausible climate change projections of precipitation in Malawi.

Authors :
Manzanas, R.
Fiwa, L.
Vanya, C.
Kanamaru, H.
GutiƩrrez, J. M.
Source :
Climatic Change; Oct2020, Vol. 162 Issue 3, p1437-1453, 17p
Publication Year :
2020

Abstract

Statistical downscaling (SD) and bias adjustment (BA) methods are routinely used to produce regional to local climate change projections from coarse global model outputs. The suitability of these techniques depends on the particular application of interest and, especially, on the required spatial resolution. Whereas SD is appropriate for local (e.g., gauge) resolution, BA may be a good alternative when the gap between the predictor and predictand resolution is small. However, the different sources of uncertainty affecting SD such as reanalysis uncertainty, the choice of suitable predictors, climate model, and/or statistical approach may yield implausible projections in particular situations for which BA techniques may offer a compromise alternative, even for local resolution. In this work, we consider a case study with 41 rain gauges over Malawi and show that, despite producing similar results for a historical period, the use of different predictors may lead to large differences in the future projections obtained from SD methods. For instance, using temperature T (specific humidity Q) produces much drier (wetter) conditions than those projected by the raw global models for the target area. We demonstrate that this can be partially alleviated by substituting T+Q by relative humidity R, which simultaneously accounts for both water availability and temperature, and yields regional projections more compatible with the global one. Nevertheless, large local differences still persist, lacking a physical interpretation. In these situations, the use of simpler approaches such as empirical BA may lead to more plausible (i.e., more consistent with the global model) projections. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01650009
Volume :
162
Issue :
3
Database :
Complementary Index
Journal :
Climatic Change
Publication Type :
Academic Journal
Accession number :
146584608
Full Text :
https://doi.org/10.1007/s10584-020-02867-3