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Iterative flattening search for resource constrained scheduling

机译:资源受限调度的迭代扁平化搜索

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Iterative flattening search (ifs) is a meta-heuristic strategy for solving multi-capacity scheduling problems. Given an initial solution, ifs iteratively applies: (1) a relaxation-step, in which a subset of scheduling decisions are randomly retracted from the current solution; and (2) a flattening-step, in which a new solution is incrementally recomputed from this partial schedule. Whenever a better solution is found, it is retained, and, upon termination, the best solution found during the search is returned. Prior research has shown ifs to be an effective and scalable heuristic procedure for minimizing schedule makespan in multi-capacity resource settings. In this paper we experimentally investigate the impact on ifs performance of algorithmic variants of the flattening step. The variants considered are distinguished by different computational requirements and correspondingly vary in the type and depth of search performed. The analysis is centered around the idea that given a time bound to the overall optimization procedure, the ifs optimization process is driven by two different and contrasting mechanisms: the random sampling performed by iteratively applying the “relaxation/flattening” cycle and the search conducted within the constituent flattening procedure. On one hand, one might expect that efficiency of the flattening process is key: the faster the flattening procedure, the greater the number of iterations (and number of sampled solutions) for a given time bound; and hence the greater the probability of finding better quality solutions. On the other hand, the use of more accurate (and more costly) flattening procedures can increase the probability of obtaining better quality solutions even if their greater computational cost reduces the number of ifs iterations. Comparative results on well-studied benchmark problems are presented that clarify this tradeoff with respect to previously proposed flattening strategies, identify qualitative guidelines for the design of effective ifs procedures, and suggest some new directions for future work in this area. Keywords Scheduling - Meta-heuristics - Iterative sampling
机译:迭代扁平化搜索(ifs)是一种用于解决多容量调度问题的元启发式策略。给定一个初始解决方案,ifs迭代地适用:(1)放松步骤,其中调度决策的子集从当前解决方案中随机撤回; (2)扁平化步骤,其中从该部分计划中逐步重新计算新的解决方案。每当找到更好的解决方案时,它都会保留,并在终止时返回在搜索过程中找到的最佳解决方案。先前的研究表明,ifs是一种有效的,可扩展的启发式过程,可以最大程度地减少多容量资源设置中的计划生成时间。在本文中,我们通过实验研究了平坦化步骤算法变体对ifs性能的影响。所考虑的变体通过不同的计算要求来区分,并且相应地在执行搜索的类型和深度方面也有所不同。该分析的中心思想是,给整个优化过程指定时间,ifs优化过程由两种不同的对比机制驱动:通过迭代应用“松弛/展平”周期执行的随机采样以及在其中进行的搜索组成展平过程。一方面,人们可能期望展平过程的效率是关键:展平过程越快,在给定的时间范围内迭代次数(以及采样解的数量)就越大;因此,找到更好质量的解决方案的可能性就更大。另一方面,使用更准确(且更昂贵)的展平过程可以增加获得更好质量的解决方案的可能性,即使其更高的计算成本减少了ifs迭代的次数。提出了有关经过充分研究的基准问题的比较结果,这些结果澄清了与先前提议的展平策略有关的权衡,确定了有效ifs程序设计的定性指南,并为该领域的未来工作提出了一些新的方向。关键字调度-元启发式-迭代抽样

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