Chen-Yuan Chen, Cheng-Wu Chen, W. Chiang, Jing-Dong Hwang
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A neural-network approach to modeling and analysis
A backpropagation network can always be used in modeling. This study is concerned with the stability problem of a neural network (NN) system which consists of a few subsystems represented by NN models. In this paper, the dynamics of each NN model is converted into linear inclusion representation. Subsequently, based on the representations, the stability conditions in terms of Lyapunov's direct method is derived to guarantee the asymptotic stability of NN systems.