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Multidimensional Neural-Like Growing Networks - A New Type of Neural Network

V. A. Yashchenko

发表年份
2015
引用次数
3
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摘要

The present paper describes a new type of neural networks - multidimensional neural-like growing networks. Multidimensional neural-like growing networks are a dynamic structure, which varies depending on the external information received by receptors and the information coming from the effector area to the outside world. Multidimensional receptor-effector neural-like growing networks are supposed to store and process images of objects or situations in the subject area and manage actions through a variety of spatial representations of information, such as tactile, visual, acoustic, taste, etc. Multidimensional receptor-effector neural-like growing networks are used to design intelligent systems and electronic brains of robots. The article describes the neural-like growing networks, the basic rules for constructing the neural-like growing networks and their comparison with the normal neural networks, modeling of information flows in a human body and basic blocks and functions of electronic brains of intelligent systems and robots.

关键词

Computer scienceArtificial neural networkNervous system network modelsArtificial intelligenceCellular neural networkPhysical neural networkRobotProcess (computing)Variety (cybernetics)Recurrent neural network

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