System of Models for Automated Planning, Design and Management of Discrete Production

Authors

DOI:

https://doi.org/10.15407/intechsys.2026.01.003

Keywords:

model of production processes, aggregation, decomposition, calendar plan, inventory management, system optimization

Abstract

The functioning of an industria l enterprise of discrete production is considered as a set of interconnected production аnd design processes and managing them. Computer modeling of processes is used to review options for enterprise activity plans and choose the best one for its implementation. Variants of model structures and corresponding modeling algorithms are obtained as a result of generalization of enterprise processes. The parameters of the models (list of works, standards of consumption time, materials, etc.) are established on the basis of the experience of performing the relevant activity for the industry and are adjusted based on the conditions of the given enterprise and the generalization of its specific experience.

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Published

2026-04-30

How to Cite

Zelinsky, V., & Zelinskyi, A. (2026). System of Models for Automated Planning, Design and Management of Discrete Production. Information Technologies and Systems, 7(1), 3–34. https://doi.org/10.15407/intechsys.2026.01.003

Issue

Section

Digitalisation of Economic Systems