Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?

Statistical downscaling methods are popular post-processing tools which are widely used in many sectors to adapt the coarse-resolution biased outputs from global climate simulations to the regional-to-local scale typically required by users. They range from simple and pragmatic Bias Correction (BC)...

Full description

Bibliographic Details
Main Authors: Manzanas, R, Lucero, A, Weisheimer, A, Gutiérrez, J
Format: Journal article
Published: Springer Verlag 2017
_version_ 1797079092228521984
author Manzanas, R
Lucero, A
Weisheimer, A
Gutiérrez, J
author_facet Manzanas, R
Lucero, A
Weisheimer, A
Gutiérrez, J
author_sort Manzanas, R
collection OXFORD
description Statistical downscaling methods are popular post-processing tools which are widely used in many sectors to adapt the coarse-resolution biased outputs from global climate simulations to the regional-to-local scale typically required by users. They range from simple and pragmatic Bias Correction (BC) methods, which directly adjust the model outputs of interest (e.g. precipitation) according to the available local observations, to more complex Perfect Prognosis (PP) ones, which indirectly derive local predictions (e.g. precipitation) from appropriate upper-air large-scale model variables (predictors). Statistical downscaling methods have been extensively used and critically assessed in climate change applications; however, their advantages and limitations in seasonal forecasting are not well understood yet. In particular, a key problem in this context is whether they serve to improve the forecast quality/skill of raw model outputs beyond the adjustment of their systematic biases. In this paper we analyze this issue by applying two state-of-the-art BC and two PP methods to downscale precipitation from a multimodel seasonal hindcast in a challenging tropical region, the Philippines. To properly assess the potential added value beyond the reduction of model biases, we consider two validation scores which are not sensitive to changes in the mean (correlation and reliability categories). Our results show that, whereas BC methods maintain or worsen the skill of the raw model forecasts, PP methods can yield significant skill improvement (worsening) in cases for which the large-scale predictor variables considered are better (worse) predicted by the model than precipitation. For instance, PP methods are found to increase (decrease) model reliability in nearly 40% of the stations considered in boreal summer (autumn). Therefore, the choice of a convenient downscaling approach (either BC or PP) depends on the region and the season.
first_indexed 2024-03-07T00:40:45Z
format Journal article
id oxford-uuid:82f4069c-8dec-4a63-9426-0c06e4b61fa3
institution University of Oxford
last_indexed 2024-03-07T00:40:45Z
publishDate 2017
publisher Springer Verlag
record_format dspace
spelling oxford-uuid:82f4069c-8dec-4a63-9426-0c06e4b61fa32022-03-26T21:40:59ZCan bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:82f4069c-8dec-4a63-9426-0c06e4b61fa3Symplectic Elements at OxfordSpringer Verlag2017Manzanas, RLucero, AWeisheimer, AGutiérrez, JStatistical downscaling methods are popular post-processing tools which are widely used in many sectors to adapt the coarse-resolution biased outputs from global climate simulations to the regional-to-local scale typically required by users. They range from simple and pragmatic Bias Correction (BC) methods, which directly adjust the model outputs of interest (e.g. precipitation) according to the available local observations, to more complex Perfect Prognosis (PP) ones, which indirectly derive local predictions (e.g. precipitation) from appropriate upper-air large-scale model variables (predictors). Statistical downscaling methods have been extensively used and critically assessed in climate change applications; however, their advantages and limitations in seasonal forecasting are not well understood yet. In particular, a key problem in this context is whether they serve to improve the forecast quality/skill of raw model outputs beyond the adjustment of their systematic biases. In this paper we analyze this issue by applying two state-of-the-art BC and two PP methods to downscale precipitation from a multimodel seasonal hindcast in a challenging tropical region, the Philippines. To properly assess the potential added value beyond the reduction of model biases, we consider two validation scores which are not sensitive to changes in the mean (correlation and reliability categories). Our results show that, whereas BC methods maintain or worsen the skill of the raw model forecasts, PP methods can yield significant skill improvement (worsening) in cases for which the large-scale predictor variables considered are better (worse) predicted by the model than precipitation. For instance, PP methods are found to increase (decrease) model reliability in nearly 40% of the stations considered in boreal summer (autumn). Therefore, the choice of a convenient downscaling approach (either BC or PP) depends on the region and the season.
spellingShingle Manzanas, R
Lucero, A
Weisheimer, A
Gutiérrez, J
Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title_full Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title_fullStr Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title_full_unstemmed Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title_short Can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts?
title_sort can bias correction and statistical downscaling methods improve the skill of seasonal precipitation forecasts
work_keys_str_mv AT manzanasr canbiascorrectionandstatisticaldownscalingmethodsimprovetheskillofseasonalprecipitationforecasts
AT luceroa canbiascorrectionandstatisticaldownscalingmethodsimprovetheskillofseasonalprecipitationforecasts
AT weisheimera canbiascorrectionandstatisticaldownscalingmethodsimprovetheskillofseasonalprecipitationforecasts
AT gutierrezj canbiascorrectionandstatisticaldownscalingmethodsimprovetheskillofseasonalprecipitationforecasts