Academic Lectures:Stochastic Joint Replenishment Problem with Limited Demand Distribution Information

Publisher:王逢凤Publish Date:2016-03-20Views:187

ReportTitle:Stochastic Joint Replenishment Problem with Limited Demand Distribution Information

Reporter(Institution):Yugang Li(University of Science and Technology of China, USTC)

Time:3:00.pm,22th March, 2016
Location:B-201, Building of Economics & Management, JiulonghuCampus
Abstract:
We  consider a stochastic joint replenishment problem (JRP) of coordinating  the replenishment of a sequence of products. The base stock level and  replenishment cycle of each product are determined to minimize the  average total cost rate resulting from placing orders, holding, and  backlogging products. Under the assumption that partial demand  distribution information is known, we study this problem in the paradigm  of robust optimization using a minimax approach. An attractive feature  of using the minimax approach is that the approach allows us to present a  complete structural characterization for the stochastic JRP. In  particular, we show that the minimax base stock level is a linear  function of the replenishment cycle. With this result, the stochastic  JRP can be converted into a deterministic one. Consequently, a  power-of-two heuristic is proposed to generate minimax replenishment  cycles with guaranteed 98% effectiveness. A case study based on an  actual supply chain setting is provided to examine the performance of  the minimax solutions. The numerical results are promising, and show  that using minimax solutions instead of optimal solutions under full  demand distribution information result in very small expense. Two  extensions of the stochastic JRP are also considered.