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Parallel Robot Scheduling to Minimize Mean Tardiness with Unequal Release Date and Precedence Constraints Using a Hybrid Intelligent System

机译:使用混合智能系统的并行机器人调度可最大程度地降低发布时间和优先约束不均的平均时延

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This paper considers the problem of scheduling a given number of jobs on a specified number of identical parallel robots with unequal release dates and precedence constraints in order to minimize mean tardiness. This problem is strongly NP-hard. The author proposes a hybrid intelligent solution system, which uses Genetic Algorithms and Simulated Annealing (GA+SA). A genetic algorithm, as is well known, is an efficient tool for the solution of combinatorial optimization problems. Solutions for problems of different scales are found using genetic algorithms, simulated annealing and a Hybrid Intelligent Solution System (HISS). Computational results of empirical experiments show that the Hybrid Intelligent Solution System (HISS) is successful with regards to solution quality and computational time.
机译:本文考虑了在指定数量的相同并行机器人上调度给定数量的作业的问题,这些并行机器人的发布日期和优先级约束不相等,以最大程度地减少平均拖延时间。这个问题非常难解决。作者提出了一种混合智能解决方案系统,该系统使用遗传算法和模拟退火(GA + SA)。众所周知,遗传算法是解决组合优化问题的有效工具。使用遗传算法,模拟退火和混合智能解决方案系统(HISS),可以找到不同规模问题的解决方案。经验实验的计算结果表明,在解决方案质量和计算时间方面,混合智能解决方案系统(HISS)是成功的。

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