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Robust linear optimization with recourse: Solution methods and other properties.

机译:求助的鲁棒线性优化:求解方法和其他属性。

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The unifying theme of this dissertation is robust optimization; the study of solving certain types of convex robust optimization problems and the study of bounds on the distance to ill-posedness for certain types of robust optimization problems. Robust optimization has recently emerged as a new modeling paradigm designed to address data uncertainty in mathematical programming problems by finding an optimal solution for the worst-case instances of unknown, but bounded, parameters. Parameters in practical problems are not known exactly for many reasons: measurement errors, round-off computational errors, even forecasting errors, which created a need for a robust approach. The advantages of robust optimization are two-fold: guaranteed feasible solutions against the considered data instances and not requiring the exact knowledge of the underlying probability distribution, which are limitations of chance-constraint and stochastic programming. Adjustable robust optimization, an extension of robust optimization, aims to solve mathematical programming problems where the data is uncertain and sets of decisions can be made at different points in time, thus producing solutions that are less conservative in nature than those produced by robust optimization.;This dissertation has two main contributions: presenting a cutting-plane method for solving convex adjustable robust optimization problems and providing preliminary results for determining the relationship between the conditioning of a robust linear program under structured transformations and the conditioning of the equivalent second-order cone program under structured perturbations. The proposed algorithm is based on Kelley's method and is discussed in two contexts: a general convex optimization problem and a robust linear optimization problem with recourse under right-hand side uncertainty. The proposed algorithm is then tested on two different robust linear optimization problems with recourse: a newsvendor problem with simple recourse and a production planning problem with general recourse, both under right-hand side uncertainty. Computational results and analyses are provided. Lastly, we provide bounds on the distance to infeasibility for a second-order cone program that is equivalent to a robust counterpart under ellipsoidal uncertainty in terms of quantities involving the data defining the ellipsoid in the robust counterpart.
机译:本文的统一主题是鲁棒优化。解决某些类型的凸型鲁棒优化问题的研究,以及研究某些类型的鲁棒优化问题的不适定距离的界限。健壮的优化最近已成为一种新的建模范例,旨在通过为未知但有界参数的最坏情况找到最佳解决方案来解决数学编程问题中的数据不确定性。实际问题中的参数由于许多原因而无法确切知道:测量误差,四舍五入的计算误差,甚至是预测误差,因此需要一种可靠的方法。鲁棒优化的优点有两方面:针对考虑的数据实例保证可行的解决方案,并且不需要对潜在概率分布的确切了解,这是机会约束和随机规划的局限性。可调式鲁棒优化是鲁棒优化的扩展,旨在解决数据不确定的数学编程问题,并且可以在不同的时间点制定决策,因此所产生的解决方案本质上不如鲁棒优化产生的保守。 ;本论文有两个主要贡献:提出一种解决凸可调整鲁棒优化问题的切平面方法,并为确定结构化变换下鲁棒线性程序的条件与等效二阶锥的条件之间的关系提供初步结果。程序在结构化扰动下。所提出的算法是基于Kelley方法的,并在两种情况下进行了讨论:一般的凸优化问题和在右侧不确定性下具有追索权的鲁棒线性优化问题。然后,在右侧不确定性的情况下,在两种不同的具有追索权的鲁棒线性优化问题上测试了所提出的算法:具有简单追索权的报童问题和具有一般追索权的生产计划问题。提供计算结果和分析。最后,我们为二阶锥程序的不可行距离提供了边界,该程序等效于在椭球不确定性下的鲁棒对应项,涉及定义鲁棒对应项中椭球数据的数量。

著录项

  • 作者

    Terry, Tara L.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Operations Research.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 107 p.
  • 总页数 107
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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