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http://dx.doi.org/10.12812/ksms.2013.15.1.217

A study on Inventory Policy (s, S) in the Supply Chain Management with Uncertain Demand and Lead Time  

Han, Jae-Hyun (School of Business, Kwangwoon University)
Jeong, Suk-Jae (School of Business, Kwangwoon University)
Publication Information
Journal of the Korea Safety Management & Science / v.15, no.1, 2013 , pp. 217-229 More about this Journal
Abstract
As customers' demands for diversified small-quantity products have been increased, there have been great efforts for a firm to respond to customers' demands flexibly and minimize the cost of inventory at the same time. To achieve that goal, in SCM perspective, many firms have tried to control the inventory efficiently. We present an mathematical model to determine the near optimal (s, S) policy of the supply chain, composed of multi suppliers, a warehouse and multi retailers. (s, S) policy is to order the quantity up to target inventory level when inventory level falls below the reorder point. But it is difficult to analyze inventory level because it is varied with stochastic demand of customers. To reflect stochastic demand of customers in our model, we do the analyses in the following order. First, the analysis of inventory in retailers is done at the mathematical model that we present. Then, the analysis of demand pattern in a warehouse is performed as the inventory of a warehouse is much effected by retailers' order. After that, the analysis of inventory in a warehouse is followed. Finally, the integrated mathematical model is presented. It is not easy to get the solution of the mathematical model, because it includes many stochastic factors. Thus, we get the solutions after the stochastic demand is approximated, then they are verified by the simulations.
Keywords
Inventory policy; Mathematical and simulation model; demand uncertainty; stochastic lead-time;
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