Control Systems and Computers, N5-6, 2021, Article 5

https://doi.org/10.15407/csc.2021.05-06.045

Control Systems and Computers, 2021, Issue 5-6 (295-296), pp. 45-54.

UDC 6:004.8

O.H. Moroz, senior research scientist, Department for Technologies of Inductive Modelling, International Research and Training Center for Information Technologies and Systems of the NAS and MES of Ukraine, Glushkov Ave., 40, Kyiv, 03187, Ukraine, olhahryhmoroz@gmail.com

The problem of constructing the GMDH neural networks with active neurons

Characteristics of the existing neural networks of GMDH with active neurons are given and their main advantages and disadvantages are analyzed. An approach to increasing the efficiency of inductive construction of complex system models from statistical data based on the creation of a new class of GMDH neural networks with active neurons using methods of computational intelligence is proposed.

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Keywords: GMDH neural network, computational intelligence, genetic algorithms, active neurons, inductive modeling.

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Received 28.11.2021