Article ID Journal Published Year Pages File Type
480274 European Journal of Operational Research 2011 9 Pages PDF
Abstract

This paper studies the price markdown scheme in a supply chain that consists of a supplier, a contract manufacturer (CM), and a buyer (retailer). The buyer subcontracts the production of the final product to the CM. The CM buys the components from the supplier and charges the buyer a service fee for the final product produced. The price markdown is made possible by the supplier with the development of new manufacturing technologies that reduce the production cost for the sourced component. Consequently, the buyer adjusts the retail price in order to possibly stimulate stronger demand that may benefit both the supplier and the buyer. Under this scenario, we identify the optimal discount pricing strategies, capacity reservation, and the stocking policies for the supplier and the buyer. We also investigate the optimal inventory decision for the CM to cope with the price discount by considering both demand and delivery uncertainties. Our results suggest that higher production cost accelerates the effects of higher price sensitivity on lowering the optimal capacity and stocking policies in the supply chain. The effect of mean demand error on the optimal prices is relatively marginal compared with that from price sensitivity. We also found that increasing the standard deviation of the random demand does not necessarily increase the stocking level as one would predict. The results show that delivery uncertainty plays an important role in the inventory carried beyond the price break. We discuss potential extensions for future research.

► Price sensitivity affects the optimal prices more than the mean demand error does. ► Optimal prices decrease as price sensitivity increases. ► Higher production cost and price sensitivity lowers the ending inventory needed. ► Higher demand uncertainty does not necessarily increase the ending inventory. ► Delivery uncertainty plays an important role in the ending inventory decision.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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