AbstractThe embedding dimension and the number of nearest neighbors are very important parameters in the prediction of chaotic time series. To reduce the prediction errors and the uncertainties in the determination of the above parameters, a new chaos Bayesian optimal prediction method (CBOPM) is proposed by choosing optimal parameters in the local linear prediction method (LLPM) and improving the prediction accuracy with Bayesian theory. In the new method, the embedding dimension and the number of nearest neighbors are combined as a parameter set. The optimal parameters are selected by mean relative error (MRE) and correlation coefficient (CC) indices according to optimization criteria. Real hydrological time series are taken to examine th...
For time series forecasting, obtaining models is based on the use of past observations from the same...
The significance of treating rainfall as a chaotic system instead of a stochastic system for a bette...
A nonlinear prediction method, developed based on the ideas gained from deterministic chaos theory, ...
AbstractThe embedding dimension and the number of nearest neighbors are very important parameters in...
The embedding dimension and the number of nearest neighbors are very important parameters in the pre...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
This paper implements the inverse approach for forecasting hydrological time series in an efficient ...
10.1061/40569(2001)53Bridging the Gap: Meeting the World's Water and Environmental Resources Challen...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
Short-term prediction of hydrological time series using chaotic dynamical systems approach is gainin...
The prediction of a time series using the dynamical systems approach requires the knowledge of three...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
The main objective of this study is to apply the Bayesian methods to solve problems in hydrology. Th...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
For time series forecasting, obtaining models is based on the use of past observations from the same...
The significance of treating rainfall as a chaotic system instead of a stochastic system for a bette...
A nonlinear prediction method, developed based on the ideas gained from deterministic chaos theory, ...
AbstractThe embedding dimension and the number of nearest neighbors are very important parameters in...
The embedding dimension and the number of nearest neighbors are very important parameters in the pre...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
This paper implements the inverse approach for forecasting hydrological time series in an efficient ...
10.1061/40569(2001)53Bridging the Gap: Meeting the World's Water and Environmental Resources Challen...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
Short-term prediction of hydrological time series using chaotic dynamical systems approach is gainin...
The prediction of a time series using the dynamical systems approach requires the knowledge of three...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
The main objective of this study is to apply the Bayesian methods to solve problems in hydrology. Th...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
For time series forecasting, obtaining models is based on the use of past observations from the same...
The significance of treating rainfall as a chaotic system instead of a stochastic system for a bette...
A nonlinear prediction method, developed based on the ideas gained from deterministic chaos theory, ...