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• Identify factors influencing delivery time of materials in supply chain • Purpose machine learning algorithms to estimate the delivery time of goods • Evaluate the performance of the proposed models based on a real case study • Offer predictive models to reduce transportation, inventory, and shortage costs The delivery time of goods in the oil and gas supply chain is a critical enabler for achieving overall supply chain excellence and business success. However, the uncertainty of the delivery times of goods is a significant issue, making it critical for businesses to develop effective logistics and shipping strategies. Consequently, this paper proposes machine learning models to predict delivery times of the items in oil and gas supply chain and enhance its responsiveness. The proposed approach integrates predictive analytics with the Resource-Based View (RBV) and Dynamic Capabilities View (DCV) to align operational forecasting with strategic objectives. Key factors influencing delivery time are identified through a combination of literature review and expert input. Several machine learning models are trained and tested using real-world oil and gas supply chain data. The results indicate that transportation mode, item complexity, and supplier location are the most influential predictors of delivery time. Among the evaluated models, the ensemble approach demonstrates the best performance, achieving prediction accuracy exceeding 85% and exhibiting strong generalization capability. The proposed models equip supply chain managers with actionable decision-support tools to enhance scheduling, reduce uncertainty, and improve inventory planning and logistics coordination for better disruption response. From a strategic perspective, integrating machine learning with RBV and DCV strengthens organizational responsiveness and supports sustained competitive advantage in dynamic supply chain environments.
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Awsan Mohammed
Musab Alrehaili
Ahmad Al-Hanbali
Results in Engineering
University of New Brunswick
King Fahd University of Petroleum and Minerals
Université de Moncton
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Mohammed et al. (Fri,) studied this question.
www.synapsesocial.com/papers/6a0aabf55ba8ef6d83b6f98b — DOI: https://doi.org/10.1016/j.rineng.2026.111069