Article ID Journal Published Year Pages File Type
382044 Expert Systems with Applications 2016 16 Pages PDF
Abstract

•We study the value of smoothing replenishment rules in seasonal supply chains.•Simulation modeling is adopted to compare the traditional and smoothing OUT.•The impact of Holt-Winters parameters are studied under both replenishment rules.•Smoothing improves the ordering and inventory stability in seasonal supply chains.•Increasing the smoothing level reduces the bullwhip effect and inventory variance.

A major cause of supply chain deficiencies is the bullwhip effect, which implies that demand variability amplifies as one moves upstream in supply chains. Smoothing inventory decision rules have been recognized as the most powerful approach to counteract the bullwhip effect. Although several studies have evaluated these smoothing rules with respect to several demand processes, focusing mainly on the smoothing order-up-to (OUT) replenishment rule, less attention has been devoted to investigate their effectiveness in seasonal supply chains. This research addresses this gap by investigating the impact of the smoothing OUT on the seasonal supply chain performances. A simulation study has been conducted to evaluate and compare the smoothing OUT with the traditional OUT (no smoothing), both integrated with the Holt-Winters (HW) forecasting method, in a four-echelon supply chain experiences seasonal demand modified by random variation. The results show that the smoothing OUT replenishment rule is superior to the traditional OUT, in terms of the bullwhip effect, inventory variance ratio and average fill rate, especially when the seasonal cycle is small. In addition, the sensitivity analysis reveals that employing the smoothing replenishment rules reduces the impact of the demand parameters and the poor selection of the forecasting parameters on the ordering and inventory stability. Therefore, seasonal supply chain managers are strongly recommended to adopt the smoothing replenishment rules. Further managerial implications have been derived from the results.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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