Research Info

Home /A novel genetic algorithm for ...
Title A novel genetic algorithm for solving production and transportation scheduling in a two-stage supply chain
Type JournalPaper
Keywords Scheduling, Supply, Transportation, Genetic algorithm, Makespan
Abstract This study considers the scheduling of products and vehicles in a two-stage supply chain environment. The first stage contains m suppliers with different production speeds, while the second stage is composed of l vehicles, each of which may have a different speed and different transport capacity. In addition, it is assumed that the various output products occupy different percentages of each vehicle’s capacity. We model the situation as a mixed integer programming problem, and, to solve it, we propose a gendered genetic algorithm (GGA) that considers two different chromosomes with non-equivalent structures. Our experimental results show that GGA offers better performance than standard genetic algorithms that feature a unique chromosomal structure. In addition, we compare the GGA performance with that of the most similar problem reported to date in the literature as proposed by Chang and Lee [Chang, Y., & Lee, C. (2004) Machine scheduling with job delivery coordination. European Journal of Operational Research, 158(2) 470-487]. The experimental results from our comparisons illustrate the promising potential of the new GGA approach.
Researchers Sayyed hesamoddin zegordi (First Researcher), Mohamad Ali Beheshti Nia (Third Researcher), Isa Nakhai Kamalabadi (Second Researcher)