DocumentCode :
27070
Title :
Local Stability Analysis of Discrete-Time, Continuous-State, Complex-Valued Recurrent Neural Networks With Inner State Feedback
Author :
Mostafa, Mahjabeen ; Teich, Werner G. ; Lindner, Jurgen
Author_Institution :
Inst. of Commun. Eng., Ulm Univ., Ulm, Germany
Volume :
25
Issue :
4
fYear :
2014
fDate :
Apr-14
Firstpage :
830
Lastpage :
836
Abstract :
Recurrent neural networks (RNNs) are well known for their capability to minimize suitable cost functions without the need for a training phase. This is possible because they can be Lyapunov stable. Although the global stability analysis has attracted a lot of interest, local stability is desirable for specific applications. In this brief, we investigate the local asymptotical stability of two classes of discrete-time, continuous-state, complex-valued RNNs with parallel update and inner state feedback. We show that many already known results are special cases of the results obtained here. We also generalize some known results from the real-valued case to the complex-valued one. Finally, we investigate the stability in the presence of time-variant activation functions. Complex-valued activation functions in this brief are separable with respect to the real and imaginary parts.
Keywords :
Lyapunov methods; asymptotic stability; continuous systems; discrete time systems; neurocontrollers; recurrent neural nets; state feedback; transfer functions; Lyapunov stability; complex-valued RNN; complex-valued activation functions; complex-valued recurrent neural networks; continuous-state system; cost function minimization; discrete-time system; global stability analysis; inner state feedback; local asymptotical stability analysis; parallel update; time-variant activation functions; training phase; Asymptotic stability; Equalizers; Lyapunov methods; Recurrent neural networks; Stability analysis; State feedback; Vectors; Local asymptotical stability (LAS); Lyapunov function; recurrent neural network (RNN); vector equalization;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2013.2281217
Filename :
6612678
Link To Document :
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