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Algorithmic and mathematical programming approaches to scheduling problems with energy-based objectives.

机译:用算法和数学编程方法来计划基于能量目标的问题。

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摘要

This dissertation studies scheduling as a means to address the increasing concerns related to energy consumption and electricity cost in manufacturing enterprises. Two classes of problems are considered in this dissertation: (i) minimizing the makespan in a permutation flow shop with peak power consumption constraints (the PFSPP problem for short) and (ii) minimizing the total electricity cost on a single machine under time-of-use tariffs (the SMSEC problem for short). We incorporate the technology of dynamic speed scaling and the variable pricing of electricity into these scheduling problems to improve energy efficiency in manufacturing. The challenge in the PFSPP problem is to keep track of which jobs are running concurrently at any time so that the peak power consumption can be properly taken into account. The challenge in the SMSEC problem is to keep track of the electricity prices at which the jobs are processed so that the total electricity cost can be properly computed.;For the PFSPP problem, we consider both mathematical programming and combinatorial approaches. For the case of discrete speeds and unlimited intermediate storage, we propose two mixed integer programs and test their computational performance on instances arising from the manufacturing of cast iron plates. We also examine the PFSPP problem with two machines and zero intermediate storage, and investigate the structural properties of optimal schedules in this setting.;For the SMSEC problem, we consider both uniform-speed and speed-scalable machine environments. For the uniform-speed case, we prove that this problem is strongly NP-hard, and in fact inapproximable within a constant factor, unless P = NP. In addition, we propose an exact polynomial-time algorithm for this problem when all the jobs have the same work volume and the electricity prices follow a so-called pyramidal structure. For the speed-scalable case, in which jobs can be processed at an arbitrary speed with a trade-off between speed and energy consumption, we show that this problem is strongly NP-hard and that there is no polynomial time approximation scheme for this problem. We also present different approximation algorithms for this case and test the computational performance of these approximation algorithms on randomly generated instances.
机译:本文研究调度作为解决制造企业能源消耗和电力成本日益增加的关注的一种手段。本文考虑了两类问题:(i)最小化具有峰值功耗约束的置换流水车间的制造跨度(简称PFSPP问题);(ii)最小化单机在时间限制下的总电力成本使用关税(简称SMSEC问题)。我们将动态速度缩放和电力可变定价技术纳入这些调度问题中,以提高制造中的能源效率。 PFSPP问题中的挑战是随时跟踪哪些作业正在同时运行,以便可以适当考虑峰值功耗。 SMSEC问题中的挑战是跟踪处理作业的电价,以便可以正确计算总电费。对于PFSPP问题,我们同时考虑了数学编程和组合方法。对于离散速度和无限中间存储的情况,我们提出了两个混合整数程序,并在铸铁板制造产生的实例上测试了它们的计算性能。我们还研究了具有两台机器和零中间存储的PFSPP问题,并研究了在这种情况下最佳计划的结构特性。对于SMSEC问题,我们同时考虑了匀速和速度可伸缩的机器环境。对于匀速情况,我们证明此问题对NP的影响很大,并且除非P = NP,否则在恒定因子内实际上是不可近似的。另外,当所有工作具有相同的工作量并且电价遵循所谓的金字塔结构时,我们针对该问题提出了精确的多项式时间算法。对于速度可伸缩的情况,其中可以以任意速度处理作业,但要在速度和能耗之间进行权衡,我们证明此问题是NP难问题,并且没有多项式时间逼近方案。我们还针对这种情况提出了不同的近似算法,并在随机生成的实例上测试了这些近似算法的计算性能。

著录项

  • 作者

    Fang, Kan.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Operations Research.;Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 126 p.
  • 总页数 126
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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