CLASSIFICATION MODEL AND INTERACTIVE VIRTUAL ENVIRONMENT FOR SCENARIO ANALYSIS OF TECHNOLOGICAL PROCESS IN LIVESTOCK PRODUCTION
Digitalization of animal husbandry increases the requirements for the analysis of regulated procedures, since the state of the process depends not only on the values of the parameters, but also on the stage, sequence of actions and event violations. The article suggests an approach to evaluating such processes based on a classification model associated with an interactive virtual environment. The model combines the stages of the process, parameters, events of violation of regulations, normalized deviations, and rules for assigning a process to one of the status classes. The check was performed on an example of machine milking based on ten test scenarios reflecting regulatory, deviant, critical and borderline regimes. In nine cases, the calculated class coincided with the expert assessment; the discrepancy occurred near the threshold of the precritical state, which indicates the need to adjust the weights and thresholds. The VR environment is considered as a visual analytical interface that displays the stage of the process, deviations, events, an integrated assessment and the outcome of the scenario.
Gorelov S.A., Klyosov D.N., Beletskaya A.A., Afonin A.N., Yaduta A.Z. Classification Model and Interactive Virtual Environment for Scenario Analysis of Technological Process in Livestock Production // Research result. Information technologies. – T.11, №2, 2026. – P. 135-150. DOI: 10.18413/2518-1092-2026-11-2-0-11
















While nobody left any comments to this publication.
You can be first.
1. Aindinov R.R., Sadykov M.R., Zinnatullina A.N. Automation of Technological Process Management Based on Digital Twins // Improving the Efficiency of Mobile Machine Operation: Proceedings of the All-Russian Scientific and Practical Conference of Teachers, Students, Postgraduate Students, and Young Scientists Dedicated to the 80th Anniversary of Victory in the Great Patriotic War. Kazan: Kazan State Agrarian University, 2025. – Pp. 369-378.
2. Skvortsova E.G., Skvortsov E.A. The Share of Livestock Workers Engaging with Artificial Intelligence Technologies and Cyber-Physical Systems // Problems of Interaction between Public and Private Law in Regulating the Digitalization of Economic Relations: Proceedings of the V International Scientific and Practical Conference. Yekaterinburg: Ural State University of Economics, 2022. – Pp. 123-126.
3. Gamayunov P.P., Slavina Yu.A., Alekseyev S.A., Kuverin I.Yu., Kobiashvili E.I. Digitalization of the Agro-Industrial Complex // Scientific Life. – 2023. – Vol. 18, No. 6(132). – Pp. 878-887. – DOI 10.26088/1991-9476-2023-18-6-878-887.
4. Saprykin I.A., Guseva Yu.D. Promising Directions for the Application of Digital Technologies in the Agro-Industrial Complex // Digitalization of the Agro-Industrial Complex: Collection of Scientific Articles from the III International Scientific and Practical Conference. Tambov: Publishing Center of the Tambov State Technical University, 2022. – Pp. 487-490.
5. Korobskoy R.A., Savinskaya D.N. Decision Support System for the Livestock Industry // Digitalization of the Economy: Directions, Methods, and Tools: Collection of Materials from the II All-Russian Scientific and Practical Conference. Krasnodar: Kuban State Agrarian University named after I.T. Trubilin, 2020. – Pp. 391-393.
6. Grinchenkov D.V., Romanenko I.V., Profatilo V.K. Digital Technologies in Decision Support Systems for Animal Husbandry // Engineering Bulletin of the Don. – 2025. – No. 6(126). – Pp. 627-643.
7. Patent No. 2800740 C1 Russian Federation, IPC G06F 21/00. System and method for detecting anomalies in a cyber-physical system: No. 2022123995: filed on 09.09.2022: published on 27.07.2023 / A.B. Lavrentiev, A.M. Vorontsov, A M. Nechiporuk [et al.]; applicant: Kaspersky Lab Joint-Stock Company.
8. Gorelova G.V. Cyber-Physical Systems and Cognitive Modeling of Complex Systems // Problems of Safety Management of Complex Systems: Proceedings of the XXVII International Conference. Moscow: V.A. Trapeznikov Institute of Control Sciences of the Russian Academy of Sciences, 2019. – Pp. 299-304. – DOI: 10.25728/pubss.2019.299.
9. Vtoroy V.F., Vtoroy S.V. Method for Diagnosing Milking Machines Using Digital Technologies // Tavrichesky Bulletin of Agrarian Science. – 2020. – No. 4(24). – Pp. 20-28. – DOI 10.33952/2542-0720-2020-4-24-20-28.
10. Kudryashov K.S. Using Digital Twins to Predict Failures and Improve the Survivability of Automated Systems // Digital Economy and Security: Challenges and Prospects: Collection of Scientific Papers Based on the Results of the II All-Russian Student Scientific and Practical Conference. Moscow: MIREA - Russian Technological University, 2025. – P. 99-102.
11. Kudryavtseva A.S. Cyber-physical system as the development of automation at all stages of the enterprise's life cycle based on the introduction of digital technologies // System Analysis in Design and Management: Collection of Scientific Papers of the XXIII International Scientific and Practical Conference. St. Petersburg: FGAOU VO
St. Petersburg Polytechnic University of Peter the Great, 2019. – P. 312-320.
12. Semantic interpretation of the effect of immersion in virtual reality / I.A. Rozanov, K.A. Gruncheva,
V.Yu. Ratnikova, A.M. Zhitenyova // Experimental Psychology in Social Practices: Materials of the 4th International Scientific and Practical Conference. Moscow: Universum, 2024. – P. 153-169.
13. Certificate of State Registration of the Computer Program No. 2021667437, Russian Federation. Module for analyzing human behavior in virtual and augmented reality environments: No. 2021665218: applied on September 29, 2021: published on October 29, 2021 / S.S. Chaplygin, S.V. Rovnov, E.O. Monin [et al.]; applicant: Samara State Medical University of the Ministry of Health of the Russian Federation.
14. Decision support for choosing VR technologies / Klyosov D., Gorelov S., Voinash S., Zagidullin R., Litvina P. // Conference: Proceedings of the IV International Conference on Advances in Science, Engineering and Digital Education: ASEDU-IV 2024. AIP Conference Proceedings, 3268 (1), art. no. 070014. – DOI: 10.1063/5.0257303.
15. Zagorodnev Yu.P. Fundamentals of Machine Milking Technology for Cows: A Textbook for Universities. St. Petersburg: Lan, 2024. – 120 p.
16. Andrianov E.A., Bugakov E.E. Modern Technologies of Machine Milking // Veterinary and Sanitary Aspects of the Quality and Safety of Agricultural Products: Proceedings of the IX International Scientific and Practical Conference Dedicated to the 90th Anniversary of Professor N.M. Altukhov, Doctor of Veterinary Sciences. Voronezh: Emperor Peter the Great Voronezh State Agrarian University, 2025. – Pp. 291-294.
17. Panin A.A. Ensuring Efficient Machine Milking of Cows // Improving Engineering and Technical Support for Production Processes and Technological Systems: Proceedings of the National Scientific and Practical Conference with International Participation Dedicated to the 75th Anniversary of the Engineering Department of the Orenburg State Agrarian University. Orenburg: Orenburg State Agrarian University, 2025. – Pp. 385-387.
18. Influence of dairy farms' characteristics and technological level on attitude towards augmented reality / Pinna D., Sara G., Cresci R., Petronella A., Todde G., Atzori A.S., Caria M. // Sci Rep. 2026. – 16(1). – 7437. – DOI: 10.1038/s41598-026-38898-6.
19. Patrick B., Kanjo E., Kaiwartya O. Review of movement sensor applications in livestock animal activity recognition: Communications, data collection practices, and edge-AI solutions // Smart Agricultural Technology, 2026. 14. – Art. no. 101986. – DOI: 10.1016/j.atech.2026.101986.
20. IoT based tracking cattle healthmonitoring system using wireless sensors / Rajendran J.G., Alagarsamy M., Seva V., Dinesh P.M., Rajangam B., Suriyan K. // Bulletin of Electrical Engineering and Informatics, 12 (5), 2026. – pp. 3086-3094. – DOI: 10.11591/eei.v12i5.4610.
21. Smart Monitoring of Livestock Health and Behavior with Sensor-based Deep Learning Optimized System / Pokkuluri K.S., Bhardwaj R., Sunil M.P., Kadam K., Mishra A., Patel G.M. // Journal of Wireless Mobile Networks, Ubiquitous Computing, and Dependable Applications, 2026, 16(3). – pp. 219-240. – DOI: 10.58346/JOWUA.2025.I3.013.
22. Precision Livestock Farming and Cattle Health Management / Singh D., Singh R., Gehlot A., Pandey P.S., Yamsani N. // Lecture Notes in Networks and Systems, 1506 LNNS, 2026. – pp. 323-333. – DOI: 10.1007/978-981-96-8694-0_24.
23. Nassar N. Applications of Digital Twins in Agriculture. Digital Twin Technology for Sustainable // Agriculture: Applications, Implementation and Future Trends, 2026. – pp. 135-154. – DOI: 10.1007/978-981-95-5915-2_8.
24. Pinto A., Donoso Y., Gutierrez J.A. Balancing the trilemma: a survey of federated anomaly detection for secure cyber-physical systems // Cybersecurity, 2026. – 9 (1). – art. no. 135. – DOI: 10.1186/s42400-026-00567-6.
25. Cyber-physical anomaly detection a deep adversarial fusion of sensor and network data / Pinto A., Herrera L.-C., Donoso Y., Gutierrez J.A. // Discover Computing, 2026. – 29(1). – art. no. 183. DOI: 10.1007/s10791-026-10064-6.
26. An Immersive AI-Driven Virtual Reality Training for Accessible Agricultural Education in a Unity-Based VR Environment / Pendem A., Jawahar B., Challa K., AlHmoud I.W., Gokaraju B., Liang C.L. // Lecture Notes in Computer Science, 16446 LNCS, 2026. – pp. 77 - 91. – DOI: 10.1007/978-3-032-18474-0_6.
27. Digital Twins, Extended Reality, and Artificial Intelligence in Agriculture: Emerging Trends and Insights / Lokhande P., Mali S., Jadhav N., Khan M., Ayasrah F.T., Cengiz K. // The Convergence of Extended Reality and Metaverse in Agriculture, 2025. – pp. 77-100. – DOI: 10.4018/979-8-3373-2797-6.ch004.
28. Data-Driven Decision Making and Virtual Farming in the Agricultural Metaverse / Palanivel N., Balaji V.S., Priya V.R., Murugan M.S., Senthil K.M., Alagarsamy M. // The Convergence of Extended Reality and Metaverse in Agric. ulture, 2025. – pp. 161-185. – DOI: 10.4018/979-8-3373-2797-6.ch007.
29. Niu Y., Chai S.S. Design and optimization of a test case generation algorithm for real-time embedded systems based on adaptive Q-Learning // Automated Software Engineering, 2026. – 33(2). – art. no. 50. – DOI: 10.1007/s10515-026-00598-w.
30. Yang T., Choi I., Luo H. Interacting and reflecting together in VR-mediated group learning: Immersive and observational experiences in shared mixed reality // Computers and Education, 2026. – 251. – art. no. 105644. – DOI: 10.1016/j.compedu.2026.105644.