具有鲁棒周期仿射策略的可持续库存管理及其在医疗供应链中的应用

Sustainable Inventory with Robust Periodic-Affine Policies and Application to Medical Supply Chains

Management Science · 2019
被引 3
人大 A+FT50UTD24ABS 4*

中文导读

提出一种新的周期仿射策略,无需需求分布假设即可管理大规模新闻供应商网络,在印度药房数据上验证了其可持续性和计算优势。

Abstract

We introduce a new class of adaptive policies called periodic-affine policies, which allows a decision maker to optimally manage and control large-scale newsvendor networks in the presence of uncertain demand without distributional assumptions. These policies are data-driven and model many features of the demand such as correlation and remain robust to parameter misspecification. We present a model that can be generalized to multiproduct settings and extended to multiperiod problems. This is accomplished by modeling the uncertain demand via sets. In this way, it offers a natural framework to study competing policies such as base-stock, affine, and approximative approaches with respect to their profit, sensitivity to parameters and assumptions, and computational scalability. We show that the periodic-affine policies are sustainable—that is, time consistent—because they warrant optimality both within subperiods and over the entire planning horizon. This approach is tractable and free of distributional assumptions, and, hence, suited for real-world applications. We provide efficient algorithms to obtain the optimal periodic-affine policies and demonstrate their advantages on the sales data from one of India’s largest pharmacy retailers. This paper was accepted by Yinyu Ye, optimization.

周期性仿射策略报童网络鲁棒优化医疗供应链