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Global optimization of monotonic programs: Applications in polynomial and stochastic programming.

机译:单调程序的全局优化:在多项式和随机程序设计中的应用。

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摘要

Monotonic optimization consists of minimizing or maximizing a monotonic objective function over a set of constraints defined by monotonic functions. Many optimization problems in economics and engineering often have monotonicity while lacking other useful properties, such as convexity. This thesis is concerned with the development and application of global optimization algorithms for monotonic optimization problems.; First, we propose enhancements to an existing outer-approximation algorithm---called the Polyblock Algorithm---for monotonic optimization problems. The enhancements are shown to significantly improve the computational performance of the algorithm while retaining the convergence properties. Next, we develop a generic branch-and-bound algorithm for monotonic optimization problems. A computational study is carried out for comparing the performance of the Polyblock Algorithm and variants of the proposed branch-and-bound scheme on a family of separable polynomial programming problems. Finally, we study an important class of monotonic optimization problems---probabilistically constrained linear programs. We develop a branch-and-bound algorithm that searches for a global solution to the problem. The basic algorithm is enhanced by domain reduction and cutting plane strategies to reduce the size of the partitions and hence tighten bounds. The proposed branch-reduce-cut algorithm exploits the monotonicity properties inherent in the problem, and requires the solution of only linear programming subproblems. We provide convergence proofs for the algorithm. Some illustrative numerical results involving problems with discrete distributions are presented.
机译:单调优化包括在由单调函数定义的一组约束上最小化或最大化单调目标函数。经济学和工程学中的许多优化问题通常具有单调性,而缺乏其他有用的特性,例如凸性。本文涉及用于单调优化问题的全局优化算法的开发和应用。首先,我们提出了针对单调优化问题的现有外部逼近算法(称为多块算法)的增强功能。这些增强功能可以显着提高算法的计算性能,同时保留收敛性。接下来,我们针对单调优化问题开发通用的分支定界算法。进行了计算研究,以比较Polyblock算法的性能和所提出的分支定界方案的变体在一系列可分多项式规划问题上的性能。最后,我们研究了一类重要的单调优化问题-概率约束线性程序。我们开发了一种分支定界算法,以寻找针对该问题的全局解决方案。通过域缩减和切割平面策略来增强基本算法,以减小分区的大小,从而收紧边界。提出的分支减少剪切算法利用了问题固有的单调性,并且仅需要线性规划子问题的解决方案。我们为算法提供了收敛证明。提出了一些涉及离散分布问题的说明性数值结果。

著录项

  • 作者

    Cheon, Myun-Seok.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Industrial.; Computer Science.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 104 p.
  • 总页数 104
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;自动化技术、计算机技术;
  • 关键词

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