Сообщение

Concept for the Development of a Chemical Industry Holding Company Based on the Use of Intelligent Digital Technologies

 
orcid Roman Vivchar, orcid Aleksandr Lazutin, orcid Aleksandr Smirnov, orcid Sergey Cherkasov, orcid Aleksey Zaytcev, orcid Ruslan Kirichek

The Bonch-Bruevich Saint Petersburg State University of Telecommunications,
St. Petersburg, 193232, Russian Federation
Cifra, LLC,
Moscow, 119311, Russian Federation
Apatit, JSC,
Cherepovets, 162622, Russian Federation

DOI 10.31854/2307-1303-2025-13-3-26-38

EDN WBAGVR

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Abstract

Purpose. Developing a development concept for mineral fertilizer production enterprises aimed at improving integrated automated information and analytical support systems for decision-making processes across all stages of production. The objective of the work is to present the developed development concept for JSC Apatit, aimed at improving information and analytical support for mineral fertilizer production to increase the efficiency of this process. Novelty. The novelty of the developed concept lies in ensuring the innovative nature of production management by creating the possibility of complete information and analytical support for the processes of development and decision-making at all stages of production. Results. A development concept for JSC Apatit has been developed, proposing improvements to information and analytical support for production, which will ensure its innovative nature through the use of intelligent digital technologies. The initial results of the concept's implementation are presented, including the developed ZIIOT Industrial Internet of Things platform, ZIAK MES basic digitalization components, and the EXTERNUM distributed control system. To achieve the development concept's goals, an end-to-end procedure for information and analytical support for production was developed based on the Zyfra IIOT Platform digital platform, the Zyfra Industrial Automation Kit, and intelligent technologies. Practical relevance. The implementation of the concept will improve the efficiency and validity of decisions on managing the production of mineral fertilizers, reduce costs and losses, improve interaction between all production units, and increase the efficiency of personnel.

Keywords

automated production control system, production, Zyfra, production management system

Reference for citation

Vivchar R., Lazutin A., Smirnov A., Cherkasov S., Zaycev A., Kirichek R. Concept for the Development of a Chemical Industry Holding Company Based on the Use of Intelligent Digital Technologies // Telecom IT. 2025. Vol. 13. Iss. 3. PP. 26‒38. (in Russian). DOI: 10.31854/2307-1303-2025-13-3-26-38. EDN: WBAGVR

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