Ordering policies for multi-item inventory systems with correlated demands
研究了多物品定期盘点库存系统在需求相关下的最优订购策略,使用向量自回归移动平均模型捕捉相关性,实验显示成本可降低25%至65%,并通过免疫球蛋白案例验证。
• - A multi-item inventory policy is proposed for correlated demands under uncertainty. • - Vector autoregressive moving average model is used to capture demand correlations. • - Closed-form order-up-to levels are derived for multiple periods and separable costs. • - The approach is validated through controlled simulations and empirical evidence. • - A case study for immunoglobulin products demonstrates significant cost savings. We investigate optimal ordering policies for a multi-item periodic-review inventory system, considering demand correlations and historical data for the products involved. We extend inventory models by transitioning from an autoregressive moving average (ARMA) demand process to a vector autoregressive moving average (VARMA) framework, explicitly characterizing optimal ordering policies when there is both autocorrelation and cross-correlation among multiple items. Through experimental studies, we evaluate inventory costs and cost improvements compared to multi-item ordering policies where demands are assumed to be independent under different degrees of correlation, noise levels, and training data window sizes. The results show that the framework effectively reduces inventory costs, particularly for products with moderate to high dependence. Cost reductions can reach up to 25% for moderate and up to 65% for strong dependence. We also apply our findings to real-world data to optimize inventory policies for immunoglobulin sub-products, intravenous (IVIg) and subcutaneous (SCIg), demonstrating cost improvements using the proposed policy. Furthermore, an empirical study analyzing a large sales dataset reinforces the applicability of our approach.