Title
System identification using hierarchical fuzzy neural networks with stable learning algorithm
Abstract
Hierarchical fuzzy neural networks can use less rules to model nonlinear system with high accuracy. But the normal training method for hierarchical fuzzy neural networks is very complex. In this paper we modify the backpropagation approach and employ a time-varying learning rate that is determined from input-output data and model structure. Stable learning algorithms for the premise and the consequence parts of the fuzzy rules are proposed. The calculation of the learning rate does not need any prior information such as estimation of the modeling error bounds. The new algorithms are very simple, we can train each sub-block of the hierarchical fuzzy neural networks independently.
Year
DOI
Venue
2007
10.1109/CDC.2005.1582802
Journal of Intelligent and Fuzzy Systems
Keywords
DocType
Volume
time-varying learning rate,model structure,modeling error bound,stable learning algorithm,hierarchical fuzzy neural network,input-output data,consequence part,system identification,backpropagation approach,fuzzy rule,high accuracy,input output,neural networks,fuzzy logic,backpropagation,model error,nonlinear system,fuzzy systems,nonlinear systems,fuzzy neural network
Journal
18
Issue
ISSN
Citations 
2
1064-1246
7
PageRank 
References 
Authors
0.54
20
3
Name
Order
Citations
PageRank
Wen Yu128322.70
Marco A. Moreno-Armendariz27112.12
Floriberto Ortiz Rodriguez3625.87