Analogue methods and ERA5: Benefits and pitfalls

13. Climate action 01 natural sciences 550 Earth sciences & geology 0105 earth and related environmental sciences
DOI: 10.1002/joc.7484 Publication Date: 2021-12-04T06:39:00Z
ABSTRACT
AbstractPerfect prognosis statistical downscaling relies on the statistical relationships established using observational data for predictands and predictors. Predictors are often retrieved from reanalyses, which are considered pseudo‐observations. The impact of the choice of a reanalysis dataset on the performance of the downscaling method is usually overlooked, as global reanalyses are frequently assumed to be equivalent for the last few decades and data‐rich regions such as Europe. However, it was recently shown that the reanalysis dataset can have a bigger impact on the method skill than the choice of predictor variables. Generally, reanalyses processed by more recent atmospheric models assimilate more data and perform best. This work is aimed at assessing the extent of potential gains from the use of ERA5, following its release, compared to other global reanalyses. The assessment was carried out using six variants of analogue methods, which are statistical downscaling techniques, to predict daily precipitation at 301 stations across Switzerland. ERA5 proved to be one of the best performing reanalyses across the different analogue methods. Due to data availability, we recommend using 20CR for applications starting between 1851 and 1900, CERA‐20C for those between 1900 and 1950, and ERA5 for applications after 1950. However, ERA5 high spatial resolution (0.25°) turned out to be a trap for simple calibration techniques. The domains over which the predictor fields are compared need to be optimized, and high‐resolution grids come along with numerous sub‐optimal local solutions. An enhanced calibration procedure, thus, must be used. Besides the risk of poorly‐calibrated domains, the high resolution also requires much higher computational time with no gain in skill, provided that the predictors considered are relevant at a synoptic scale. Although ERA5 should be the dataset of choice, its use at a lower resolution to predict daily precipitation should provide equivalent performance.
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