基于得分驱动的间歇需求库存控制模型

Score-driven models for inventory control of intermittent demand

Journal of the Operational Research Society · 2025
被引 0
ABS 3

中文导读

研究用得分驱动框架构建预测模型(如泊松、负二项及其变体)来管理间歇性需求库存,模拟显示其比传统方法更精准地实现服务与库存目标。

Abstract

Inventory control for intermittent data involves overseeing inventory levels of products that experience irregular demand. These items may remain unsold for extended periods and then experience a sudden surge in orders, making it difficult to predict future demand. To effectively manage such inventory, companies need specialised strategies that ensure they have enough stock to meet unpredictable spikes in demand while avoiding excess inventory that could lead to waste or storage problems. This study aims to evaluate the performance of forecasting models based on the score-driven (SD) framework as an alternative strategy for inventory control of intermittent demand. Several models were derived using the SD framework, including Poisson, negative binomial, and their hurdle and zero-inflated variants. The SD models were compared with several traditional forecasting methods for intermittent demand using synthetic data. A simulation model was developed to emulate the dynamics associated with inventory control through an order-up-to-level policy. The models were compared using well-known service and inventory level indicators. The proposed SD models consistently achieved closer service and target levels than traditional forecasting methods. Notably, the SD negative binomial model demonstrated the most robust performance across various simulated scenarios.

库存控制需求预测供应链管理运营管理