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Discrete time neural network synthesis using input and output activation functions

Branko Novaković

发表年份
1996
引用次数
17

摘要

A new very fast algorithm for synthesis of a new structure of discrete-time neural networks (NN) is proposed. For this purpose the following concepts are employed: (i) combination of input and output activation functions, (ii) input time-varying signal distribution, (iii) time-discrete domain synthesis and (iv) one-step learning iteration approach. The problem of input-output mappings of time-varying vectors is solved. Simulation results based on the synthesis of a new structure of feedforward NN of an universal logical unit are presented. The proposed NN synthesis procedure is useful for applications to identification and control of nonlinear, very fast, dynamical systems. In this sense a feedforward NN for an adaptive nonlinear robot control is designed. Finally, a new algorithm for the direct inverse modeling of input/output nonquadratic systems is discussed.

关键词

Discrete time and continuous timeComputer scienceFeedforward neural networkArtificial neural networkNonlinear systemControl theory (sociology)Feed forwardTime domainSIGNAL (programming language)Algorithm

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