Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies

Evaluation of effects of climate change on climate variable extremes is a key topic in civil and structural engineering, strongly affecting adaptation strategy for resilience. Appropriate procedures to assess the evolution over time of climatic actions are needed to deal with the inherent uncertaint...

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Main Authors: Pietro Croce, Paolo Formichi, Filippo Landi
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Atmosphere
Subjects:
Online Access:https://www.mdpi.com/2073-4433/12/8/1074
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spelling doaj-2248ef3f41eb4c9d824a20719319a2202021-08-26T13:31:49ZengMDPI AGAtmosphere2073-44332021-08-01121074107410.3390/atmos12081074Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact StudiesPietro Croce0Paolo Formichi1Filippo Landi2Department of Civil and Industrial Engineering-Structural Division, University of Pisa, Largo Lucio Lazzarino 1, 56122 Pisa, ItalyDepartment of Civil and Industrial Engineering-Structural Division, University of Pisa, Largo Lucio Lazzarino 1, 56122 Pisa, ItalyDepartment of Civil and Industrial Engineering-Structural Division, University of Pisa, Largo Lucio Lazzarino 1, 56122 Pisa, ItalyEvaluation of effects of climate change on climate variable extremes is a key topic in civil and structural engineering, strongly affecting adaptation strategy for resilience. Appropriate procedures to assess the evolution over time of climatic actions are needed to deal with the inherent uncertainty of climate projections, also in view of providing more sound and robust predictions at the local scale. In this paper, an ad hoc weather generator is presented that is able to provide a quantification of climate model inherent uncertainties. Similar to other weather generators, the proposed algorithm allows the virtualization of the climatic data projection process, overcoming the usual limitations due to the restricted number of available climate model runs, requiring huge computational time. However, differently from other weather generation procedures, this new tool directly samples from the output of Regional Climate Models (RCMs), avoiding the introduction of additional hypotheses about the stochastic properties of the distributions of climate variables. Analyzing the ensemble of so-generated series, future changes of climatic actions can be assessed, and the associated uncertainties duly estimated, as a function of considered greenhouse gases emission scenarios. The efficiency of the proposed weather generator is discussed evaluating performance metrics and referring to a relevant case study: the evaluation of extremes of minimum and maximum temperature, precipitation, and ground snow load in a central Eastern region of Italy, which is part of the Mediterranean climatic zone. Starting from the model ensemble of six RCMs, factors of change uncertainty maps for the investigated region are derived concerning extreme daily temperatures, daily precipitation, and ground snow loads, underlying the potentialities of the proposed approach.https://www.mdpi.com/2073-4433/12/8/1074climate changeextremesfactor of changeclimatic actionsclimatic variablesregional climate models
collection DOAJ
language English
format Article
sources DOAJ
author Pietro Croce
Paolo Formichi
Filippo Landi
spellingShingle Pietro Croce
Paolo Formichi
Filippo Landi
Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
Atmosphere
climate change
extremes
factor of change
climatic actions
climatic variables
regional climate models
author_facet Pietro Croce
Paolo Formichi
Filippo Landi
author_sort Pietro Croce
title Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
title_short Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
title_full Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
title_fullStr Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
title_full_unstemmed Enhancing the Output of Climate Models: A Weather Generator for Climate Change Impact Studies
title_sort enhancing the output of climate models: a weather generator for climate change impact studies
publisher MDPI AG
series Atmosphere
issn 2073-4433
publishDate 2021-08-01
description Evaluation of effects of climate change on climate variable extremes is a key topic in civil and structural engineering, strongly affecting adaptation strategy for resilience. Appropriate procedures to assess the evolution over time of climatic actions are needed to deal with the inherent uncertainty of climate projections, also in view of providing more sound and robust predictions at the local scale. In this paper, an ad hoc weather generator is presented that is able to provide a quantification of climate model inherent uncertainties. Similar to other weather generators, the proposed algorithm allows the virtualization of the climatic data projection process, overcoming the usual limitations due to the restricted number of available climate model runs, requiring huge computational time. However, differently from other weather generation procedures, this new tool directly samples from the output of Regional Climate Models (RCMs), avoiding the introduction of additional hypotheses about the stochastic properties of the distributions of climate variables. Analyzing the ensemble of so-generated series, future changes of climatic actions can be assessed, and the associated uncertainties duly estimated, as a function of considered greenhouse gases emission scenarios. The efficiency of the proposed weather generator is discussed evaluating performance metrics and referring to a relevant case study: the evaluation of extremes of minimum and maximum temperature, precipitation, and ground snow load in a central Eastern region of Italy, which is part of the Mediterranean climatic zone. Starting from the model ensemble of six RCMs, factors of change uncertainty maps for the investigated region are derived concerning extreme daily temperatures, daily precipitation, and ground snow loads, underlying the potentialities of the proposed approach.
topic climate change
extremes
factor of change
climatic actions
climatic variables
regional climate models
url https://www.mdpi.com/2073-4433/12/8/1074
work_keys_str_mv AT pietrocroce enhancingtheoutputofclimatemodelsaweathergeneratorforclimatechangeimpactstudies
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