Abstract

To reduce the risk of unexpected cost of rework (COR), a variety of predictive models have been developed in the construction management literature. However, they primarily focus on prediction accuracy, and rather less attention has been paid to the trustworthiness of prediction models. This increases operational risk and hinders its integration in related decision-making. Aiming to reduce the utilization risk and increase the reliability of COR prediction models, this study exploits the graph convolutional network (GCN) model, which enhances representativeness by accommodating interrelationships among the root causes of nonconformances. The GCN can process a more representative input network that provides COR records while factoring in the shared root causes of nonconformance in the resulting COR. The proposed approach achieved a COR prediction accuracy as high as 85%, which is significantly higher than that of any existing cost prediction model. The demonstrated accuracy and lower risk of the proposed GCN model thus enhance the reliability of the prediction and trust in its outcome, facilitating its integration into developing rework prevention strategies and relevant resource allocation for construction professionals. The study contributes to construction project management by proposing a novel COR prediction model that embodies accuracy, representativeness, and interpretability. Whereas we tailored the GCN model to predict COR with a focus on nonconformance root causes, it is noted that rework costs can also be influenced by other project factors, such as site safety.

Practical Applications

Managing rework costs is a critical challenge in the construction sector, necessitating predictive models that are not only accurate but also trustworthy. This study leverages graph convolutional network (GCN) to offer a prediction model that is both accurate and reliably interpretable. The GCN model enriches cost of rework (COR) predictions by analyzing how different project elements, such as design flaws or material issues, are interconnected, providing a more holistic view of potential rework triggers. The customization of the GCN model is crucial, requiring specific adjustments based on individual project requirements and decision-making goals, and remains relevant across diverse construction projects. The proposed predictive tool processes complex data and provides insight into how various project factors interplay to affect rework costs. By providing a clear rationale behind its predictions, it supports more informed decision-making in allocating resources and developing strategies to prevent rework, ultimately leading to more efficient and cost-effective project management. Having COR prediction based on a comprehensive understanding of all related project factors equips professionals with insight about the predicted COR impact on the overall construction budget and its related root causes. This, in turn, fosters greater confidence among project stakeholders and sets a stronger basis for strategic planning, resource allocation, and risk management.

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Data Availability Statement

The data sets generated during and/or analyzed during the current study are available from the corresponding author upon reasonable request.

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Go to Journal of Construction Engineering and Management
Journal of Construction Engineering and Management
Volume 150Issue 8August 2024

History

Received: Nov 8, 2023
Accepted: Feb 22, 2024
Published online: May 30, 2024
Published in print: Aug 1, 2024
Discussion open until: Oct 30, 2024

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Ph.D. Student, Dept. of Civil Engineering, Karadeniz Technical Univ., Trabzon 61080, Turkey (corresponding author). ORCID: https://orcid.org/0000-0003-0974-1270. Email: [email protected]
Associate Professor, Dept. of Civil Engineering, Istanbul Technical Univ., Istanbul 34469, Turkey. ORCID: https://orcid.org/0000-0002-4101-8560. Email: [email protected]
Professor, Dept. of Civil Engineering, Karadeniz Technical Univ., Trabzon 61080, Turkey. ORCID: https://orcid.org/0000-0001-8734-6300. Email: [email protected]
Professor, Dept. of Civil, Architectural, and Environmental Engineering, Illinois Institute of Technology, Chicago, IL 60616. ORCID: https://orcid.org/0000-0002-1580-324X. Email: [email protected]

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