The combination of wavelet analysis with black-box models presently is a prevalent approach to conduct hydrologic time series forecasting, but the results are impacted by wavelet decomposition of series, and uncertainty cannot be evaluated. In this paper, the method for discrete wavelet decomposition of series was developed, and an improved wavelet modeling framework, WMF for short, was proposed for hydrologic time series forecasting. It is to first separate different deterministic components and remove noise in original series by discrete wavelet decomposition; then, forecast the former and quantitatively describe noise's random characters; at last, add them up and obtain the final forecasting result. Forecasting of deterministic component...
The daily runoff is a complicated hydrological time-series, its extreme changes will affect not only...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...
The combination of wavelet analysis with black-box models presently is a prevalent approach to condu...
These days wavelet analysis is becoming popular for hydrological time series simulation and forecast...
These days wavelet analysis is becoming popular for hydrological time series simulation and forecast...
Discrete wavelet transform (DWT) is commonly used for wavelet threshold de-noising, wavelet decompos...
The combination of wavelet analysis methods with data-driven models is a prevalent approach to condu...
Discrete wavelet transform (DWT) is commonly used for wavelet threshold de-noising, wavelet decompos...
Short term streamflow forecasting is important for operational control and risk management in hydrol...
An approach, with the basic idea of resampling wavelet neural parameters, was proposed for probabili...
Research has been undertaken to ascertain the predictability of non-stationary time series using wav...
Research has been undertaken to ascertain the predictability of non-stationary time series using wav...
In this paper, the wavelet transform methods were briefly introduced, and present researches and app...
This paper presents a review of runoff forecasting method based on hydrological time series data min...
The daily runoff is a complicated hydrological time-series, its extreme changes will affect not only...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...
The combination of wavelet analysis with black-box models presently is a prevalent approach to condu...
These days wavelet analysis is becoming popular for hydrological time series simulation and forecast...
These days wavelet analysis is becoming popular for hydrological time series simulation and forecast...
Discrete wavelet transform (DWT) is commonly used for wavelet threshold de-noising, wavelet decompos...
The combination of wavelet analysis methods with data-driven models is a prevalent approach to condu...
Discrete wavelet transform (DWT) is commonly used for wavelet threshold de-noising, wavelet decompos...
Short term streamflow forecasting is important for operational control and risk management in hydrol...
An approach, with the basic idea of resampling wavelet neural parameters, was proposed for probabili...
Research has been undertaken to ascertain the predictability of non-stationary time series using wav...
Research has been undertaken to ascertain the predictability of non-stationary time series using wav...
In this paper, the wavelet transform methods were briefly introduced, and present researches and app...
This paper presents a review of runoff forecasting method based on hydrological time series data min...
The daily runoff is a complicated hydrological time-series, its extreme changes will affect not only...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...
Trend identification is a substantial issue in hydrologic series analysis, but it is also a difficul...