THEORETICAL FOUNDATIONS OF THE DUAL CONTROL ALGORITHM FOR MULTI-AGENT INFORMATION-MEASURING SYSTEMS

1
Ivano-Frankivsk National Technical University of Oil and Gas, Ukraine
2
Ivano-Frankivsk National Technical University of Oil and Gas, Ukraine

This article examines the theoretical foundations of the dual control algorithm in the context of machine learning, focusing on its application for intelligent agents in multi-agent information-measuring systems. A proposed algorithm combines anomaly detection in data with telemetry-based sensor calibration, opening new possibilities for improving the accuracy and reliability of data in complex and dynamic environments. The advantages of the algorithm are analyzed concerning adaptability, forecasting, and data integration, comparing it with other machine learning algorithms. A scheme of the software algorithm for the sensor data acquisition module is presented. A machine learning model of the dual control algorithm is developed and compared with the isolation forest model, highlighting the advantages of applying the dual control algorithm for building multi-agent information-measuring systems.

  1. Y. Li, Q. Liu, X. Li, L. Gao, “Manufacturing resource- based self-organizing scheduling using multi-agent system and deep reinforcement learning”, Journal of Manufacturing Systems, Vol. 79, 2025, pp. 179-198, ISSN 0278-6125, https://doi.org/10.1016/j.jmsy.2025.01.004.
  2. R. Erol, C. Sahin, A. Baykasoglu, V.t Kaplanoglu, “A multi- agent based approach to dynamic scheduling of machines and automated guided vehicles in manufacturing systems”, Appli- ed Soft Computing, Vol. 12, Issue 6, 2012, pp. 1720-1732,ISSN 1568-4946, https://doi.org/10.1016/j.asoc.2012.02.001.
  3. O. Serediuk, M. Trufan, A. Vynnychuk, “The Double Control Method in Information and Measurement Technologies and Prospects for Its Application”, in Proc. VI International Scientific Practical Conference “Quality Management in Education and Industry: Experience, Problems, and Perspectives”, November 16-17, 2023, Lviv, Ukraine, 2023, pp. 270-271.
  4. P. Spychalski, R. Arendt, “Machine Learning in Multi- Agent Systems using Associative Arrays”, Parallel Computing, Vol. 75, 2018, pp. 88-99, ISSN 0167-191, https://doi.org/10.1016/j.parco.2018.03.006.
  5. E. Alonso, M. dʼInverno, D. Kudenko, M. Luck, J.Noble, Learning in multi-agent systems. The Knowledge Engineering Review. (2001). [Online]. Available: https://www.researchgate.net/publication/33038108_Learni ng_in_multi-agent_systems
  6. K.M. Khalil, M. Abdel-Aziz, T. T. Nazmy, A-B. M. Salem, “MLIMAS: A Framework for Machine Learning in Interactive Multi-agent Systems”, Procedia Computer Science, Vol. 65, 2015, pp. 827-835, ISSN 1877-0509,https://doi.org/10.1016/j.procs.2015.09.035.
  7. I. Basheer, M Hajmeer, “Artificial neural networks: fundamentals, computing, design, and application”, Journal of Microbiological Methods, Vol. 43, Issue 1, 2000, pp. 3-31,     ISSN    0167-7012,     https://doi.org/10.1016/S0167-7012(00)00201-3
  8. V. Chandola, A. Banerjee, V. Kumar, “Anomaly Detection: A Survey,” ACM Comput. Surv., vol. 41, no. 3, 2009, P. 58, http://doi.acm.org/10.1145/1541880.1541882.
  9. W. Fang, Y. Shao, P. E.D. Love, T. Hartmann, W. Liu, “Detecting anomalies and de-noising monitoring data from sensors: A smart data approach”, Advanced Engineering Informatics, Vol. 55, 2023, 101870, ISSN 1474-0346,https://doi.org/10.1016/j.aei.2022.101870.
  10. Y. LeCun, Y. Bengio, and G. Hinton, “Deep Learning,” Nature, vol. 521, no. 7553, 2015, pp. 436–444 .
  11. V. Kotsovskyi, Theory of Parallel Computing. A Textbook. Uzhhorod, 2021.
  12. S. Gavrin, D. Murzagulov, A. Zamyatin, “Anomaly Detection in Process Signals within Machine Learning and Data Augmentation Approach”, Machine Learning and Data Mining in Pattern Recognition. MLDM 2019: in 15th International Conference on Machine Learning and Data Mining, New York, 20-25 July 2019: Vol. 2. Leipzig: Ibai-publishing, 2019. pp. 585–598.
  13. R. Lebid, I. Zhukov, M. Huziy, Mathematical Methods in System Modeling: A Textbook for University Students. Kyiv, 2000.
  14. V. Aschepkov, “The use of the Isolation Forest model for anomaly detection in measurement data”, Innovative technologies and scientific solutions for industries, no 1 (27), 2024, pp. 236–245-, doi:10.30837/ITSSI.2024.27.236.