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Ant colony optimization for solving combinatorial fuzzy Job Shop Scheduling Problems

机译:蚂蚁殖民地优化解决组合模糊作业商店调度问题

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In this paper, we present an ant colony optimization algorithm for solving the Job-shop Scheduling Problem (JSSP). Ant Colony Optimization (ACO) is a metaheuristic inspired by the foraging behavior of ants, which is also used to solve this combinatorial optimization problem. In JSSP ants move from one machine (nest) to another machine (food source) depending upon the job flow, thereby optimizing the sequence of jobs. The sequence of jobs is scheduled using Fuzzy logic and optimized using ACO. The makespan, completion time, makespan efficiency, algorithmic efficiency and the elapsed time for the ant colony algorithm are evaluated. Computational results of the optimization algorithm are evaluated by analyzing the two popular JSSP benchmark instances, FT10 and the ABZ10 problems and the simulation is carried out using the software, MATLAB.
机译:在本文中,我们介绍了一种解决作业商店调度问题的蚁群优化算法(JSEP)。蚁群优化(ACO)是一种由蚂蚁的觅食行为启发的成式型,其也用于解决这一组合优化问题。在JSSP蚂蚁中,根据作业流从一台机器(巢)移动到另一台机器(食物源),从而优化作业序列。使用模糊逻辑安排作业序列并使用ACO优化。评估了Makespan,完成时间,Mapespan效率,算法效率和蚁群算法的经过时间。通过分析两个流行的JSEP基准实例,FT10和ABZ10问题来评估优化算法的计算结果,并使用软件,MATLAB执行模拟。

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