Publication: Integrating Vehicle Routing With Cross Dock In Supply Chain
Program
Authors
Farshchi, Farshad
Jafari, Davood
Moghaddam, Shahab Sepehri
Advisor
Date
Language
Type
Journal Title
Journal ISSN
Volume Title
Abstract
This article provides a unified mathematical model of cross dock with vehicle routing in supply chain
and the model is using tabu search. This study, in terms of purpose is applied and the method of data
collection is descriptive. In this study, data collection of theses and articles are extracted, including
location coordinates of cross dock, suppliers and customers and demand of supplier and customer for
each pair. In order to achieve the goal of a mathematical model for the problem to minimize the total
distance traveled objectives and maximize customer demand has been answered were presented. Since the
problem is NP-Hard, we need to solve the model through methods such as Tabu Search meta-heuristic
such as lead; this was done by software Matlab. To realize the accuracy and efficiency of the model,
problems with small size (less than 200 seconds solution time) and medium size (solution time between
200 and 1000 seconds) was designed. By solving these problems became clear that the model is the
necessary performance. Software issues exact solution able to solve them in less than 200 seconds was
among the small issues have been Classification (runtime ≤ 200). According to resolve the issues, growth
in complexity and time is required by the software solution to boost car and customers. For an average
size of software issues with the exact solution used in this study GAMS IDE / Cplex's ability to solve
problems within 1,000 seconds show. The results also showed a considerable scatter in the time needed to
resolve these issues so that the time is variable between 289.8 and 998.2 seconds and average amounts to
579.3 seconds. Then Algorithm for consolidated performance in comparison with results from software
GAMS IDE /Cplex compared with each other to solve small and medium investigated. According to the
results obtained in solving the problems of small and medium-sized meta-heuristic has been shown to
have an efficient performance.