Artificial intelligence

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Neural network control of mobile machines with parallel structures

Kovalevskii S.1, Kovalevska O.1
1 Donbas State Engineering Academy

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UDC: 004.65
Publication Language: Ukrainian
Stuc. intelekt. 2016; 21(3):116-127

Abstract: Developed and investigated the basic elements for the creation of evolutionary neural networks. Abstract principles of neural networks that can evolve under the influence of input factors. The algorithms of learning and modifying the structure of neural networks, taking into account the dynamics of the input data. Studied methods for modeling of technical objects and technological processes based on evolutionary neural networks. Studied methods for modeling complex economic systems based on evolutionary neural networks.

Keywords: neural network modeling, window method, parallel kinematics

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