ANALYSIS OF THE STATE AND PROSPECTS OF ARTIFICIAL IMMUNE SYSTEMS DEVELOPMENT FOR INTELLECTUAL CONTROL OF COMPLEX OBJECTS

Authors

  • Samigulina G.A. Institute of Information and Computational Technologies KN MES RK
  • Samigulina Z.I. Kazakh-British Technical University

Keywords:

intelligent control systems, complex objects, information technology, artificial immune systems, modified algorithms, industrial equipment, modern microprocessor technology.

Abstract

An analytical review of the developed modern applications based on the promising bioinspired direction of artificial immune systems for the intelligent control of complex objects over the past five years is carried out. Shows the relevance and development opportunities of this approach of artificial intelligence for solving the problem of intellectualizing the industrial sector and the successful implementation of the concept of industrial modernization "Industry 4.0". The features and difficulties arising in the development of these systems, as well as possible ways of their implementation, are considered. A special role is assigned to the study of modified algorithms of artificial immune systems, which allow combining the advantages of various approaches and significantly leveling their disadvantages when used together. The results obtained will be used in the development of a unified artificial immune system, which makes it possible to most effectively form an immune response for different nature data and size.

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Published

2021-05-03

How to Cite

Samigulina , . G. A., & Samigulina, Z. I. (2021). ANALYSIS OF THE STATE AND PROSPECTS OF ARTIFICIAL IMMUNE SYSTEMS DEVELOPMENT FOR INTELLECTUAL CONTROL OF COMPLEX OBJECTS. Problemy Avtomatiki I Upravleniâ, (1), 75–81. Retrieved from https://pau.imash.kg/index.php/pau/article/view/181

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Section

ANALYSIS AND SYNTHESIS OF CONTROL SYSTEMS

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