Identification of N-state spatio-temporal dynamical\ud systems using a polynomial model
Guo, Y.; Billings, S.A.; Coca, D.;
Publisher: Automatic Control and Systems Engineering, University of Sheffield
A multivariable polynomial model is introduced to describe n-state spatio-temporal systems. Based on this model, a new neighbourhood detection and transition rules determination method is proposed. Simulation results illustrate that the new method performs well even whe... View more
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