|
Article information
2026 , Volume 31, ¹ 1, p.5-22
Maltseva S.V., Golubtsov P.V., Barakhnin V.B.
Modelling network informational interactions in cyber-physical-social systems
The issues of macro-level monitoring for the manufacturing system in the implementation of the concepts of Industry 4.0 and 5.0 based on the study of information flows in manufacturing network structures are considered. The numerical models of three types of network interaction, that taking into account the influence of the number of objects, external influences, and the interaction rules, are investigated. We present the results of numerical experiments using the proposed models, allowing analyzing the characteristics of network activity for different values of the model parameters. They include the occurrence of instabilities, competition of types of network activity, the influence of randomness, transient processes when changing external influences, and others. The main mechanisms for ensuring stability in network structures are considered. We discuss the recommendations for using information flow monitoring in tasks of ensuring stability of network manufacturing structures.
[link to elibrary.ru]
Keywords: cyber-physical-social system, social network, information interaction, sustainabilit
doi: 10.25743/ICT.2026.31.1.002
Author(s): Maltseva Svetlana Valentinovna Dr. , Professor Position: Professor Office: HSE University Address: 109028, Russia, Moscow, 11, Pokrovsky Bulvar
E-mail: smaltseva@hse.ru SPIN-code: 3700-6223Golubtsov Peter Viktorovich Dr. Office: M.V.Lomonosov Moscow State University Address: 119991, Russia, Moscow, Leninskie Gory,1
Phone Office: (495) 939-10-33 E-mail: golubtsov@physics.msu.ru SPIN-code: 6382-9598Barakhnin Vladimir Borisovich Dr. , Associate Professor Position: Leading research officer Office: Federal Research Center for Information and Computational Technologies Address: 630090, Russia, Novosibirsk, Ac. Lavrentiev ave, 6
Phone Office: (383) 330 78 26 E-mail: bar@ict.nsc.ru SPIN-code: 1541-0448 References: 1. Wang F.Y. The emergence of intelligent enterprises: from CPS to CPSS. IEEE Intelligent Systems. 2010; 25(4):85–88. DOI:10.1109/MIS.2010.104.
2. T´oth À., Nagy L., Kennedy R., Bohuˇs B., Abonyi J., Ruppert T. The human-centric Industry 5.0 collaboration architectur. MethodsX. 2023; (11):102260. DOI:10.1016/j.mex.2023.102260.
3. Alvarez-Alvarado M.S., Apolo-Tinoco C., Ramirez-Prado M.J., Alban Chac´on F.E., Pico N., Aviles-Cedeno J., Recalde A.A., Moncayo-Rea F., Velasquez W., Rengifo J. Cyber-physical power systems: a comprehensive review about technologies drivers, standards, and future perspectives. Computers and Electrical Engineering. 2024; (116):109149. DOI:10.1016/j.compeleceng.2024.109149.
4. Yilma B.A., Panetto H., Naudet Y. Systemic formalisation of cyber-physical-social system (CPSS): a systematic literature review. Computers in Industry. 2021; (129):103458. DOI:10.1016/j.compind.2021.103458.
5. Filosofskiy entsiklopedicheskiy slovar’ [Philosophical encyclopaedical dictionary]. Moscow: Sovetskaya Entsiklopediya; 1983: 611. (In Russ.)
6. GOST R 59799-2021. Umnoe proizvodstvo. Model’ etalonnoy arhitektury Industrii 4.0 (RAMI 4.0) [GOST R 59799-2021. Smart manufacturing. Reference architecture model Industry 4.0 (RAMI 4.0)]. Moscow: Rossiyskiy Institut Standartizatsii; 2021: 36. (In Russ.)
7. Gr¨aßler I., P¨ohler A. Implementation of an adapted holonic production architecture. Procedia CIRP. 2017; (63):138–143. DOI:10.1016/j.procir.2017.03.176.
8. Peralta M.E., Marcos M., Aguayo F., Lama J.R. Advanced fractal manufacturing: multi-level and multi-scale proposal for sustainable manufacturing processes. International Journal Mechatronics and Manufacturing Systems. 2017; 10(1):3–22. DOI:10.1504/IJMMS.2017.084375.
9. Bider I., Perjons E., Elias M., Johannesson P. A fractal enterprise model and its application for business development. Software and Systems Modelling. 2017; (16):663–689. DOI:10.1007/s10270-016-0554-9.
10. Ueda K. A concept for bionic manufacturing systems based on DNA-type information. Proceedings of the IFIP TC5/WG 5.3 Eight International PROLAMAT Conference, Man in CIM, Tokyo, Japan. Tokyo; 1992: 853–863. DOI:10.1016/B978-0-444-89465-6.50078-8.
11. Tharumarajah A. From fractals and bionics to holonics. Agent-Based Manufacturing. Advances in the Holonic Approach. Berlin, Heidelberg: Springer; 2003: 11–30. DOI:10.1007/978-3-662-05624-0_2.
12. Esmaeilian B., Behdad S., Wang B. The evolution of manufacturing: a review. Journal of Manufacturing Systems. 2016; (39):79–100. DOI:10.1016/j.jmsy.2016.03.001.
13. Wang L., Haghighi A. Combined strength of holons, agents and function blocks in cyber-physical systems. Journal of Manufacturing Systems. 2016; 40(2):25–34. DOI:10.1016/j.jmsy.2016.05.002.
14. Zhu Q., Huang S., Wang G., Moghaddam S.K., Lu Y., Yan Y. Dynamic reconfiguration optimization of intelligent manufacturing system with human-robot collaboration based on digital twin. Journal of Manufacturing Systems. 2022; (65):330–338. DOI:10.1016/j.jmsy.2022.09.021.
15. Adel A. Future of Industry 5.0 in society: human-centric solutions, challenges and prospective research areas. Journal of Cloud Computing. 2022; (11):40. DOI:10.1186/s13677-022-00314-5.
16. Rane N.L., Kaya O., Rane J. Human-centric artificial intelligence in Industry 5.0: enhancing human interaction and collaborative applications. Artificial intelligence, machine learning, and deep learning for sustainable Industry 5.0. Deep Science Publishing. 2024: 94–114. DOI:10.70593/978-81-981271-8-1_5.
17. Caggiano M., Semeraro C., Abdelkareem M.A., Al-Alami A.H., Olabi A.G., Dassisti M. The role of Industry 5.0 in the energy system: a conceptual framework. Energy Sources, Part A: Recovery, Utilization, and Environmental Effects. 2025; 47(1):52–65. DOI:10.1080/15567036.2025.2512991.
18. Ma Z., Ma S., Wang S. Perspective chapter: transportation 5.0 — from cyber physical transportation systems to cyber-physical-social transportation systems. Industry 4.0 Transformation Towards Industry 5.0 Paradigm — Challenges, Opportunities and Practices. 2023: 1–14. DOI:10.5772/intechopen.1003674.
19. Lakshmanan G., Mishra A., Tyagi A. Industry 5.0 for healthcare 5.0: opportunities, challenges and future research possibilities. Proceedings of the IEEE — 7th International Conference on Trends in Electronics and Informatics (ICOEI), Tirunelveli, India. 2023: 204–213. DOI:10.1109/ICOEI56765. 2023.10125660.
20. Doostmohammadian M., Rabieey H.R., Khanz U.A. Cyber-social systems: modeling, inference, and optimal design. IEEE Systems Journal. 2019; 14(1):73–83. DOI:10.1109/JSYST.2019.2900027.
21. Melnikov M.O., Igonina E.V. Analyzing blockchain consensus mechanisms for Internet of things networks. Modern Information Technologies and IT-education. 2024; 20(1):92–100. DOI:10.25559/SITITO.020.202401.92-100. (In Russ.)
22. Gubanov D.A., Petrov I.V., Chkhartishvili A.G. Multidimensional model of opinion dynamics in social networks: polarization indices. Automation and Remote Control. 2021; 82(10):1802–1811. DOI:10.1134/S0005117921100167.
23. Rahardjo B., Wang F.-K., Yeh R.-H., Chen Y.-P. Lean manufacturing in Industry 4.0: a smart and sustainable manufacturing system. Machines. 2023; 11(1):72. DOI:10.3390/machines11010072.
24. Ferrazzi M., Frecassetti S., Bilancia A., Portioli-Staudacher A. Investigating the influence of lean manufacturing approach on environmental performance: a systematic literature review. The International Journal of Advanced Manufacturing Technology. 2025; (136):4025–4044. DOI:10.1007/s00170-024-13215-5.
25. Zhang J., Yao X., Zhou J., Jiang J., Chen X. Self-organizing manufacturing: current status and prospect for Industry 4.0. Proceedings of the IEEE — 5th International Conference on Enterprise Systems (ES), Beijing, China. 2017: 319–326. DOI:10.1109/ES.2017.59.
26. Gorkovenko D.K. Comparative analysis of epidemic and cellular automata models in modelling of information diffusion in social networks. St. Petersburg State Polytechnical University Journal. Computer Science. Telecommunications and Control Systems. 2017; 10(3):103–113. DOI:10.18721/JCSTCS.10309.
27. Dorogovtsev S.N., Goltsev A.V., Mendes J.F.F. Critical phenomena in complex networks. Reviews of Modern Physics. 2008; 80(4):1275–1335. DOI:10.1103/RevModPhys.80.1275.
28. Sobb T., Turnbull B., Moustafa N. A holistic review of cyber–physical–social systems: new directions and opportunities. Sensors. 2023; 23(17):7391. DOI:10.3390/s23177391.
29. Kans M., Campos J. Digital capabilities driving Industry 4.0 and 5.0 transformation: insights from an interview study in the maintenance domain. Journal of Open Innovation: Technology, Market, and Complexity. 2024; 10(4):100384. DOI:10.1016/j.joitmc.2024.100384.
30. Bengler K., Damm W., L¨udtke A., Jochem R., Austel B., Biebl B., Fr¨anzle M., Hagemann W., Held M., Hess D., Ihme K., Kacianka S., Kerscher A.J., Forrest L., Lehnhoff S., Pretschner A., Rakow A., Sonntag D., Sztipanovits J., Schwammberger M., Schweda M., Unni A., Veith E. A references architecture for human cyber physical systems, part II: fundamental design principles for human-CPS interaction. Cyber-Physical Systems. 2024; 8(1):3. DOI:10.1145/3622880.
31. Olemskoi A.I., Khomenko A.V., Kharchenko D.O. Self-organized criticality within fractional Lorenz scheme. Physica A: Statistical Mechanics and Its Applications. 2003; (323):263–293. DOI:10.1016/S0378-4371(02)01991-X.
32. Xu J., Tang W., Zhang Y., Wang F. A dynamic dissemination model for recurring online public opinion. Nonlinear Dynamics. 2020; (99):1269–1293. DOI:10.1007/s11071-019-05353-3.
33. Li Q., Du Y., Li Z., Hu J., Hu R., Lv B., Jia P. HK–SEIR model of public opinion evolution based on communication factors. Engineering Applications of Artificial Intelligence. 2021; (100):104192. DOI:10.1016/j.engappai.2021.104192. Bibliography link: Maltseva S.V., Golubtsov P.V., Barakhnin V.B. Modelling network informational interactions in cyber-physical-social systems // Computational technologies. 2026. V. 31. ¹ 1. P. 5-22
|