Title of article :
A Robust Modeling of Inventory Routing in Collaborative Reverse Supply Chains
Author/Authors :
Moubed, M Department of Industrial Engineering - Yazd University, Yazd , Zare Mehrjerdi, Y Department of Industrial Engineering - Yazd University, Yazd
Abstract :
We propose a robust model for optimizing collaborative reverse supply chains. The primary idea
is to develop a collaborative framework that can achieve the best solutions in an uncertain
environment. Firstly, we model the exact problem in the form of a mixed integer nonlinear program.
To consider uncertainty, robust optimization is employed that searches for an optimal solution with
nearly all possible deviations in mind. In order to allow the decision maker to vary the protection
level, we use the "budget of uncertainty" approach. To solve the NP-hard problem, we suggest a
hybrid heuristic algorithm combining dynamic programming, ant colony optimization and tabu
search. To assess the performance of the algorithm, two validity tests are made, first by comparing
with the previously solved problems and next by solving a sample problem with more than 900
combinations of parameters and comparing the results with the nominal case. In conclusion, the
results of different combinations and prices of robustness are compared and some directions for
future research are suggested.
Keywords :
Reverse supply chain , Tabu search , Dynamic programming , Ant colony optimization (ACO) , Robust optimization , Collaboration
Journal title :
Astroparticle Physics