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A Cross-Entropy Based Population LearningAlgorithm for Discrete-Continuous Scheduling with Continuous Resource Discretisation

机译:带有连续资源离散化的离散连续调度的基于交叉熵的种群学习算法

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The problem of scheduling nonpreemtable tasks on parallel identical machines under constraint on discrete resource and requiring, additionally, renewable continuous resource to minimize the schedule length is considered in the paper. A continuous resource is divisible continuously and is allocated to tasks from given intervals in amounts unknown in advance. Task processing rate depends on the allocated amount of the continuous resource. The considered problem can be solved in two steps. The first step involves generating all possible task schedules and second - finding an optimal schedule among all schedules with optimal continuous resource allocation. To eliminate time consuming optimal continuous resource allocation, a problem Θ_Z with continuous resource discretisation is introduced. Because Θ_Z is NP-hard a population-learning algorithm (PLA2) is proposed to tackle the problem. PLA2 belongs to the class of the population-based methods. Experiment results proved that PLA2 excels known algorithms for solving the considered problem.
机译:本文考虑了在离散资源受限的情况下,在并行同一台机器上调度不可抢占任务的问题,此外,还需要可更新的连续资源以最大程度地减少调度时间。连续资源是连续可分割的,并以给定间隔按预先未知的量分配给任务。任务处理速度取决于连续资源的分配量。可以通过两个步骤解决所考虑的问题。第一步涉及生成所有可能的任务进度表,第二步-在具有最佳连续资源分配的所有进度表中找到最佳进度表。为了消除耗时的最优连续资源分配,引入了具有连续资源离散化的问题Θ_Z。由于Θ_Z是NP难解的,因此提出了种群学习算法(PLA2)来解决该问题。 PLA2属于基于人群的方法类别。实验结果证明,PLA2在解决所考虑问题方面优于已知算法。

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