Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California

Severity of drought in California (U.S.) varies from year-to-year and is highly influenced by precipitation in winter months, causing billion-dollar events in single drought years. Improved understanding of the variability of drought on decadal and longer timescales is essential to support regional...

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Main Authors: Nazzareno Diodato, Lelys Bravo de Guenni, Mariangel Garcia, Gianni Bellocchi
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Climate
Subjects:
Online Access:http://www.mdpi.com/2225-1154/7/1/6
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spelling doaj-c3da7a0e480d427aae845810446f615f2020-11-24T21:27:20ZengMDPI AGClimate2225-11542019-01-0171610.3390/cli7010006cli7010006Decadal Oscillation in the Predictability of Palmer Drought Severity Index in CaliforniaNazzareno Diodato0Lelys Bravo de Guenni1Mariangel Garcia2Gianni Bellocchi3Met European Research Observatory, 82100 Benevento, ItalyDivision of Statistics, Northern Illinois University, DeKalb, IL 60115, USAComputational Science Research Center, San Diego State University, San Diego, CA 92182-7720, USAMet European Research Observatory, 82100 Benevento, ItalySeverity of drought in California (U.S.) varies from year-to-year and is highly influenced by precipitation in winter months, causing billion-dollar events in single drought years. Improved understanding of the variability of drought on decadal and longer timescales is essential to support regional water resources planning and management. This paper presents a soft-computing approach to forecast the Palmer Drought Severity Index (PDSI) in California. A time-series of yearly data covering more than two centuries (1801–2014) was used for the design of ensemble projections to understand and quantify the uncertainty associated with interannual-to-interdecadal predictability. With a predictable structure elaborated by exponential smoothing, the projections indicate for the horizon 2015–2054 a weak increase of drought, followed by almost the same pace as in previous decades, presenting remarkable wavelike variations with durations of more than one year. Results were compared with a linear transfer function model approach where Pacific Decadal Oscillation and El Niño Southern Oscillation indices were both used as input time series. The forecasted pattern shows that variations attributed to such internal climate modes may not provide more reliable predictions than the one provided by purely internal variability of drought persistence cycles, as present in the PDSI time series.http://www.mdpi.com/2225-1154/7/1/6droughtensemble forecastexponential smoothingtransfer function modelling
collection DOAJ
language English
format Article
sources DOAJ
author Nazzareno Diodato
Lelys Bravo de Guenni
Mariangel Garcia
Gianni Bellocchi
spellingShingle Nazzareno Diodato
Lelys Bravo de Guenni
Mariangel Garcia
Gianni Bellocchi
Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
Climate
drought
ensemble forecast
exponential smoothing
transfer function modelling
author_facet Nazzareno Diodato
Lelys Bravo de Guenni
Mariangel Garcia
Gianni Bellocchi
author_sort Nazzareno Diodato
title Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
title_short Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
title_full Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
title_fullStr Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
title_full_unstemmed Decadal Oscillation in the Predictability of Palmer Drought Severity Index in California
title_sort decadal oscillation in the predictability of palmer drought severity index in california
publisher MDPI AG
series Climate
issn 2225-1154
publishDate 2019-01-01
description Severity of drought in California (U.S.) varies from year-to-year and is highly influenced by precipitation in winter months, causing billion-dollar events in single drought years. Improved understanding of the variability of drought on decadal and longer timescales is essential to support regional water resources planning and management. This paper presents a soft-computing approach to forecast the Palmer Drought Severity Index (PDSI) in California. A time-series of yearly data covering more than two centuries (1801–2014) was used for the design of ensemble projections to understand and quantify the uncertainty associated with interannual-to-interdecadal predictability. With a predictable structure elaborated by exponential smoothing, the projections indicate for the horizon 2015–2054 a weak increase of drought, followed by almost the same pace as in previous decades, presenting remarkable wavelike variations with durations of more than one year. Results were compared with a linear transfer function model approach where Pacific Decadal Oscillation and El Niño Southern Oscillation indices were both used as input time series. The forecasted pattern shows that variations attributed to such internal climate modes may not provide more reliable predictions than the one provided by purely internal variability of drought persistence cycles, as present in the PDSI time series.
topic drought
ensemble forecast
exponential smoothing
transfer function modelling
url http://www.mdpi.com/2225-1154/7/1/6
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