Author/Authors :
Foroozesh N نويسنده School of Industrial Engineering, College of Engineering, University of Tehran, Tehran, Iran Foroozesh N , moghaddam Reza Tavakkoli نويسنده School of Industrial Engineering, College of Engineering, University of Tehran, Tehran, Iran moghaddam Reza Tavakkoli , Mousavi S.M نويسنده Department of Industrial Engineering, Faculty of Engineering, Shahed University, Tehran, Iran Mousavi S.M
Abstract :
Supplier selection is one the main concern in the context of supply chain networks
by considering their global and competitive features. Resilient supplier selection
as generally new idea has not been addressed properly in the literature under
uncertain conditions. Therefore, in this paper, a new multi-criteria group
decision-making (MCGDM) model is introduced with interval-valued fuzzy sets
(IVFSs) and fuzzy possibilistic statistical concepts. Then, a new weighting
method for the supply chain experts or decision makers (DMs) is presented under
uncertainty in supply chain networks. Additionally, a modified version of an
entropy method is extended for computing the weight of each assessment
criterion. Possibilistic mean, standard deviation, and the cube-root of skewness
are proposed within the MCGDM. In addition, a new fuzzy ranking method based
on relative-closeness coefficients are proposed to rank the resilient supplier
candidates. Finally, a resilient supplier selection problem is solved by the
proposed group decision model to demonstrate its validity and is compared with
a recent study.