skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Bayesian forecasting and uncertainty quantifying of stream flows using Metropolis–Hastings Markov Chain Monte Carlo algorithm

Journal Article · · Journal of Hydrology
 [1];  [2];  [3];  [1];  [1]
  1. Beijing Normal Univ., Beijing (China)
  2. Argonne National Lab. (ANL), Lemont, IL (United States)
  3. Chinese Research Academy of Environmental Sciences, Beijing (China)

This paper presents a Bayesian approach using Metropolis-Hastings Markov Chain Monte Carlo algorithm and applies this method for daily river flow rate forecast and uncertainty quantification for Zhujiachuan River using data collected from Qiaotoubao Gage Station and other 13 gage stations in Zhujiachuan watershed in China. The proposed method is also compared with the conventional maximum likelihood estimation (MLE) for parameter estimation and quantification of associated uncertainties. While the Bayesian method performs similarly in estimating the mean value of daily flow rate, it performs over the conventional MLE method on uncertainty quantification, providing relatively narrower reliable interval than the MLE confidence interval and thus more precise estimation by using the related information from regional gage stations. As a result, the Bayesian MCMC method might be more favorable in the uncertainty analysis and risk management.

Research Organization:
Argonne National Lab. (ANL), Argonne, IL (United States)
Sponsoring Organization:
USDOE Office of Science (SC); National Natural Science Foundation of China (NSFC)
Grant/Contract Number:
AC02-06CH11357; 51479003; 51279006
OSTI ID:
1371944
Alternate ID(s):
OSTI ID: 1396589
Journal Information:
Journal of Hydrology, Vol. 549, Issue C; ISSN 0022-1694
Publisher:
ElsevierCopyright Statement
Country of Publication:
United States
Language:
English
Citation Metrics:
Cited by: 27 works
Citation information provided by
Web of Science

References (18)

The future of distributed models: Model calibration and uncertainty prediction journal July 1992
Bayesian MCMC approach to regional flood frequency analyses involving extraordinary flood events at ungauged sites journal November 2010
Regional low flow frequency analysis using Bayesian regression and prediction at ungauged catchment in Korea journal September 2009
Comprehensive at-site flood frequency analysis using Monte Carlo Bayesian inference journal May 1999
Monte Carlo assessment of parameter uncertainty in conceptual catchment models: the Metropolis algorithm journal November 1998
Identification of uncertainty in low flow frequency analysis using Bayesian MCMC method journal January 2008
Generalized least squares and empirical bayes estimation in regional partial duration series index-flood modeling journal April 1997
Uncertainty and sensitivity analysis techniques for hydrologic modeling journal July 2009
Nonparametric Bayesian flood frequency estimation journal November 2005
Bayesian POT modeling for historical data journal April 2003
Bayesian MCMC flood frequency analysis with historical information journal November 2005
Low flow hydrology: a review journal January 2001
Bayesian recursive parameter estimation for hydrologic models journal October 2001
A Bayesian framework for the use of regional information in hydrology journal June 1975
A Bayesian Joint Probability Approach for flood record augmentation journal June 2001
Crytic period analysis model of hydrological process and its application journal June 2009
Bayesian inference and decision making for extreme hydrologic events journal August 1975
Prediction of watershed runoff using Bayesian concepts and modular neural networks journal March 2000

Cited By (1)

Multivariable Tracking Control of a Bioethanol Process under Uncertainties journal January 2020