Complex digital modeling tools concept for the innovative industries technologies life cycle
Abstract
The article presents a methodology for building digital models for the analysis, design and optimization of production and technological chains (PTC) in industries with continuous or quasi-continuous processing of raw materials. The approach is based on the formalization of the concepts of "technological flow", "redistribution" and "impact", which makes it possible to create digital twins at all stages of the technology life cycle, from laboratory verification to pilot and industrial implementation. The ontological structure of modeling, the parameterization of flows, the classification of models by levels of complexity (structural, balance, dynamic, variational, scenario), as well as approaches to the construction of digital models of both individual processing stages and complex PTCs are considered. The importance of integration with automated control systems, the use of no-code/low-code platforms and the use of digital experiments in the selection and optimization of production schemes is emphasized. The concept is aimed at reducing the risks of introducing innovations in the context of non-reference technologies and is formed on the basis of the authors' work in a wide range of industrial sectors, including high-intensity aquaculture, pulp and paper production and processing of liquid radioactive waste in civil nuclear energy.
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