Title of article :
A Non-dominated Sorting Ant Colony Optimization Algorithm Approach to the Bi-objective Multi-vehicle Allocation of Customers to Distribution Centers
Author/Authors :
Bagherinejad Jafar نويسنده Faculty member, Department of Engineering, Alzahra University,Tehran, Iran , Dehghani Mina نويسنده MD, Resident in Psychiatry, School of Medicine, Shiraz
University of Medical Sciences, Shiraz, Iran
Abstract :
This paper proposes a mathematical model as the bi-objective capacitated multi-vehicle allocation of customers to distribution centers.An
evolutionary algorithmnamednon-dominated sorting ant colony optimization (NSACO) is used as the optimization tool for solving this
problem. The proposed methodology is based on a new variant of ant colony optimization (ACO) specialized in multi-objective
optimization problem. To help the decision maker to choose the best compromise solution from the Pareto front, the fuzzy-based
mechanism is employed. For ensuring the robustness of the proposed method and giving a practical sense of this study, the computational
results are compared with those obtained by NSGA-II. Results show that both NSACO and NSGA-II algorithms can yield an acceptable
number of non-dominated solutions.In addition, the results show that while the distribution of solutions in the trade-off surface of both
NSACO and NSGA-II algorithms do not differ significantly, NSACO algorithm is more efficient than NSGA-II with regard to optimality,
convergence and theCPU time.Also, the results in some small cases are compared with those obtained by LP-metric method. The error
percentages of objective functions in comparison to the LP-metric method are less than 2%. Furthermore, it can be seen that with
increasing size of the problems, while the time of problem solving increases exponentially by using the LP-metric method, the running time
of NSACO and NSGA-II are more stable.
Journal title :
Astroparticle Physics