Article ID: | iaor201527504 |
Volume: | 88 |
Issue: | 4 |
Start Page Number: | 166 |
End Page Number: | 180 |
Publication Date: | Oct 2015 |
Journal: | Computers & Industrial Engineering |
Authors: | Roy Tapan Kumar, Jana Dipak Kumar, Chakraborty Dipankar |
Keywords: | combinatorial optimization, simulation, production, inventory, retailing, heuristics: genetic algorithms |
In this paper, we have investigated multi‐item integrated production‐inventory models of supplier and retailer with a constant rate of deterioration under stock dependent demand. Here we have considered supplier’s production cost as nonlinear function depending on production rate, retailers procurement cost exponentially depends on the credit period and suppliers transportation cost as a non‐linear function of the amount of quantity purchased by the retailer. The models are optimized to get the value of the credit periods and total time of the supply chain cycle under the space and budget constraints. The models are also formulated under fuzzy random and bifuzzy environments. The ordering cost, procurement cost, selling price of retailer’s and holding costs, production cost, transportation cost, setup cost of the supplier’s and the total storage area and budget are taken in imprecise environments. To show the validity of the proposed models, few sensitivity analyses are also presented under the different rate of deterioration. The models are also discussed in non deteriorating items as a special case of the deteriorating items. The deterministic optimization models are formulated for minimizing the entire monetary value of the supply chain and solved using genetic algorithm (GA). A case study has been performed to illustrate those models numerically.