Title: Evaluation of segmentation techniques for inventory management in large scale multi-item inventory systems
Authors: Manuel D. Rossetti, Ashish V. Achlerkar
Addresses: Department of Industrial Engineering, University of Arkansas, 4207 Bell Engineering Center, Fayetteville, AR 72701, USA. ' MCA Solutions, Inc., 2 Penn Center Plaza (1500 JFK Blvd.), Suite 700, Philadelphia, PA 19102, USA
Abstract: This paper evaluates methodologies for the grouping of items and the setting of inventory policies in a large-scale multi-item inventory system. Conventional inventory segmentation techniques such as ABC analysis are often limited to using demand and cost when segmenting the inventory into groups for easier management. Two segmentation methodologies, (Multi-Item Group Policies (MIGP) and Grouped Multi-Item Individual Policies (GMIIP), that use statistical clustering were developed and compared to ABC analysis. An evaluation of these techniques via a set of experiments was performed. The analysis indicates that these techniques can improve inventory management for large-scale systems when compared to ABC analysis.
Keywords: multi-echelon inventories; inventory segmentation; clusters; inventory management; multi-item inventories; item grouping; inventory policies; ABC analysis; demand; costs; segmenting; group policies; MIGP; grouped multi-items; individual policies; GMIIP; statistical clustering; statistics; large-scale systems; logistics systems; logistics management.
DOI: 10.1504/IJLSM.2011.039598
International Journal of Logistics Systems and Management, 2011 Vol.8 No.4, pp.403 - 424
Published online: 06 May 2015 *
Full-text access for editors Full-text access for subscribers Purchase this article Comment on this article