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ABSTRACTS OF ARTICLES OF THE JOURNAL "INFORMATION TECHNOLOGIES".
No. 7. Vol. 31. 2025
DOI: 10.17587/it.31.346-355
E. A. Barakhtenko, PhD, Scientific Secretary of the Institute, D. V. Sokolov, PhD, Senior Researcher,
G. S. Mayorov, PhD, Researcher,
Melentiev Energy Systems Institute of Siberian Branch of the Russian Academy of Sciences, Irkutsk, 664033, Russian Federation
Automation of Calculations in Multi-Agent Modeling of Integrated Energy Systems
Received on 26.09.2024
Accepted on 26.11.2024
In modern energy sector, the importance of integrated energy systems is constantly increasing, which is caused by the high significance of these systems for industry and the public utility sphere of modern society. In modern conditions, the optimal design of these systems, which has a scientific (technical and economic) justification, is becoming relevant. Designing integrated energy systems is a complex problem, which is due to the high complexity of the configuration of these systems, a wide range of equipment used and a diverse set of mathematical models and specialized software used for its modeling, the need to model a number of decision-making centers and objects with complex behavior. The use of a multi-agent approach allows one to effectively model various directions of their development in virtual space and ensures the creation of effective design solutions.
Carrying out multi-agent modeling requires the organization of a complex computational process, which is due to the wide variety of equipment used and models of subsystems of integrated energy systems, the complexity of programming and the need to adjust to the features of the modeled system. Automation of the construction of a multi-agent system allows one to overcome these difficulties and eliminate the labor-intensive stages of its formation and configuration. The article proposes a methodological approach that ensures automation of calculations during multi-agent modeling of integrated energy systems when solving the problem of their design. This approach includes the following components:
- an architecture of the software system;
- principles of software organization of the multi-agent system; principles of automated construction of the multi-agent system;
- the structure of the ontology system;
- a technique for solving the problem using the automation of multi-agent modeling.
The results of the computational experiment obtained using the developed methodological approach are presented. As a result of the experiment, an optimal configuration of the integrated energy system for energy supply to consumers was obtained.
The developed methodological approach can be used by research, design and operational organizations that design and develop integrated energy systems. Its application allows one to increase the efficiency of the design process, the quality of the resulting design solution and automate labor-intensive computational operations performed when determining the configuration of the designed integrated energy system and the characteristics of the equipment used.
Keywords: methodological approach, multi-agent modeling, multi-agent system, automation of computing, integrated energy system, applied ontologies, software engineering, energy system design, prosumer, automation of modeling
Acknowledgements: The research was performed at the Melentiev Energy Systems Institute of Siberia Branch of the Russian Academy of Sciences under the support of the Russian Science Foundation (Grant number 24-29-00823).
P. 346-355
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