面向战略资源预置与分配的随机网络优化

Stochastic network optimization for strategic resource pre-positioning and allocation

International Journal of Production Economics · 2025
被引 0
ABS 3

中文导读

提出一个随机网络模型,优化危机场景下救援物资的设施选址、容量管理和资源分配,通过德国国家粮食储备案例验证,为决策者提供经济和管理洞见。

Abstract

This paper presents a stochastic network modeling approach to develop insights into strategic facility location planning, capacity management, resource pre-positioning, and allocation. The primary purpose of the proposed model is to present a cost-effective logistics network designed for efficiently handling diverse relief items across a spectrum of crisis scenarios. By incorporating stochastic elements, we aim to capture the inherent unpredictability of demand fluctuations and the impact of crises. Our approach optimizes facility sizes to leverage economies of scale while improving allocation decisions. Additionally, it ensures fairness across demand points by implementing a strategy to mitigate relative shortages. To demonstrate the practical applicability of our model, we conduct a computational case study utilizing instances from the national food stockpiling system in Germany. Moreover, we present a sensitivity analysis highlighting the impact of crisis intensity, increased storage and production capacity, and weighting decisions of transportation costs on facility location and assignment decisions. The results provide economic and managerial insights for public decision-makers, enhancing cost-effective disaster preparedness and network design. The case study shows that the proposed model optimizes inventory by eliminating excess quantities and favoring large warehouses, reducing costs through fewer locations. However, prioritizing rapid delivery results in a more decentralized network with smaller, costlier warehouses. The logistics network adapts to varying demand scenarios, strategically placing warehouses in densely populated regions with higher crisis risks.

运筹学物流网络设计应急管理设施选址