Skip to main content
Have a personal or library account? Click to login
Modern Data-Driven Strategies for Enhancing Reliability and Efficiency in Predictive Maintenance of Shipyard Infrastructure Cover

Modern Data-Driven Strategies for Enhancing Reliability and Efficiency in Predictive Maintenance of Shipyard Infrastructure

Open Access
|May 2026

References

  1. K.X. Li, K.C. Lin, M. Jin, K.F. Yuen, Z. Yang and Y. Xiao, “Impact of the Belt and Road Initiative on Commercial Maritime Power”, Transportation Research Part A: Policy and Practice, Elsevier, Vol. 135, 2020, pp. 160–167.
  2. R. Diaz, K. Smith, B. Acero, F. Longo and A. Padovano, “Developing an Artificial Intelligence Framework to Assess Shipbuilding and Repair Subtier Supply Chains Risk”, Procedia Computer Science, Elsevier, Vol. 180, 2021, pp. 996–1002.
  3. W. Anane, I. Iordanova and C. Ouellet-Plamondon, “Modular Robotic Prefabrication of Discrete Aggregations Driven by BIM and Computational Design”, Procedia Computer Science, Elsevier, Vol. 200, 2022, pp. 1103–1112.
  4. D.G. Pivoto, L.F. De Almeida, R. da Rosa Righi, J.J. Rodrigues, A.B. Lugli and A.M. Alberti, “Cyber-Physical Systems Architectures for Industrial Internet of Things Applications in Industry 4.0: A Literature Review”, Journal of Manufacturing Systems, Elsevier, Vol. 58, 2021, pp. 176–192.
  5. A. Munín-Doce, V. Díaz-Casás, P. Trueba, S. Ferreno-González and M. Vilar-Montesinos, “Industrial Internet of Things in the Production Environment of a Shipyard 4.0”, The International Journal of Advanced Manufacturing Technology, Springer, Vol. 108(1), 2020, pp. 47–59.
  6. V.J. Jimenez, N. Bouhmala and A.H. Gausdal, “Developing a Predictive Maintenance Model for Vessel Machinery”, Journal of Ocean Engineering and Science, Elsevier, Vol. 5(4), 2020, pp. 358–386.
  7. I. de la Peña Zarzuelo, M.J.F. Soeane and B.L. Bermúdez, “Industry 4.0 in the Port and Maritime Industry: A Literature Review”, Journal of Industrial Information Integration, Elsevier, Vol. 20, 2020, p. 100173.
  8. A. Giallanza, G. Aiello and G. Marannano, “Industry 4.0: Advanced Digital Solutions Implemented on a Close Power Loop Test Bench”, Procedia Computer Science, Elsevier, Vol. 180, 2021, pp. 93–101.
  9. M. Cheliotis, I. Lazakis and G. Theotokatos, “Machine Learning and Data-Driven Fault Detection for Ship Systems Operations”, Ocean Engineering, Elsevier, Vol. 216, 2020, p. 107968.
  10. R. van Dinter, B. Tekinerdogan and C. Catal, “Predictive Maintenance Using Digital Twins: A Systematic Literature Review”, Information and Software Technology, Elsevier, Vol. 151, 2022, p. 107008.
  11. M. Onifade, J.A. Adebisi, A.P. Shivute and B. Genc, “Challenges and Applications of Digital Technology in the Mineral Industry”, Resources Policy, Elsevier, Vol. 85, 2023, p. 103978.
  12. G. Shang, L. Xu, Z. Li, Z. Zhou and Z. Xu, “Digital-Twin-Based Predictive Compensation Control Strategy for Seam Tracking in Steel Sheets Welding of Large Cruise Ships”, Robotics and Computer-Integrated Manufacturing, Elsevier, Vol. 88, 2024, p. 102725.
  13. M.M. Farizhendy, E. Noorzai and M. Golabchi, “Implementing the NSGA-II Genetic Algorithm to Select the Optimal Repair and Maintenance Method of Jack-up Drilling Rigs in Iranian Shipyards”, Ocean Engineering, Elsevier, Vol. 211, 2020, p. 107548.
  14. J. Zhang, M.C. Ong and X. Wen, “Dynamic Analysis of the De-ballasting Operations of a Floating Dock with a Malfunctioning Pump”, Journal of Marine Science and Application, Springer, 2024, pp. 1–15.
  15. D. Kimera and F.N. Nangolo, “Predictive Maintenance for Ballast Pumps on Ship Repair Yards via Machine Learning”, Transportation Engineering, Elsevier, Vol. 2, 2020, p. 100020.
  16. Z. Ren, A.S. Verma, Y. Li, J.J. Teuwen and Z. Jiang, “Offshore Wind Turbine Operations and Maintenance: A State-of-the-Art Review”, Renewable and Sustainable Energy Reviews, Elsevier, Vol. 144, 2021, p. 110886.
  17. J.H. Lim, J.H. Kim and J.H. Huh, “Recent Trends and Proposed Response Strategies of International Standards Related to Shipbuilding Equipment Big Data Integration Platform”, Quality & Quantity, Springer, Vol. 57(1), 2023, pp. 863–884.
  18. D.R. Oliveira, M. Lagerström, L. Granhag, S. Werner, A.I. Larsson and E. Ytreberg, “A Novel Tool for Cost and Emission Reduction Related to Ship Underwater Hull Maintenance”, Journal of Cleaner Production, Elsevier, Vol. 356, 2022, p. 131882.
  19. S. Bertagna, L. Braidotti, V. Bucci and A. Marinò, “Laser Scanning Application for the Enhancement of Quality Assessment in Shipbuilding Industry”, Procedia Computer Science, Elsevier, Vol. 232, 2024, pp. 1289–1298.
  20. T. Urbański and M. Taczała, “Prediction of a Transverse Shrinkage of Butt Welded Joints in Shipyard Conditions Using the Design of Experimental Approach”, International Journal of Naval Architecture and Ocean Engineering, Elsevier, Vol. 12, 2020, pp. 784–798.
  21. Silvestri, L., Forcina, A., Introna, V., Santolamazza, A. and Cesarotti, V., 2020. Maintenance transformation through Industry 4.0 technologies: A systematic literature review. Computers in industry, 123, p. 103335.
  22. Egger, J. and Masood, T., 2020. Augmented reality in support of intelligent manufacturing–a systematic literature review. Computers & Industrial Engineering, 140, p. 106195.
  23. Forcina, A., Introna, V. and Silvestri, A., 2021. Enabling technology for maintenance in a smart factory: A literature review. Procedia Computer Science, 180, pp. 430–435.
  24. Javaid, M., Haleem, A. and Suman, R., 2023. Digital twin applications toward industry 4.0: A review. Cognitive Robotics, 3, pp. 71–92.
  25. Kamran, S.S., Haleem, A., Bahl, S., Javaid, M., Nandan, D. and Verma, A.S., 2022. Role of smart materials and digital twin (DT) for the adoption of electric vehicles in India. Materials Today: Proceedings, 52, pp. 2295–2304.
  26. Mouschoutzi, M. and Ponis, S.T., 2022. A comprehensive literature review on spare parts logistics management in the maritime industry. The Asian Journal of Shipping and Logistics, 38(2), pp. 71–83.
  27. Vakili, S., Schönborn, A. and Ölçer, A.I., 2023. The road to zero emission shipbuilding Industry: A systematic and transdisciplinary approach to modern multi-energy shipyards. Energy Conversion and Management: X, 18, p. 100365.
  28. Dalzochio, J., Kunst, R., Pignaton, E., Binotto, A., Sanyal, S., Favilla, J. and Barbosa, J., 2020. Machine learning and reasoning for predictive maintenance in Industry 4.0: Current status and challenges. Computers in Industry, 123, p. 103298.
  29. Cheng, J.C., Chen, W., Chen, K. and Wang, Q., 2020. Data-driven predictive maintenance planning framework for MEP components based on BIM and IoT using machine learning algorithms. Automation in Construction, 112, p. 103087.
  30. Arena, S., Florian, E., Sgarbossa, F., Sølvsberg, E. and Zennaro, I., 2024. A conceptual framework for machine learning algorithm selection for predictive maintenance. Engineering Applications of Artificial Intelligence, 133, p. 108340.
  31. Gohel, H.A., Upadhyay, H., Lagos, L., Cooper, K. and Sanzetenea, A., 2020. Predictive maintenance architecture development for nuclear infrastructure using machine learning. Nuclear Engineering and Technology, 52(7), pp. 1436–1442
  32. Yeter, B., Garbatov, Y. and Soares, C.G., 2022. Life-extension classification of offshore wind assets using unsupervised machine learning. Reliability Engineering & System Safety, 219, p. 108229.
  33. Panda, J.P., 2023. Machine learning for naval architecture, ocean and marine engineering. Journal of Marine Science and Technology, 28(1), pp. 1–26.
  34. Yi, Z., Mi, S., Tong, T., Li, H., Lin, Y., Wang, W. and Li, J., 2023. Intelligent initial model and case design analysis of smart factory for shipyard in China. Engineering Applications of Artificial Intelligence, 123, p. 106426.
  35. Schwendemann, S., Amjad, Z. and Sikora, A., 2021. A survey of machine-learning techniques for condition monitoring and predictive maintenance of bearings in grinding machines. Computers in Industry, 125, p. 103380.
  36. Serradilla, O., Zugasti, E., Rodriguez, J. and Zurutuza, U., 2022. Deep learning models for predictive maintenance: a survey, comparison, challenges and prospects. Applied Intelligence, 52(10), pp. 10934–10964
  37. Ayvaz, S. and Alpay, K., 2021. Predictive maintenance system for production lines in manufacturing: A machine learning approach using IoT data in real-time. Expert Systems with Applications, 173, p. 114598
  38. Lang, X., Wu, D. and Mao, W., 2024. Physics-informed machine learning models for ship speed prediction. Expert Systems with Applications, 238, p. 121877.
  39. Dahito, M.A., Genest, L., Maddaloni, A. and Neto, J., 2023. A solution method for mixed-variable constrained blackbox optimization problems. Optimization and Engineering, pp. 1–56.
  40. Sahal, R., Breslin, J.G. and Ali, M.I., 2020. Big data and stream processing platforms for Industry 4.0 requirements mapping for a predictive maintenance use case. Journal of manufacturing systems, 54, pp. 138–151.
Language: English
Submitted on: Aug 18, 2025
Published on: May 2, 2026
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2026 Vijaya Kumar Chava, Vijaya Geeta Dharmavaram, Vinil Chowdhary Chava, published by Macquarie University, Australia
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.