The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are investigated in this work. Combining the hierarchical identification principle with the negative gradient search, we derive a hierarchical stochastic gradient algorithm. Inspired by the multi-innovation identification theory, we develop a hierarchical-based multi-innovation identification algorithm for the ExpAR model. Introducing two forgetting factors, a variant of the hierarchical-based multi-innovation identification algorithm is proposed. Moreover, to compare and demonstrate the serviceability of these algorithms, a nonlinear ExpAR process is taken as an example in the simulation
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
Constructing an appropriate membership function is significant in fuzzy logic control. Based on the ...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
Modeling an exponential autoregressive (ExpAR) time series is the basis of solving the corresponding...
This paper concentrates on the recursive identification algorithms for the exponential autoregressiv...
Due to the complexity and nonlinear variety of the real world, nonlinear time series analysis has b...
The nonlinear rational model is a generalized nonlinear model and has been gradually applied in mode...
The nonlinear rational model is a generalized nonlinear model and has been gradually applied in mode...
This study presents the modelling technology of multivariable equation-error autoregressive moving a...
The analysis of time series has long been the subject of interest in different fields. For decades t...
The analysis of time series has long been the subject of interest in different fields. For decades t...
In this paper, by means of the adaptive filtering technique and the multi-innovation identification ...
This article is concerned with the parameter identification problem of nonlinear dynamic responses f...
It is well-known that mathematical models are the basis for system analysis and controller design. T...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
Constructing an appropriate membership function is significant in fuzzy logic control. Based on the ...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
Modeling an exponential autoregressive (ExpAR) time series is the basis of solving the corresponding...
This paper concentrates on the recursive identification algorithms for the exponential autoregressiv...
Due to the complexity and nonlinear variety of the real world, nonlinear time series analysis has b...
The nonlinear rational model is a generalized nonlinear model and has been gradually applied in mode...
The nonlinear rational model is a generalized nonlinear model and has been gradually applied in mode...
This study presents the modelling technology of multivariable equation-error autoregressive moving a...
The analysis of time series has long been the subject of interest in different fields. For decades t...
The analysis of time series has long been the subject of interest in different fields. For decades t...
In this paper, by means of the adaptive filtering technique and the multi-innovation identification ...
This article is concerned with the parameter identification problem of nonlinear dynamic responses f...
It is well-known that mathematical models are the basis for system analysis and controller design. T...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. This paper studies the parameter est...
Constructing an appropriate membership function is significant in fuzzy logic control. Based on the ...