Myopic Analysis for Multi-Echelon Inventory Systems with Batch Ordering and Nonstationary/Time-Correlated Demands

Yi Yang, Yimin Yu, Tingliang Huang

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

12 Citations (Scopus)

Abstract

We provide an exact myopic analysis for an N-stage serial inventory system with batch ordering, linear ordering costs, and nonstationary demands under a finite planning horizon. We characterize the optimality conditions of the myopic nested batching newsvendor (NBN) policy and the myopic independent batching newsvendor (IBN) policy, which is a single-stage approximation. We show that echelon reorder levels under the NBN policy are upper bounds of the counterparts under both the optimal policy and the IBN policy. In particular, we find that the IBN policy has bounded deviations from the optimal policy. We further extend our results to systems with martingale model of forecast evolution (MMFE) and advance demand information. Moreover, we provide a recursive computing procedure and optimality conditions for both heuristics which dramatically reduces computational complexity. We also find that the NBN problem under the MMFE faced by one stage has one more dimension for the forecast demand than the one faced by its downstream stage and that the NBN policy is optimal for systems with advance demand information and stationary problem data. Numerical studies demonstrate that the IBN policy outperforms on average the NBN policy over all tested instances when their optimality conditions are violated.
Original languageEnglish
Pages (from-to)31-46
JournalProduction and Operations Management
Volume26
Issue number1
Online published20 Jul 2016
DOIs
Publication statusPublished - Jan 2017

Research Keywords

  • forecasting
  • MMFE
  • multiechelon
  • myopic policies
  • serial system

RGC Funding Information

  • RGC-funded

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