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«DOCUMENTARY INFORMATION FLOW» SYSTEMS STRUCTURAL CONSTRUCTION PRINCIPLES

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S.S. Antsyferov
MIREA – Russian Technological University, c. Moscow
Research interests: artificial intelligence systems

K.N. Fazilova
MIREA – Russian Technological University, c. Moscow
Research interests: artificial intelligence systems

K.E. Rusanov
MIREA – Russian Technological University, c. Moscow
Research interests: artificial intelligence systems

UDC681.518.9; 621.384.3
DOI 10.34757/2413-7383.2023.30.3.002
Language:Russian

Annotation: The article defines the principles of construction and functioning of the system of documentary information flows. The main stages of the development of the scientific direction, which are reflected in the documentary information flow, are presented. It is pointed out that the principles of the construction of the "documentary information flow" system are interrelated with the nature of the stages of the development of the scientific direction and that the principles of the structural construction of the "documentary information flow" system can be used in the creation of expert systems.

Keywords:documentary information flows, information base, intelligent control systems, input data, semantic template blocks, information, control.

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Issues: 3(30)'2023
Section: Informatics, Computer Engineering and Control
Cite: Antsyferov, S.S. «DOCUMENTARY INFORMATION FLOW»SYSTEMS STRUCTURAL CONSTRUCTION PRINCIPLES // S.S. Antsyferov, K.N. Fazilova, K.E. Rusanov // Проблемы искусственного интеллекта. - 2023. № 3 (30). - http://search.rads-doi.org/project/13749/object/201184 doi: 10.34757/2413-7383.2023.30.3.002