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Parallel robot scheduling to minimize mean tardiness with precedence constraints using a genetic algorithm

机译:并行机器人调度,使用遗传算法将具有优先约束的平均拖后时间降至最低

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Identical parallel robot scheduling problem for minimizing mean tardiness with precedence constraints is a very important scheduling problem. But, the solution of this problem becomes much difficult when there are a number of robots, jobs and precedence constraints. Genetic algorithm is an efficient tool in the solution of combinatorial optimization problems, as it is well known. In this study, a genetic algorithm is used to schedule jobs that have precedence constraints minimizing the mean tardiness on identical parallel robots. The solutions of problems, which have been taken in different scales, have been done using simulated annealing and genetic algorithm. In particular, genetic algorithm is found noteworthy successful in large-scale problems.
机译:相同的并行机器人调度问题是一个非常重要的调度问题,它使具有优先约束的平均拖后时间最小化。但是,当存在许多机器人,作业和优先约束时,解决此问题变得非常困难。众所周知,遗传算法是解决组合优化问题的有效工具。在这项研究中,遗传算法用于调度具有优先约束的作业,以最大程度地减少相同并行机器人上的平均延迟。已经使用模拟退火和遗传算法完成了不同规模的问题解决方案。特别地,发现遗传算法在大规模问题中非常成功。

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