Modern Data-Driven Strategies for Enhancing Reliability and Efficiency in Predictive Maintenance of Shipyard Infrastructure
References
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- Egger, J. and Masood, T., 2020. Augmented reality in support of intelligent manufacturing–a systematic literature review. Computers & Industrial Engineering, 140, p. 106195.
- 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.
- Javaid, M., Haleem, A. and Suman, R., 2023. Digital twin applications toward industry 4.0: A review. Cognitive Robotics, 3, pp. 71–92.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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.
- 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
- 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.
- Panda, J.P., 2023. Machine learning for naval architecture, ocean and marine engineering. Journal of Marine Science and Technology, 28(1), pp. 1–26.
- 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.
- 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.
- 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
- 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
- Lang, X., Wu, D. and Mao, W., 2024. Physics-informed machine learning models for ship speed prediction. Expert Systems with Applications, 238, p. 121877.
- 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.
- 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.
DOI: https://doi.org/10.2478/ijssis-2026-0020 | Journal eISSN: 1178-5608
Language: English
Submitted on: Aug 18, 2025
Published on: May 2, 2026
Published by: Macquarie University, Australia
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year
Keywords:
Related subjects:
© 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.