基于目标导向鲁棒优化的库存管理

Inventory Management Based on Target-Oriented Robust Optimization

Management Science · 2016
被引 49
人大 A+FT50UTD24ABS 4*

中文导读

提出一种目标导向鲁棒优化方法,解决多产品多周期库存管理问题,在仅用有限需求信息下,通过最大化不确定性集大小使总成本低于预设目标,平衡期望成本与方差,数值实验表明其性能优于传统方法。

Abstract

We propose a target-oriented robust optimization approach to solve a multiproduct, multiperiod inventory management problem subject to ordering capacity constraints. We assume the demand for each product in each period is characterized by an uncertainty set that depends only on a reference value and the bounds of the demand. Our goal is to find an ordering policy that maximizes the sizes of all the uncertainty sets such that all demand realizations from the sets will result in a total cost lower than a prespecified cost target. We prove that a static decision rule is optimal for an approximate formulation of the problem, which significantly reduces the computation burden. By tuning the cost target, the resultant policy can achieve a balance between the expected cost and the associated cost variance. Numerical experiments suggest that although only limited demand information is used, the proposed approach performs comparably to traditional methods based on dynamic programming and stochastic programming. More importantly, our approach significantly outperforms the traditional methods if the latter assume inaccurate demand distributions. We demonstrate the applicability of our approach through two case studies from different industries. This paper was accepted by Yinyu Ye, optimization.

库存管理目标导向鲁棒优化不确定性集静态决策规则