Using entropy theory, a new method for single-site monthly streamflow simulation is developed, which is capable of preserving mean, standard deviation, skewness, and lag-one correlation. The method entails deriving joint and conditional probability density functions using the entropy theory, determining the Lagrange multipliers using the information obtained from the historical record, and then simulating streamflow by sequential sampling from the conditional distribution. The advantage of the entropy-based method is that it does not make any assumptions about the probability distribution of the streamflow data. It can also preserve the cross-correlation between streamflow of the last month of the previous year and the first month of the cu...
Many stochastic processes in practice having the sequences of random variables are generally skewed ...
Keywords: Gaussian Process Regression Machine learning theory Water/energy interactions Probabilisti...
Selecting an optimum number of calibration sites for hydrological modeling is challenging. Modelers ...
An entropy-copula method is proposed for single-site monthly streamflow simulation. In this method,...
An entropy-copula method is proposed for single-site monthly streamflow simulation. In this method, ...
Synthetic streamflows at different sites in a river basin are needed for planning, operation, and ma...
Entropy spectral analysis is developed for monthly streamflow forecasting, which contains the use of...
One major acknowledged challenge in daily precipitation is the inability to model extreme events in ...
This paper develops a minimum relative entropy theory with frequency as a random variable, called MR...
Stochastically generated streamflow time series are widely used in water resource planning and manag...
Abstract—in streamflow simulation, the first-order gamma autoregressive (GAR(1)) model [2] has been ...
In this paper kernel estimates of the joint and conditional probability density functions are used t...
Streamflow simulation gives the major information on water systems to water resources planning and m...
Synthetic simulation of streamflow sequences is important for the analysis of water supply reliabili...
The dissertation focuses on the application of entropy theory in hydrologic analysis and simulation,...
Many stochastic processes in practice having the sequences of random variables are generally skewed ...
Keywords: Gaussian Process Regression Machine learning theory Water/energy interactions Probabilisti...
Selecting an optimum number of calibration sites for hydrological modeling is challenging. Modelers ...
An entropy-copula method is proposed for single-site monthly streamflow simulation. In this method,...
An entropy-copula method is proposed for single-site monthly streamflow simulation. In this method, ...
Synthetic streamflows at different sites in a river basin are needed for planning, operation, and ma...
Entropy spectral analysis is developed for monthly streamflow forecasting, which contains the use of...
One major acknowledged challenge in daily precipitation is the inability to model extreme events in ...
This paper develops a minimum relative entropy theory with frequency as a random variable, called MR...
Stochastically generated streamflow time series are widely used in water resource planning and manag...
Abstract—in streamflow simulation, the first-order gamma autoregressive (GAR(1)) model [2] has been ...
In this paper kernel estimates of the joint and conditional probability density functions are used t...
Streamflow simulation gives the major information on water systems to water resources planning and m...
Synthetic simulation of streamflow sequences is important for the analysis of water supply reliabili...
The dissertation focuses on the application of entropy theory in hydrologic analysis and simulation,...
Many stochastic processes in practice having the sequences of random variables are generally skewed ...
Keywords: Gaussian Process Regression Machine learning theory Water/energy interactions Probabilisti...
Selecting an optimum number of calibration sites for hydrological modeling is challenging. Modelers ...