Robustness of Delta Operator Based Cellular Neural Networks
نویسنده
چکیده
The delta operator approach to continuous-time cellular neural networks (CT-CNNS) is investigated in terms of a robust realization. It is shown that earlier results concerning the robustness of CTCNNS can be obtained as a limiting case of this approach, while at the same time, this allows us to formulate robustness considerations for discrete-time CNNS.
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