DEVELOPMENT OF INTERACTIVE MODELING METHODS FOR THE SYNTHESIS OF INTELLIGENT CONTROL SYSTEMS FOR TECHNICAL OBJECTS IN THE DIGITAL ECONOMY

DEVELOPMENT OF INTERACTIVE MODELING METHODS FOR THE SYNTHESIS OF INTELLIGENT CONTROL SYSTEMS FOR TECHNICAL OBJECTS IN THE DIGITAL ECONOMY

##article.authors##

  • Aygul Mamutova

##plugins.pubIds.doi.readerDisplayName##:

https://doi.org/10.5281/zenodo.18266852

##article.subject##:

interactive modeling, intelligent control systems, digital economy, technical objects, system synthesis, simulation, adaptive control

##article.abstract##

The digital economy has intensified the complexity of technical objects and increased the demand for intelligent,
adaptive, and data-driven control systems. Traditional control design approaches are often insufficient to address
uncertainty, dynamic environments, and real-time decision-making requirements. This study investigates the development
of interactive modeling methods for the synthesis of intelligent control systems for technical objects operating in digital
economic conditions. The research evaluates how interactive modeling influences system adaptability, control accuracy,
development efficiency, and decision-making quality. A mixed-methods research design was applied, involving simulation
experiments, expert evaluations, and performance analysis of intelligent control systems. Quantitative results demonstrated
a 30% improvement in control accuracy and a 35% reduction in system development time. Qualitative findings revealed
enhanced system transparency, improved designer interaction, and higher robustness of control strategies. The study
highlights the importance of combining interactive modeling, intelligent algorithms, and data-driven synthesis methods to
improve the effectiveness of control systems in the digital economy.

Биография автора

Aygul Mamutova

Department of Software Engineering and Mathematical
Modeling of Nukus State Technical University

Библиографические ссылки

1. Åström, K. J., & Murray, R. M. (2010). Feedback Systems: An Introduction for Scientists and Engineers. Princeton

University Press.

2. Wang, L., Törngren, M., & Onori, M. (2015). Cyber-physical systems in manufacturing. Journal of Manufacturing

Systems, 37, 517–527.

3. Zhou, K., Liu, T., & Zhou, L. (2016). Industry 4.0: Opportunities and challenges. FSKD Proceedings, 2147–2152.

4. Lee, J., Bagheri, B., & Kao, H. A. (2015). A cyber-physical systems architecture for Industry 4.0. Manufacturing Letters,

3, 18–23.

5. Qin, S. J. (2012). Survey on data-driven industrial process monitoring. Control Engineering Practice, 21(3), 452–466.

6. Nguyen, T., & Tran, D. (2021). Intelligent control systems in digital industries. International Journal of Control and

Automation, 14(2), 67–82.

7. Silva, M., & Pereira, R. (2020). Interactive modeling and simulation for complex systems. Simulation Modelling Practice

and Theory, 102, 101–118

Загрузки

##submissions.published##

2026-01-01
Loading...