In this work we propose a Bayesian approach for the parameter estimation problem of stochastic autoregressive models of order p, AR(p), applied to the streamflow forecasting problem. Procedures for model selection, forecasting and robustness evaluation through Monte Carlo Markov Chain (MCMC) simulation techniques are also presented. The proposed approach is compared with the classical one by Box-Jenkins (maximum likelihood estimation) on a monthly streamflow time series from Furnas reservoir. We conclude that the use of Bayesian statistics and MCMC simulation gives more flexibility and powerful results than those obtained from the classical approach
Time series models are often used in hydrology and meteorology studies to model streamflows series in...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
This thesis presents an approach to streamflow forecasting based on a Markov chain model to estimate...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
This thesis presents a new approach to streamflow forecasting. The approach is based on specifying t...
Conceptual models are indispensable tools for hydrology. In order to use them for making probabilist...
It is imperative for cities to develop sustainable water management and planning strategies in order...
It is imperative for cities to develop sustainable water management and planning strategies in order...
Multi-site simulation of hydrological data are required for drought risk assessment of large multi-r...
Abstract: With the wide range of models available, hydrologic modellers are faced with the choice of...
International audienceThis study evaluates the applicability of the distributed, process-oriented Ec...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
The main objective of this study is to apply the Bayesian methods to solve problems in hydrology. Th...
ABSTRACT The aim of this study is to further investigate the two-state Markov chain model for synthe...
Time series models are often used in hydrology and meteorology studies to model streamflows series in...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
This thesis presents an approach to streamflow forecasting based on a Markov chain model to estimate...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
This thesis presents a new approach to streamflow forecasting. The approach is based on specifying t...
Conceptual models are indispensable tools for hydrology. In order to use them for making probabilist...
It is imperative for cities to develop sustainable water management and planning strategies in order...
It is imperative for cities to develop sustainable water management and planning strategies in order...
Multi-site simulation of hydrological data are required for drought risk assessment of large multi-r...
Abstract: With the wide range of models available, hydrologic modellers are faced with the choice of...
International audienceThis study evaluates the applicability of the distributed, process-oriented Ec...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
The main objective of this study is to apply the Bayesian methods to solve problems in hydrology. Th...
ABSTRACT The aim of this study is to further investigate the two-state Markov chain model for synthe...
Time series models are often used in hydrology and meteorology studies to model streamflows series in...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...