- Predicting Cost Impacts of Nonconformances in Construction Projects Using Interpretable Machine Learning. Dans: Journal of Construction Engineering and Management, v. 150, n. 1 (janvier 2024). (2024):
- Developing a Hybrid Fuzzy Decision-Making Model for Sustainable Circular Contractor Selection. Dans: Journal of Construction Engineering and Management, v. 149, n. 10 (octobre 2023). (2023):
- Critical success factors for construction industry transition to circular economy: developing countries’ perspectives. Dans: Engineering, Construction and Architectural Management. :
- On the identification of most appropriate green roof types for urbanized cities using multi-tier decision analysis: A case study of Istanbul, Turkey. Dans: Sustainable Cities and Society, v. 96 (septembre 2023). (2023):
- Developing a National Data-Driven Construction Safety Management Framework with Interpretable Fatal Accident Prediction. Dans: Journal of Construction Engineering and Management, v. 149, n. 4 (avril 2023). (2023):
- Prioritizing urban water scarcity mitigation strategies based on hybrid multi-criteria decision approach under fuzzy environment. Dans: Sustainable Cities and Society, v. 87 (décembre 2022). (2022):
- Prediction of construction accident outcomes based on an imbalanced dataset through integrated resampling techniques and machine learning methods. Dans: Engineering, Construction and Architectural Management, v. 30, n. 9 (juin 2022). (2022):
- Multi-criteria analysis of barriers to building information modeling (BIM) adoption for SMEs in New Zealand construction industry. Dans: Engineering, Construction and Architectural Management, v. 30, n. 9 (juin 2022). (2022):
- Towards flood risk mapping based on multi-tiered decision making in a densely urbanized metropolitan city of Istanbul. Dans: Sustainable Cities and Society, v. 80 (mai 2022). (2022):
- Accident prediction in construction using hybrid wavelet-machine learning. Dans: Automation in Construction, v. 133 (janvier 2022). (2022):
- Integrating feature engineering, genetic algorithm and tree-based machine learning methods to predict the post-accident disability status of construction workers. Dans: Automation in Construction, v. 131 (novembre 2021). (2021):
- Tree-based nonlinear ensemble technique to predict energy dissipation in stepped spillways. Dans: European Journal of Environmental and Civil Engineering, v. 26, n. 8 (septembre 2020). (2020):