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vol 67 / April, 2024
Article

DOI 10.17586/0021-3454-2023-66-12-1067-1074

UDC 658.512.4

THE USE OF SWARM ALGORITHMS IN TECHNOLOGICAL PREPARATION OF PRODUCTION

D. V. Kolesnikova
ITMO University, Saint Petersburg, 197101, Russian Federation; PhD Student, Assistant


R. A. Yureva
ITMO University, Saint Petersburg, 197101, Russian Federation; Associate Professor

Reference for citation: Kolesnikova D. V., Yurieva R. A. The use of swarm algorithms in technological preparation of production. Journal of Instrument Engineering. 2023. Vol. 66, N 12. P. 1067—1074 (in Russian). DOI: 10.17586/0021-3454-2023-66-12-1067-1074.

Abstract. As part of technological preparation of production, the technological processes design is a complex and time-consuming task. A hypothesis is put forward about the possibility of using swarm intelligence tools in the task of developing route technology. The features of technological preparation of production are studied; modernization of the technological preparation is aimed at increasing the production process automation, as well as reducing the risk of errors associated with the human factor. A mathematical model for assessing the condition of equipment is presented. An algorithm is been proposed which allows automating the development of routing technology based on graph theory and swarm intelligence algorithms, as well as monitoring the condition of equipment and its readiness to perform the task. It is noted that the use of swarm algorithms can make it possible to work with graphs and build routing technologies with greater data processing speed.
Keywords: technological preparation of production, swarm algorithms, expert system, mathematical model, technological process, route technology

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