Statistical Analysis and Stochastic Modelling of Hydrological Extremes

Hydrological extremes have become a major concern because of their devastating consequences and their increased risk as a result of climate change and the growing concentration of people and infrastructure in high-risk zones. The analysis of hydrological extremes is challenging due to their rarity a...

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Year of Publication:2019
Language:English
Physical Description:1 electronic resource (294 p.)
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spelling Tabari, Hossein auth
Statistical Analysis and Stochastic Modelling of Hydrological Extremes
MDPI - Multidisciplinary Digital Publishing Institute 2019
1 electronic resource (294 p.)
text txt rdacontent
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Hydrological extremes have become a major concern because of their devastating consequences and their increased risk as a result of climate change and the growing concentration of people and infrastructure in high-risk zones. The analysis of hydrological extremes is challenging due to their rarity and small sample size, and the interconnections between different types of extremes and becomes further complicated by the untrustworthy representation of meso-scale processes involved in extreme events by coarse spatial and temporal scale models as well as biased or missing observations due to technical difficulties during extreme conditions. The complexity of analyzing hydrological extremes calls for robust statistical methods for the treatment of such events. This Special Issue is motivated by the need to apply and develop innovative stochastic and statistical approaches to analyze hydrological extremes under current and future climate conditions. The papers of this Special Issue focus on six topics associated with hydrological extremes: Historical changes in hydrological extremes; Projected changes in hydrological extremes; Downscaling of hydrological extremes; Early warning and forecasting systems for drought and flood; Interconnections of hydrological extremes; Applicability of satellite data for hydrological studies.
English
artificial neural network
downscaling
innovative methods
reservoir inflow forecasting
simulation
extreme events
climate variability
sparse monitoring network
weighted mean analogue
sampling errors
precipitation
drought indices
discrete wavelet
SWSI
hyetograph
trends
climate change
SIAP
Kabul river basin
Hurst exponent
extreme rainfall
evolutionary strategy
the Cauca River
hydrological drought
global warming
least square support vector regression
polynomial normal transform
TRMM
satellite data
Fiji
heavy storm
flood regime
compound events
random forest
uncertainty
seasonal climate forecast
INDC pledge
Pakistan
wavelet artificial neural network
HBV model
temperature
APCC Multi-Model Ensemble
meteorological drought
flow regime
high resolution
rainfall
clausius-clapeyron scaling
statistical downscaling
ENSO
forecasting
variation analogue
machine learning
extreme rainfall analysis
hydrological extremes
multivariate modeling
monsoon
non-stationary
support vector machine
ANN model
stretched Gaussian distribution
drought prediction
non-normality
statistical analysis
extreme precipitation exposure
drought analysis
extreme value theory
streamflow
flood management
3-03921-664-3
language English
format eBook
author Tabari, Hossein
spellingShingle Tabari, Hossein
Statistical Analysis and Stochastic Modelling of Hydrological Extremes
author_facet Tabari, Hossein
author_variant h t ht
author_sort Tabari, Hossein
title Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_full Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_fullStr Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_full_unstemmed Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_auth Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_new Statistical Analysis and Stochastic Modelling of Hydrological Extremes
title_sort statistical analysis and stochastic modelling of hydrological extremes
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2019
physical 1 electronic resource (294 p.)
isbn 3-03921-665-1
3-03921-664-3
illustrated Not Illustrated
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is_hierarchy_title Statistical Analysis and Stochastic Modelling of Hydrological Extremes
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