Meta-heuristic algorithms to solve the problem of terminal facilities on a real scale
الموضوعات :Mehdi Fazli 1 , Farzin Modarres khiabani 2 , Behrooz Daneshian 3
1 - Department of Mathematics, Islamic Azad University, Tabriz Branch, Tabriz, Iran
2 - Department of Mathematics, Islamic Azad University, Tabriz Branch, Tabriz, Iran
3 - Department of Mathematics, Islamic Azad University, South Tehran Branch , Tehran, Iran
الکلمات المفتاحية: Simulated Annealing, Tabu search, Terminal facility layout problem, Migrating birds optimization, Optimization problem,
ملخص المقالة :
a b s t r a c tOur main goal in this article is to arrange terminal facilities, place different departments, stores and units in predefined areas in such a way as to minimize the cost of moving customers and transportation staff. Especially in large-scale terminals with several different transport segments, it is important for terminal performance to be close to interactive units. Today, meta-heuristic methods are often used to solve optimization problems such as facility design. in this study; The design of the various units, stores, and rooms of a large-scale real terminal was organized using three meta-heuristic algorithms: Migratory Bird Optimization (MBO), Taboo Search (TS), and Simulated Simulation (SA). The results were compared with the existing terminal design. As a result, MBO and SA metaheuristic algorithms have provided the best results, which improve the efficiency of the existing terminal design to an acceptable level.
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