Title of article :
A multi-objective robust optimization model for location-allocation decisions in two-stage supply chain network and solving it with non-dominated sorting ant colony optimization
Author/Authors :
Bagherinejad، J نويسنده , , Dehghani ، M نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی E2 سال 2015
Pages :
2361
From page :
260
To page :
2620
Abstract :
Abstract. This study proposes a new, robust multi-objective model for capacitated multivehicle allocation of customers to potential Distribution Centers (DCs) under uncertain environment. Uncertainty is de ned by discrete scenarios on demands where occurrence probability of each scenario is known. The optimization objectives are to minimize transit time and total cost, including opening cost, assumed for opening potential DCs and shipping cost from DCs to the customers, where considering di erent types of vehicles leads to a more realistic model and causes more con ict in these two objectives. A swarm intelligencebased algorithm named Non-dominated Sorting Ant Colony Optimization (NSACO) is used as the optimization tool. The proposed methodology is based on a new variant of Ant Colony Optimization (ACO) customized in multi-objective optimization problem of this research. For ensuring the authenticity of the proposed method, the computational results are compared with those obtained by NSGA-II. Results show the advantages and the e ectiveness of the used method in reporting the optimal Pareto front of the proposed model. Moreover, the optimal solutions of the robust optimization model are insensitive to the disturbance of parameters under di erent scenarios, thus the risk of decision can be e ectively reduced.
Keywords :
location-allocation , Optimization , uncertainty , NSGA-II , Robust multi objective , Non-dominated sorting ant colony optimization , Multi-vehicle
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Serial Year :
2015
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Record number :
2404687
Link To Document :
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