In order to explain many secret events of natural phenomena, analyzing non-stationary series is generally an attractive issue for various research areas. The wavelet transform technique, which has been widely used last two decades, gives better results than former techniques for the analysis of earth science phenomena and for feature detection of real measurements. In this study, a new technique is offered for streamflow modeling by using the discrete wavelet transform. This new technique depends on the feature detection characteristic of the wavelet transform. The model was applied to two geographical locations with different climates. The results were compared with energy variation and error values of models. The new technique offers a go...
Streamflow forecasting has an important role in water resource management and reservoir operation. S...
Previous studies showed that hydro-climate processes are stochastic and complex systems, and it is d...
Considering the three intrinsic components (of autoregressive, seasonality, and error) of streamflow...
An exploration of the wavelet transform as applied to daily river discharge records demonstrates its...
A new approach is presented for creating short-term forecasts of streamflow in a snowmelt-dominated ...
This study aims to investigate trends in streamflow and precipitation in the period 1954–2010 in a s...
We propose a novel technique for improving a long-term multi-step-ahead streamflow forecast. A model...
This research presents a modeling approach that incorporates wavelet-based analysis techniques used ...
This paper presents a review of runoff forecasting method based on hydrological time series data min...
Hybrid models that combine wavelet transformation (WT) as a pre-processing tool with data-driven mod...
mons Attribution License, which permits unrestricted use, distribution, and reproduction in any medi...
This study investigates the ability of wavelet group method of data handling (WGMDH) conjunction mod...
The prediction of hydrological droughts is vital for surface and ground waters, reservoir levels, hy...
Precise and correct estimation of streamflow is important for the operative progression in water res...
Skilful short-term streamflow forecasting is a challenging task, but useful for addressing a variety...
Streamflow forecasting has an important role in water resource management and reservoir operation. S...
Previous studies showed that hydro-climate processes are stochastic and complex systems, and it is d...
Considering the three intrinsic components (of autoregressive, seasonality, and error) of streamflow...
An exploration of the wavelet transform as applied to daily river discharge records demonstrates its...
A new approach is presented for creating short-term forecasts of streamflow in a snowmelt-dominated ...
This study aims to investigate trends in streamflow and precipitation in the period 1954–2010 in a s...
We propose a novel technique for improving a long-term multi-step-ahead streamflow forecast. A model...
This research presents a modeling approach that incorporates wavelet-based analysis techniques used ...
This paper presents a review of runoff forecasting method based on hydrological time series data min...
Hybrid models that combine wavelet transformation (WT) as a pre-processing tool with data-driven mod...
mons Attribution License, which permits unrestricted use, distribution, and reproduction in any medi...
This study investigates the ability of wavelet group method of data handling (WGMDH) conjunction mod...
The prediction of hydrological droughts is vital for surface and ground waters, reservoir levels, hy...
Precise and correct estimation of streamflow is important for the operative progression in water res...
Skilful short-term streamflow forecasting is a challenging task, but useful for addressing a variety...
Streamflow forecasting has an important role in water resource management and reservoir operation. S...
Previous studies showed that hydro-climate processes are stochastic and complex systems, and it is d...
Considering the three intrinsic components (of autoregressive, seasonality, and error) of streamflow...