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A novel dynamic genetic algorithm-based method for vehicle scheduling in cross docking systems with frequent unloading operation
Affiliation:1. School of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran;2. School of Industrial Engineering and Center of Excellence for Intelligence Based Experimental Mechanics, College of Engineering, University of Tehran, Iran;3. Department of Industrial Engineering, Faculty of Engineering, University of Kharazmi, Karaj, Iran;1. Departament of Production Engineering, Universidade Federal de Minas Gerais, Brazil;2. Departament of Production Engineering, Universidade Federal de Viçosa, Brazil
Abstract:An important factor for efficiently managing the supply chain is to efficiently control the physical flow of the supply chain. For this purpose, many companies try to use efficient methods to increase customer satisfaction and reduce costs. Cross docking is a good method to reduce the warehouse space requirements, inventory management costs, and turnaround times for customer orders. This paper proposes a novel dynamic genetic algorithm-based method for scheduling vehicles in cross docking systems such that the total operation time is minimized. In this paper, it is assumed that a temporary storage is placed at the shipping dock and inbound vehicles are allowed to repeatedly enter and leave the dock to unload their products. In the proposed method of this paper two different kinds of chromosome for inbound and outbound trucks are proposed. In addition, some algorithms are proposed including initialization, operational time calculation, crossover and mutation for inbound and outbound trucks, independently. Moreover a dynamic approach is proposed for performing crossover and mutation operation in genetic algorithm. In order to evaluate the performance of the proposed algorithm of this paper, various examples are provided and analyzed. The computational results reveal that the proposed algorithm of this paper performs better than two well-known works of literature in providing solutions with shorter operation time.
Keywords:Supply chain management  Cross docking  Metaheuristic  Genetic algorithm  Scheduling  Sequencing
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