350 rub
Journal Neurocomputers №5 for 2024 г.
Article in number:
Integration of models, methods and software tools that jointly define the logic of decision-making in dynamic intelligent systems
Type of article: scientific article
DOI: 10.18127/j19998554-202405-06
UDC: 004.8(075.8)
Authors:

G.V. Rybina1, V.Yu. Stepankon2, A.A. Grigoryev3

1–3 National Research Nuclear University «MEPhI» (Moscow, Russia)

1 gvrybina@yandex.ru, 2 vstepankov@yandex.ru, 3 grigandal625@gmail.com

Abstract:

The problem of multi-level deep integration of models, methods and software tools that jointly determine the logic of decision-making in dynamic intelligent systems (DIS) operating in real time is studied in detail using the example of the architecture of dynamic integrated expert systems (IES). The aim of the study is to develop conceptual-functional and technological approaches to the integration of methods and tools of temporal inference with methods and tools of simulation modeling in the development of dynamic IES and MAS. The article presents the results of conceptual and software modeling of the architectures of two different classes of dynamic intelligent systems – dynamic IES and MAS, based on the use of problem-oriented methodology (or its individual elements), tools of the AT-TECHNOLOGY workbench and the IMVIA system. The practical significance of the study is the intellectualization of the processes of designing and developing software for DIS of various architectural typologies.

Pages: 57-71
For citation

Rybina G.V., Stepankon V.Yu., Grigoryev A.A. Integration of models, methods and software tools that jointly define the logic of decision-making in dynamic intelligent systems. Neurocomputers. 2024. V. 26. № 5. Р. 57-71. DOI: https://doi.org/10.18127/j19998554-202405-06 (In Russian)

References
  1. Rybina G.V. Intelligent systems: from A to Z. Book 2. Intelligent dialog systems. Dynamic intelligent systems. Moscow: Nauktekhlitizdat. 2015. 163 p. (In Russian)
  2. Rybina G.V. Theory and technology of building integrated expert systems. Monograph. M.: Nauktehlitizdat. 2008. 482 p. (In Russian)
  3. Bashlykov A.A., Eremeev A.P. Fundamentals of designing intelligent decision support systems in nuclear energy: Textbook. M.: INFRA-M. 2017. 351 p. (In Russian)
  4. Makarov I.M., Lokhin V.M., Manko S.V., Romanov M.P. Artificial intelligence and intelligent control systems. M.: Nauka. 2006. 333 p. (In Russian)
  5. Intelligent systems. Collective monograph. Edited by V.M. Kureychik. Rostov-on-Don: SFU Publishing House. 2013. 298 p. (In Russian)
  6. Kolesnikov A.V. Hybrid intelligent systems. Theory and technology of development. St. Petersburg: St. Petersburg State Technical University. 2001. 711 p. (In Russian)
  7. Tarasov V.B. From multi-agent systems to intellectual organizations: philosophy, psychology, computer science. Moscow: Editorial URSS. 2002. 352 p. (In Russian)
  8. Gorodetsky V.I. Basic trends of decentralized artificial intelligence. 20th National Conference on Artificial Intelligence with international participation KII-2022. Moscow: Publishing House MEI. 2022. V. 2. P. 275–291. (In Russian)
  9. Rybina G.V. Architectures of modern intelligent systems: synergy of cybernetics and symbolic artificial intelligence, tools and technologies for the development of intelligent systems. Neurocomputers. 2024. V. 26. № 4. Р. 69–82. DOI 10.18127/j19998554-202404-07. (In Russian)
  10. Rybina G.V., Parondzhanov S.S. Technology of building dynamic intelligent systems: textbook manual. M.: NRU MEPhI. 2011. 240 p. (In Russian)
  11. Rybina G.V., Grigoriev A.A. Practical exercises on methods and technologies for building dynamic intelligent systems: textbook manual. M.: NRU MEPhI. 2024. 140 p. (In Russian)
  12. Rybina G.V., Blokhin Y.M. Methods and Software Implementation of Intelligent Planning for Integrated Expert System Design. Scientific and Technical Information Processing, 2019. V. 46. № 6. 434–445. DOI 10.3103/S0147688219060091.
  13. Rybina G.V., Mozgachev A.V. Temporal reasoning implementation in dynamic integrated expert systems. Artificial intelligence and decision-making. 2014. № 1. P. 34–45. (In Russian)
  14. Rybina G.V., Rybin V.M., Parondzhanov S.S., Soe Thi Ha Aung Simulation modeling of the external world in the construction of dynamic integrated expert systems. Information-measuring and Control Systems. 2023. V. 21. № 2. P. 61–72. DOI 10.18127/j20700814-202302-08. (in Russian)
  15. Rybina G.V. Dynamic integrated expert systems: technology of automated acquisition, representation and processing of temporal knowledge. Information-measuring and Control Systems. 2023. V. 21. № 2. P. 103–114. (in Russian)
  16. Rybina G., Slinkov A., Buyanov D. The Combined Method of Automated Knowledge Acquisition from Various Sources: The Features of Development and Experimental Research of the Temporal Version. Lecture Notes in Computer Science. 2020. V. 12412 LNAI. P. 15–25. DOI 10.1007/978-3-030-59535-7_2.
  17. Rybina G.V. Intelligent technology for building integrated expert systems of various architectural typologies: features of developing a prototype for managing medical forces and means in case of major traffic accidents. Information-measuring and Control Systems. 2023. V. 21. № 1. P. 45–61. DOI 10.18127/j0700814-202301-06. (in Russian)
  18. Rybina G.V., Slinkov A.A., Belov D.D. Intelligent technology for building dynamic integrated expert systems: features of building simulation models of the external environment. Twenty-first National Conference on Artificial Intelligence with international participation KII-2023. Smolensk: Print-Express. 2023. V. 2. P. 242–254. (in Russian)
  19. Rybina G., Stepankov V. Features of the use of multiagent technology in the management of urban parking space. Proceedings of the Seventh International Scientific Conference "Intelligent Information Technologies for Industry". 2023. V. 776. P. 365–374. DOI 10.1007/978-3-031-43789-2_34.
  20. Law A.M. Simulation Modeling and Analysis. Sixth Edition. Mcgraw-Hill Education. 2024. 688 p.
  21. Rybina G.V., Grigoriev A.A., Stepankov V.Yu. Simulation modeling as a necessary tool for the technology of building dynamic intelligent systems. Collection of scientific papers of the XXII International Scientific and Practical Conference "Integrated models and soft computing in artificial intelligence".  Smolensk: Universum. 2024. V. 2. P. 183–196. (in Russian)
  22. Baltrashevich V.E. Simulation modeling of multilevel IES. Eurasian Scientific Association. 2021. № 2-2(72). P.67–71. (in Russian)
  23. Baltrashevich V.E. Intellectual system of simulation modeling of analyzed processes. Eurasian Scientific Association. 2020. № 1-1(59). P. 30–34. (in Russian)
  24. Zamyatina E., Churin D., Lanin V., Lyadova L., Matta N. Simulation Model Validation based on Ontological Engineering Methods. Proceedings of the 14th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management. 2022. V. 2. P. 237–244. DOI 10.5220/0011589000003335.
  25. Namestnikov A.M. Application of the ontological approach to the problem of generating event data using simulation models. The ontology of design. 2023. V. 13. № 2(48). P. 243–253. (in Russian)
  26. Chernyakhovskaya L.R., Nikulina N.O., Malakhova A.I., Garaishin Sh.G., Nagimov T.R. Designing a business process management system based on ontological analysis and simulation modeling of the subject area. Information and mathematical technologies in science and management. 2019. № 3(15). P. 18–30. (in Russian)
  27. Panteleev M.G., Filyaev M.P., Kuzmin R.N., Filippov D.A. The concept of building and applying decision support systems based on an ontological approach and simulation modeling. Proceedings of the Second All-Russian Scientific and Practical Conference on simulation modeling and its application in the military sphere "Simulation of military systems, actions of troops and their support processes". St. Petersburg. 2022. P. 127–131. (in Russian)
  28. Rybina G.V., Stepankov V.Yu. Research of approaches to designing the architecture of a multi-agent system within the framework of Industry 4.0 models for digitalization of urban parking space management. Devices and systems. Management, control, diagnostics. 2023. № 6. P. 24–33. DOI 10.25791/pribor.6.2023.1414. (in Russian)
  29. Wilde P. Building performance simulation in the brave new world of artificial intelligence and digital twins: A systematic review. Energy and Buildings. 2023. P. 113171.
  30. Jafari M., Kavousi-Fard A., Chen T., Karimi M. A Review on Digital Twin Technology in Smart Grid, Transportation System and Smart City: Challenges and Future. IEEE Access. 2023. V. 11. P. 17471–17484.
  31. Jackson I., Jesus Saenz M., Ivanov D. From natural language to simulations: applying AI to automate simulation modelling of logistics systems. International Journal of Production Research. 2024. V. 62(4). P. 1434–1457.
  32. Bodin O.N., Bausova Z.I., Bezborodova O.E., Ubiennykh A.G. Simulation modeling of multi-agent technology in the computer diagnostic system "Cardiovid". Measurement. Monitoring. Management. Control. 2019. № 1(27). P. 78–86. (in Russian)
  33. Rybina G.V. Intelligent learning systems based on integrated expert systems: studies. manual. M.: DirectMedia. 2023. 132 p. (In Russian)
  34. Rybina G.V., Grigoriev A.A. Modern Architectures of Intelligent Tutoring Systems Based on Integrated Expert Systems: Features of the Approach to the Automated Formation of the Ontological Space of Knowledge and Skills of Students. Pattern Recognition and Image Analysis. 2023. V. 33. № 3. P. 491–497.
  35. VanLehn K., Wetzel J., Grover S., Van de Sande B. Learning How to Construct Models of Dynamic Systems: An Initial Evaluation of the Dragoon Intelligent Tutoring System. IEEE Transactions on Learning Technologies. 2017. V. 10. № 2. P. 154–167. DOI 10.1109/TLT. 2016.2514422.
  36. Wetzel J. VanLehn K., Butler D., Chaudhari P., Desai A., Feng J., Grover S., Joiner R., Kong-Sivert M., Patade V., Samala R., Tiwari M., Van de Sande B. The design and development of the dragoon intelligent tutoring system for model construction: lessons learned. In Interactive Learning Environments. Interactive Learning Environments. 2016. V. 25. № 3. P. 361–381. DOI 10.1080/ 10494820.2015. 1131167.
  37. Yemelyanov V.V., Yasinovsky S.I. Introduction to intelligent simulation of complex discrete systems and processes. The language of the RDO. M.: ANVIK. 1998. 427 p. (In Russian)
  38. Allen J. Maintaining knowledge about temporal intervals. Communications of the ACM. 1983. V. 26. № 11. P. 832–843. DOI 10.1145/ 182.358434.
  39. Osipov G.S. Methods of artificial intelligence. M.: Fizmatlit. 2011. 296 p. (In Russian)
  40. Pleznevich G.S., Tarassov V.B. Metagraphs with time-logical restrictions. CEUR Workshop Proceedings. 2021. P. 8–19.
  41. Spranger S. Representation of Temporal Knowledge for Web-based Applications. Munchen. 2002.
Date of receipt: 02.09.2024
Approved after review: 14.09.2024
Accepted for publication: 26.09.2024