To capture the complexity of a water resources system, synthetic data generation is an essential component. Frequently, the data generation is done on an annual basis and disaggregated to smaller time scales. A generalised disaggregation framework is presented to generate seasonal stream-flows from any annual autoregressive process. A new periodic disaggregation scheme is proposed for further disaggregation into sub-seasonal flows from seasonal flows generated with a periodic autoregressive (PAR) model of any order. The new model preserves the first and second moments and has been applied to the Ganges river at Farakka in India for generation of decadal (10-day) flows from monthly flows; the 10-day period being the discrete time interval id...
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data ...
A non-parametric method for generating stationary weekly hydrologic time series at multiple location...
Contemporary building techniques and underlying theories of periodic autoregressive (PAR) models are...
Synthetic hydrological series is useful for evaluating water supply management decision and reservoi...
Forecasting of the Ganges flow with sufficient accuracy and adequate lead-time can favorably impact ...
The vulnerability of water supplies to shortage depends on the complex interplay between streamflow ...
This study utilizes a recent nonparametric disaggregation -nearest neighbor ( NN) model, to resample...
Synthetic simulation of streamflow sequences is important for the analysis of water supply reliabili...
The slruclure of disaggregation models places severe constraints on the feasible values of the lagge...
River flow data are usually subject to several sources of discontinuity and inhomogeneity. An exampl...
Synthetic daily streamflow generation requires a critical understanding of the underlying dynamics r...
Water resource has become a guarantee for sustainable development on both local and global scales. E...
This is a reconstructed monthly streamflow for 1951-2021 period for the Indian sub-continental river...
Disaggregation models are basically divided into three main groups: temporal, spatial and temporal-s...
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data ...
A non-parametric method for generating stationary weekly hydrologic time series at multiple location...
Contemporary building techniques and underlying theories of periodic autoregressive (PAR) models are...
Synthetic hydrological series is useful for evaluating water supply management decision and reservoi...
Forecasting of the Ganges flow with sufficient accuracy and adequate lead-time can favorably impact ...
The vulnerability of water supplies to shortage depends on the complex interplay between streamflow ...
This study utilizes a recent nonparametric disaggregation -nearest neighbor ( NN) model, to resample...
Synthetic simulation of streamflow sequences is important for the analysis of water supply reliabili...
The slruclure of disaggregation models places severe constraints on the feasible values of the lagge...
River flow data are usually subject to several sources of discontinuity and inhomogeneity. An exampl...
Synthetic daily streamflow generation requires a critical understanding of the underlying dynamics r...
Water resource has become a guarantee for sustainable development on both local and global scales. E...
This is a reconstructed monthly streamflow for 1951-2021 period for the Indian sub-continental river...
Disaggregation models are basically divided into three main groups: temporal, spatial and temporal-s...
Synthetic generation of streamflow data facilitates the planning and operation of water resource pro...
SummaryDownscaling methods are used to derive stream flow at a high temporal resolution from a data ...
A non-parametric method for generating stationary weekly hydrologic time series at multiple location...