
Research Article
AI-Driven Predictive Maintenance in Infrastructure and Facilities Management
@ARTICLE{10.4108/airo.9975, author={Seaam Bin Masud and Hasan Mahmud Sozib and Kamana Parvej Mishu and Rahima Binta Bellal and Mohammad Tahmid Ahmed and Anwarul Matin Jony and Syeda Tabassum and Mohammad Morshed Uddin Al Mostam Sek Billah}, title={AI-Driven Predictive Maintenance in Infrastructure and Facilities Management}, journal={EAI Endorsed Transactions on AI and Robotics}, volume={5}, number={1}, publisher={EAI}, journal_a={AIRO}, year={2025}, month={12}, keywords={Predictive Maintenance, Machine Learning, XGBoost, Infrastructure Management, Failure Diagnosis, Data-Driven Maintenance, IoT, Model Interpretability}, doi={10.4108/airo.9975} }- Seaam Bin Masud
Hasan Mahmud Sozib
Kamana Parvej Mishu
Rahima Binta Bellal
Mohammad Tahmid Ahmed
Anwarul Matin Jony
Syeda Tabassum
Mohammad Morshed Uddin Al Mostam Sek Billah
Year: 2025
AI-Driven Predictive Maintenance in Infrastructure and Facilities Management
AIRO
EAI
DOI: 10.4108/airo.9975
Abstract
This study addresses the critical challenge of transforming traditional reactive maintenance approaches within infrastructure and facilities management into proactive, data-driven strategies leveraging advancements in artificial intelligence. Conventional maintenance, often reliant on fixed schedules or post-failure interventions, falls short in mitigating unexpected downtimes and escalating costs. To overcome these limitations, this research deploys multiple machine learning algorithms, namely, K-Nearest Neighbors (KNN), Support Vector Classifier (SVC), Random Forest Classifier (RFC), and Extreme Gradient Boosting (XGBoost), applied to a comprehensive synthetic predictive maintenance dataset. This dataset encapsulates key operational metrics including temperature, torque, rotational speed, and tool wear across diverse failure modes. The comparative analysis reveals that XGBoost substantially outperforms alternative models, achieving a remarkable accuracy of 98.9% in multiclass failure prediction, supported by an AUC nearing 1.0 and F1 scores above 0.98 in both validation and test sets. RFC and SVC closely follow, each delivering precision and recall rates exceeding 95%. Notably, KNN provides rapid inference, facilitating real-time applications despite slightly lower accuracy metrics (~96.6%). Advanced preprocessing techniques, such as feature scaling, label encoding, and synthetic minority oversampling (SMOTE), enhanced model robustness amid inherent class imbalances. Critical features, including torque and tool wear, exhibited pronounced predictive importance, aligning with known mechanical failure signatures. The findings underscore AI’s potential to revolutionize maintenance by offering granular failure diagnostics and enabling timely interventions, thus significantly reducing operational costs and preventing catastrophic infrastructure failures. This research advances the state-of-the-art by integrating interpretability, cross-model benchmarking, and practical scalability considerations, positioning AI-driven predictive maintenance as a cornerstone of modern infrastructure resilience and sustainability.
Copyright © 2025 Seaam Bin Masud et al., licensed to EAI. This is an open access article distributed under the terms of the CC BYNC-SA 4.0, which permits copying, redistributing, remixing, transformation, and building upon the material in any medium so long as the original work is properly cited.


