VBA BASIC-BASED PREDICTIVE MAINTENANCE SYSTEM (PdM): A NEW APPROACH TO MONITORING ELECTRIC MOTORS IN COMMERCIAL FACILITIES IN UKRAINE
DOI:
https://doi.org/10.30890/2567-5273.2025-42-01-100Keywords:
predictive maintenance (PdM) systems, power system, preventive protection, risks, monitoring, technical condition, electric motorsAbstract
The rapid development of modern technologies is primarily aimed at ensuring the uninterrupted and reliable operation of strategically important equipment for the production and maintenance of critical infrastructure productivity against the backdrop of tReferences
Moosavi S., Farajzadeh-Zanjani M., Razavi-Far R., Palade V., Saif M. Explainable AI in Manufacturing and Industrial Cyber–Physical Systems: A Survey. Electronics. 2024. №13.
de Oliveira L. F. P., de Oliveira Morais F. J., Manera L. T. Development of an energy harvesting system based on a thermoelectric generator for use in online predictive maintenance systems of industrial electric motors. Sustainable Energy Technologies and Assessments. 2023. №60. Levitt J. Complete Guide to Preventive and Predictive Maintenance, 2nd ed. Industrial Press: New York, 2012.
Wang L., Chen Y., Zhao X., Xiang J. Predictive Maintenance Scheduling for Aircraft Engines Based on Remaining Useful Life Prediction. IEEE Internet Things J. 2024. №11. Рр. 23020–23031.
Lyashenko O., Starodubtsev M., Makarenko G., Pashchenko O. Control of electromechanical systems of conveyor lines. Current state of scientific research and technologies in industry. 2024. No. 4(30). P. 85–96. DOI: 10.30837/2522-9818.2024.4.085.
Ehrig L., Atzberger D., Hagedorn B., Klimke J., Döllner J. Customizable Asymmetric Loss Functions for Machine Learning-based Predictive Maintenance. In Proceedings of the 2020 8th International Conference on Condition Monitoring and Diagnosis (CMD), Phuket, Thailand, 25–28 October 43 2020. Рp. 250–253.
Campos J., Sharma P., Albano M., Ferreira L.L, Larrañaga M. An Open Source Framework Approach to Support Condition Monitoring and Maintenance. Appl. Sci. 2020. №10. 1
Bousdekis A., Apostolou D., Mentzas G. Predictive Maintenance in the 4th Industrial Revolution: Benefits, Business Opportunities, and Managerial Implications. IEEE Eng. Manag. Rev. 2020. №48. Рр. 57–62.
Zhurylo O., Liashenko O., Avetisova K. Hardware security overview of fog computing end devices in the Internet of Things. Innovative technologies and scientific solutions for industries. 2023. №1 (23). Рр. 57–71. https://doi.org/10.30837/ITSSI.2023.23.057
Krawczyk S., Szuba M. Utilizing Simulation to Enhance Predictive 44 Maintenance in Power Rails of Switch Gears by Analyzing Temperature Changes Under Varying Current Loads. In Proceedings of the 2023 Progress in Applied Electrical Engineering (PAEE), Koscielisko, Poland, 26–30 June 2023. Рp. 1–4.
Muneeshwari P., Suguna R., Valantina G.M., Sasikala M., Lakshmi D. IoT-Driven Predictive Maintenance in Industrial Settings through a Data Analytics Lens. In Proceedings of the 2024 International Conference on Trends in Quantum Computing and Emerging Business Technologies, Pune, India, 22–23 March 2024. Рp. 1–5.
Ahmad B., Mishra B.K., Ghufran M., Pervez Z., Ramzan N. Intelligent Predictive Maintenance Model for Rolling Components of a Machine based on Speed and Vibration. In Proceedings of the 2021 International Conference on Artificial Intelligence in Information and Communication (ICAIIC), Jeju Island, Republic of Korea, 20–23 April 2021. Рp. 459–464.
Cakir M., Guvenc M.A., Mistikoglu S. The experimental application of popular machine learning algorithms on predictive maintenance and the design of IIoT based condition monitoring system. Comput. Ind. Eng. 2021. №151.
Roosefert M.T., Preetha R.J., Annie U.R., Devaraj D., Umachandran K. Intelligent machine learning based total productive maintenance approach for achieving zero downtime in industrial machinery. Comput. Ind. Eng. 2021. №157.
Coelho D., Costa D., Rocha E.M., Almeida D., Santos J.P. Predictive maintenance on sensorized stamping presses by time series segmentation, anomaly detection, and classification algorithms. Procedia Comput. Sci. 2022. №200. Рр. 1184–1193.
Samuel R., Baldenko F., Baldenko D. Mud motor PDM dynamics: An analytical model. In SPE Annual Technical Conference and Exhibition? 2021, September. SPE.
Ferraz Júnior F., Romero R. A. F., Hsieh S. J. Machine learning for the detection and diagnosis of anomalies in applications driven by electric motors. Sensors. 2023. №23(24).
ISO/IEC IS 13374-12:2003; Condition Monitoring and Diagnostics of Machines – Data Processing, Communication and Presentation. International Organization for Standardization: Geneva, Switzerland, 2003.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2025 Authors

This work is licensed under a Creative Commons Attribution 4.0 International License.



