SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data series that has a coarser time resolution. These algorithms are useful for many applications, such as water management and statistical analysis, because in many cases stream flow time series are available with coarse temporal steps (monthly), especially when considering historical data; however, in many cases, data that have a finer temporal resolution are needed (daily).In this study, we considered a simple but efficient stochastic auto-regressive model that is able to downscale the available stream flow data from monthly to daily time resolution and applied it to a large dataset that covered the entire North and Central American continent. ...
The partial auto-correlation coefficients of most of the series of monthly stream flows recorded in ...
Stochastic models in conventional time series analysis are mainly based on three key assumptions: st...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data ...
Downscaling methods are used to derive stream flow at a high temporal resolution from a data series ...
An extensive statistical ‘downscaling’ study is done to relate large-scale climate information from ...
The article aims to show how some dissimilarity criteria, the Mahalanobis distance between regressio...
The authors present a detailed procedure for modelling of mean monthly flow time-series using record...
Three aspects of stochastic analysis and modeling of hydrologic time series are investigated in this...
Annual flow duration curves (AFDCs) are used increasingly because unlike traditional period of recor...
Department Head: Luis A. Garcia.2010 Spring.Includes bibliographical references (pages 87-92).A step...
The study developed a regionalization scheme for the estimation of monthly streamflows at ungaged si...
An ensemble of 11 dynamically downscaled CMIP3 GCMs under A2 projection scenario are first bias corr...
Three statistical downscaling methods were applied to NCEP/NCAR reanalysis (used as a surrogate for ...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
The partial auto-correlation coefficients of most of the series of monthly stream flows recorded in ...
Stochastic models in conventional time series analysis are mainly based on three key assumptions: st...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data ...
Downscaling methods are used to derive stream flow at a high temporal resolution from a data series ...
An extensive statistical ‘downscaling’ study is done to relate large-scale climate information from ...
The article aims to show how some dissimilarity criteria, the Mahalanobis distance between regressio...
The authors present a detailed procedure for modelling of mean monthly flow time-series using record...
Three aspects of stochastic analysis and modeling of hydrologic time series are investigated in this...
Annual flow duration curves (AFDCs) are used increasingly because unlike traditional period of recor...
Department Head: Luis A. Garcia.2010 Spring.Includes bibliographical references (pages 87-92).A step...
The study developed a regionalization scheme for the estimation of monthly streamflows at ungaged si...
An ensemble of 11 dynamically downscaled CMIP3 GCMs under A2 projection scenario are first bias corr...
Three statistical downscaling methods were applied to NCEP/NCAR reanalysis (used as a surrogate for ...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
The partial auto-correlation coefficients of most of the series of monthly stream flows recorded in ...
Stochastic models in conventional time series analysis are mainly based on three key assumptions: st...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...