1. Bala A, Jusoh RZ, Ismail I, Oliva D, Muhammad N, Sait SM, et al. Artificial intelligence and edge computing for machine maintenance-review. Artificial Intelligence Review. 2024; 57(119): p. 1-2.
2. Bueno M. Mantenimiento preventivo y predictivo para motores eléctricos. Ingeniería, innovación, tecnología y ciencia. 2023; 1(2): p. 38-41.
3. Ribeiro RF, Santos IAd, Mendes M, Teixeira CE, Borges LE, Ferreira G. Fault detection and diagnosis in electric motors using 1d convolutional neural networks with multi-channel vibration signals. Measurement. 2022; 190(110759).
4. Instituto Tecnológico de la Energía. Energías renovables. [Online].; 2021. Available from: https://www.energias-renovables.com/eolica/ite-trabaja-en-el-mantenimiento-predictivo-de-20210614.
5. Mallioris P, Aivazidou E, Bechtsis D. Predictive maintenance in Industry 4.0: A systematic multi-sector mapping. CIRP Journal of Manufacturing Science and Technology. 2024; 50.
6. Lopez JA, Llanganate FA, Rueda WP, Mullo ME. Estudio de técnicas y tecnologías para implementar mantenimiento predictivo en sistemas eléctricos industriales. Polo del conocimiento. 2025; 10(4).
7. Banco Interamericano de Desarrollo. Tecnologías de inteligencia artificial (AI) en el mantenimiento de activos del sector eléctrico. [Online].; 2022. Available from: https://publications.iadb.org/publications/spanish/document/Tecnologias-de-Inteligencia-Artificial-AI-en-el-mantenimiento-de-activos-del-sector-electrico.pdf.
8. Mafla C, Castejon C, Rubio H. Mantenimiento predictivo en tractores agrícolas. Propuesta de metología orientada al mantenimiento conectado. Revista Iberoamericana de Ingeniería Mecánica. 2022; 6(1).
9. Hector I, Panjanathan R. Predictive maintenance in Industry 4.0: a survey of planning models and machine learning techniques. PeerJ Computer Science. 2024; 10.
10. Mohammed NA, Abdulateef OF, Hamad AH. An IoT and Machine Learning-Based Predictive Maintenance System for Electrical Motors. 2023; 56(4).
11. Drakaki M, Karnavas YL, Tziafettas IA, Linardos V, Tzionas P. Machine Learning and Deep Learning Based Methods Toward Industry 4.0 Predictive Maintenance. Revista de Ingeniería Industrial y Gestión. 2021; 15(1).
12. Vos K, Peng Z, Jenkins C, Shahriar MR, Borghesani P, Wang W. Vibration-based anomaly detection using LSTM/SVM approaches. Mechanical Systems and Signal Processing. 2022; 169.
13. Achouch M, Dimitrova M, Dhouib R, Ibrahim H, Adda M, Sattarpanah S, et al. Predictive Maintenance and Fault Monitoring Enabled by Machine Learning: Experimental Analysis of a TA-48 Multistage Centrifugal Plant Compressor. Applied Sciences. 2023; 13(3).
14. Chaudhry S, Salman A, Seher A, Iftikhar F, Amjad S. Predictive Maintenance in Industrial Internet of Things: Current Status. International Journal of Innovations in Science & Technology. 2024; 6(7).
15. Benhanifia A, Cheikh ZB, Oliveira PM, Valente A, Lima JLS. Systematic review of predictive maintenance practices in the manufacturing sector. Intelligent Systems with Applications. 2025; 26.
16. Shao S, Sorourkhah A. A Novel Perspective on Prioritizing Investment Projects under Future Uncertainty: Integrating Robustness Analysis with the Net Present Value Model. Economics. 2024; 18(1).
17. Wahid A. Techno-Economic Analysis: A Comprehensive Examination of Assessing Technology Viability and Economic Feasibility. Journal of Engineering and Technology. 2023; 12(4).
18. Alsulamy S, Dawood S, Rafik M, Mansour M. Industrial Sectors’ Perceptions about the Benefits of Implementing ISO 14001 Standard: MANOVA and Discriminant Analysis Approach. Sustainability. 2022; 14(9).
19. Mendoza MG, Loor MG, Alcívar MA. Implementación de la norma ISO 14001 en empresas manabitas y su incidencia en el desarrollo sostenible. Revista InveCom. 2024; 4(2).