在复杂供应网络中使用自适应极限过程图感知异常资源流

Sensing Abnormal Resource Flow Using Adaptive Limit Process Charts in a Complex Supply Network*

DECISION SCIENCES · 2015
被引 8
人大 AABS 3

中文导读

提出一个结合时间序列建模与过程图的框架,用于监测上游供应网络中的异常资源流,并以美国第二大食品银行四年的数据验证其有效性,帮助管理者及时调整库存策略。

Abstract

ABSTRACT Supply networks are becoming increasingly complex with multiple overlapping relationships between firms that may span across industries. Consequently, inventory management is becoming more difficult as managers have to cope with variability in the supply flows that originate from different parts of the network. Managers that quickly sense abnormal flows may intervene and adapt their inventory policies in response to system changes. In this article, we present a framework for sensing abnormal flows originating within the upstream supply network of a focal organization. Our framework combines time series modeling with process charts to identify abnormal flow patterns in the incoming supply streams. It is a flexible framework that uses off‐the‐shelf technology to provide managers with a process that can be employed for monitoring multiple individual or aggregated data streams originating within any complex system such as complex adaptive supply networks. We illustrate our framework on four years of longitudinal supply data from the second largest food bank in the United States. We identify multiple instances of abnormal supply flows and validate our results through rigorous inventory analysis as well as field‐based expert interviews. We discuss the implications of our findings for inventory management in complex supply networks, both from academic and practitioner points of view.

供应链管理库存管理运营管理复杂网络