Dual-Sourcing Made Easy: Distributionally Robust Optimization of Inventory System under Independent Demand
Apr 9, 2026·
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0 min read
Songchen Jiang
Zhaolin Li
Sheng Bi*
Chung-Piaw Teo
Min Huang
Abstract
We generalize Scarf’s classical min-max newsvendor model from a single-period setting to a multiperiod inventory system with independent demand across periods. This extension leverages mean–variance analysis to capture the dynamic effects of lead times, yielding closed-form expressions for the optimal base-stock level. As a concrete application, we study a single-product, dual-sourcing system with constant lead times and backlogging. We show that the optimal tailored base–surge policy admits a tractable closed-form approximation, with the base stock explicitly calibrated to account for lead-time effects. This provides a simple, distribution-free rule for trading off inventory cost against service level in a dual-sourcing system. Empirical validation using data from a multinational food manufacturer demonstrates the model’s practical advantages. Applying our method to historical demand and sourcing data improves service levels and reduces stockouts compared with traditional approaches, while maintaining cost-effectiveness. The model’s capacity to adapt base-stock levels to different lead times and demand conditions proved especially valuable in mitigating the impact of supply chain volatility. These findings confirm the theoretical performance of our approach and highlight its potential as a scalable, cost-effective tool for firms facing lead-time demand uncertainty.
Type
Publication
Operations Research

Authors
Researcher in Operations Research
I am a joint Ph.D. student in the College of Information Science and Engineering at Northeastern University, China, supervised by Prof. Min Huang, and the Institute of Operations Research and Analytics at the National University of Singapore, supervised by Prof. Chung-Piaw Teo. My research lies at the intersection of data-driven optimization, distributionally robust optimization, stochastic modeling, and supply chain analytics. I am particularly interested in developing tractable optimization models and algorithms for decision-making under uncertainty, with applications in inventory systems, supply chain network design, logistics planning, and operations management.