Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas

The generation of synthetic time series is important in contemporary water sciences for their wide applicability and ability to model environmental uncertainty. Hydroclimatic variables often exhibit highly skewed distributions, intermittency (that is, alternating dry and wet intervals), and spatial...

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Main Authors: George Pouliasis, Gina Alexandra Torres-Alves, Oswaldo Morales-Napoles
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/13/16/2156
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spelling doaj-0a68593a28d14d568d406b12fc086b7f2021-08-26T14:27:27ZengMDPI AGWater2073-44412021-08-01132156215610.3390/w13162156Stochastic Modeling of Hydroclimatic Processes Using Vine CopulasGeorge Pouliasis0Gina Alexandra Torres-Alves1Oswaldo Morales-Napoles2Hydraulic Structures and Flood Risk, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsHydraulic Structures and Flood Risk, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsHydraulic Structures and Flood Risk, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsThe generation of synthetic time series is important in contemporary water sciences for their wide applicability and ability to model environmental uncertainty. Hydroclimatic variables often exhibit highly skewed distributions, intermittency (that is, alternating dry and wet intervals), and spatial and temporal dependencies that pose a particular challenge to their study. Vine copula models offer an appealing approach to generate synthetic time series because of their ability to preserve any marginal distribution while modeling a variety of probabilistic dependence structures. In this work, we focus on the stochastic modeling of hydroclimatic processes using vine copula models. We provide an approach to model intermittency by coupling Markov chains with vine copula models. Our approach preserves first-order auto- and cross-dependencies (correlation). Moreover, we present a novel framework that is able to model multiple processes simultaneously. This method is based on the coupling of temporal and spatial dependence models through repetitive sampling. The result is a parsimonious and flexible method that can adequately account for temporal and spatial dependencies. Our method is illustrated within the context of a recent reliability assessment of a historical hydraulic structure in central Mexico. Our results show that by ignoring important characteristics of probabilistic dependence that are well captured by our approach, the reliability of the structure could be severely underestimated.https://www.mdpi.com/2073-4441/13/16/2156vine copulacopulastochastic simulationintermittent behaviormultivariate simulationtime series
collection DOAJ
language English
format Article
sources DOAJ
author George Pouliasis
Gina Alexandra Torres-Alves
Oswaldo Morales-Napoles
spellingShingle George Pouliasis
Gina Alexandra Torres-Alves
Oswaldo Morales-Napoles
Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
Water
vine copula
copula
stochastic simulation
intermittent behavior
multivariate simulation
time series
author_facet George Pouliasis
Gina Alexandra Torres-Alves
Oswaldo Morales-Napoles
author_sort George Pouliasis
title Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
title_short Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
title_full Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
title_fullStr Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
title_full_unstemmed Stochastic Modeling of Hydroclimatic Processes Using Vine Copulas
title_sort stochastic modeling of hydroclimatic processes using vine copulas
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2021-08-01
description The generation of synthetic time series is important in contemporary water sciences for their wide applicability and ability to model environmental uncertainty. Hydroclimatic variables often exhibit highly skewed distributions, intermittency (that is, alternating dry and wet intervals), and spatial and temporal dependencies that pose a particular challenge to their study. Vine copula models offer an appealing approach to generate synthetic time series because of their ability to preserve any marginal distribution while modeling a variety of probabilistic dependence structures. In this work, we focus on the stochastic modeling of hydroclimatic processes using vine copula models. We provide an approach to model intermittency by coupling Markov chains with vine copula models. Our approach preserves first-order auto- and cross-dependencies (correlation). Moreover, we present a novel framework that is able to model multiple processes simultaneously. This method is based on the coupling of temporal and spatial dependence models through repetitive sampling. The result is a parsimonious and flexible method that can adequately account for temporal and spatial dependencies. Our method is illustrated within the context of a recent reliability assessment of a historical hydraulic structure in central Mexico. Our results show that by ignoring important characteristics of probabilistic dependence that are well captured by our approach, the reliability of the structure could be severely underestimated.
topic vine copula
copula
stochastic simulation
intermittent behavior
multivariate simulation
time series
url https://www.mdpi.com/2073-4441/13/16/2156
work_keys_str_mv AT georgepouliasis stochasticmodelingofhydroclimaticprocessesusingvinecopulas
AT ginaalexandratorresalves stochasticmodelingofhydroclimaticprocessesusingvinecopulas
AT oswaldomoralesnapoles stochasticmodelingofhydroclimaticprocessesusingvinecopulas
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