Quantifying the potential effects of Climate Change (CC) on hydrological scales is a topic with a more and more increasing interest for the scientific community, given the CC impact on agriculture, industry, economy, human health, ecosystems, among the others. In this context, the paper focuses on the sub-daily Annual Maxima (AM) of rainfall height time series, and specifically on the crucial role played by initial skewness, i.e. the skewness of the observed rainfall series used to evaluate potential parametric trends. Here a quick and user-friendly methodology is proposed, that is aimed at quantifying plausible future changes in terms of probability distributions assumed at rain gauge scale, from projections of any climatic model. In detail, the Generalized Extreme Value (GEV) and the Two-Component Extreme Value (TCEV) distributions are adopted as probability functions suitable for modelling observed rainfall AM series, which could increase their frequency and magnitude into future horizons under CC. EURO-CORDEX projections for Europe are considered, under the hypothesis that the values of the change factor, i.e. the ratio between the values of a specific quantile at two specific time horizons, are invariant when moving from an areally-averaged scale (typical for any climate model) to a point rain gauge scale, which induces that future changes are provided (in terms of frequency and magnitude of extreme events) without the need of any spatial downscaling from the assumed projections. The proposed methodology can contribute to hazard quantification associated to potential climate changes, and thus it can play a crucial role in the assessment of hydraulic structures resilience; the obtained results, specific for the study area of Italy, but easily extendable on a global scale, showed that larger increases in frequency of future heavy events are expected for time series with “EV1 alike” values of initial skewness.

Climate change effects on rainfall extreme value distribution: the role of skewness / DE LUCA, Davide Luciano; Ridolfi, Elena; Russo, Fabio; Moccia, Benedetta; Napolitano, Francesco. - In: JOURNAL OF HYDROLOGY. - ISSN 0022-1694. - 634:(2024). [10.1016/j.jhydrol.2024.130958]

Climate change effects on rainfall extreme value distribution: the role of skewness

DAVIDE LUCIANO DE LUCA
Primo
;
Elena Ridolfi
Secondo
;
Fabio Russo;Benedetta Moccia
Penultimo
;
Francesco Napolitano
Ultimo
2024

Abstract

Quantifying the potential effects of Climate Change (CC) on hydrological scales is a topic with a more and more increasing interest for the scientific community, given the CC impact on agriculture, industry, economy, human health, ecosystems, among the others. In this context, the paper focuses on the sub-daily Annual Maxima (AM) of rainfall height time series, and specifically on the crucial role played by initial skewness, i.e. the skewness of the observed rainfall series used to evaluate potential parametric trends. Here a quick and user-friendly methodology is proposed, that is aimed at quantifying plausible future changes in terms of probability distributions assumed at rain gauge scale, from projections of any climatic model. In detail, the Generalized Extreme Value (GEV) and the Two-Component Extreme Value (TCEV) distributions are adopted as probability functions suitable for modelling observed rainfall AM series, which could increase their frequency and magnitude into future horizons under CC. EURO-CORDEX projections for Europe are considered, under the hypothesis that the values of the change factor, i.e. the ratio between the values of a specific quantile at two specific time horizons, are invariant when moving from an areally-averaged scale (typical for any climate model) to a point rain gauge scale, which induces that future changes are provided (in terms of frequency and magnitude of extreme events) without the need of any spatial downscaling from the assumed projections. The proposed methodology can contribute to hazard quantification associated to potential climate changes, and thus it can play a crucial role in the assessment of hydraulic structures resilience; the obtained results, specific for the study area of Italy, but easily extendable on a global scale, showed that larger increases in frequency of future heavy events are expected for time series with “EV1 alike” values of initial skewness.
2024
rainfall annual maxima ; TCEV distributions skewness; climate change; extreme value distributions
01 Pubblicazione su rivista::01a Articolo in rivista
Climate change effects on rainfall extreme value distribution: the role of skewness / DE LUCA, Davide Luciano; Ridolfi, Elena; Russo, Fabio; Moccia, Benedetta; Napolitano, Francesco. - In: JOURNAL OF HYDROLOGY. - ISSN 0022-1694. - 634:(2024). [10.1016/j.jhydrol.2024.130958]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1705728
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