Contemporary building techniques and underlying theories of periodic autoregressive (PAR) models are revisited, reviewed, modified and recast. New techniques for generating synthetic data from any PAR model with provision to constrain some parameter values to zero have been proposed. The developed method is applied to the Ganges river for its monthly flow forecasting and generation. The results demonstrate that the PAR model can capture the seasonal variability of the Ganges river flow reasonably well preserving both its short- and the long-term important historical statistics
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
To solve many problems such as estimation of average monthly river inflow, it is necessary to consid...
The dynamic and accurate forecasting of monthly streamflow processes of a river are important in the...
Forecasting of the Ganges flow with sufficient accuracy and adequate lead-time can favorably impact ...
The hydrologic time series data display periodic structure and periodic autoregressive process recei...
To capture the complexity of a water resources system, synthetic data generation is an essential com...
Two multiplicative Seasonal Autoregressive Integrated Moving Average (SARIMA) models were developed ...
Stochastic models are widely used in hydrology, mainly for forecasting and data generation purposes....
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
River flow data are usually subject to several sources of discontinuity and inhomogeneity. An exampl...
ABSTRACT This study aims to find a seasonal streamflow forecast model simultaneous to all stations o...
This paper proposes an extension of Periodic AutoRegressive (PAR) modelling for time series with evo...
Upper Indus Basin (UIB) region has faced seasonal and sometimes unpredictable disastrous flow in the...
The partial auto-correlation coefficients of most of the series of monthly stream flows recorded in ...
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
To solve many problems such as estimation of average monthly river inflow, it is necessary to consid...
The dynamic and accurate forecasting of monthly streamflow processes of a river are important in the...
Forecasting of the Ganges flow with sufficient accuracy and adequate lead-time can favorably impact ...
The hydrologic time series data display periodic structure and periodic autoregressive process recei...
To capture the complexity of a water resources system, synthetic data generation is an essential com...
Two multiplicative Seasonal Autoregressive Integrated Moving Average (SARIMA) models were developed ...
Stochastic models are widely used in hydrology, mainly for forecasting and data generation purposes....
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
Ten candidate models of the Auto-Regressive Moving Average (ARMA) family are investigated for repres...
River flow data are usually subject to several sources of discontinuity and inhomogeneity. An exampl...
ABSTRACT This study aims to find a seasonal streamflow forecast model simultaneous to all stations o...
This paper proposes an extension of Periodic AutoRegressive (PAR) modelling for time series with evo...
Upper Indus Basin (UIB) region has faced seasonal and sometimes unpredictable disastrous flow in the...
The partial auto-correlation coefficients of most of the series of monthly stream flows recorded in ...
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
To solve many problems such as estimation of average monthly river inflow, it is necessary to consid...
The dynamic and accurate forecasting of monthly streamflow processes of a river are important in the...