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Multi-criteria simulation optimization with stochastic coefficients: Methods, performance measures, and test bed problems.

机译:具有随机系数的多准则仿真优化:方法,性能指标和试验台问题。

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摘要

Three methods were developed to solve multi-criteria simulation optimization problems by adapting and extending genetic algorithms (GA), tabu search (TS), and lexicographic Nelder-Mead (LNM) methods. These modifications were accomplished largely by incorporating simulation and using goal programming. All three methods included a memory component to ensure that each solution was only simulated once per replication of the method. The three resulting methods were the GA simulation optimization (GA-SO) method, the TS simulation optimization (TS-SO) method, and the LNM simulation optimization (LNM-SO) method. These methods were designed to address multiple objectives, but they could also be used to handle single objective problems.; Currently, there are not sufficient performance measures to allow for the effective comparison of simulation optimization methods. To address this need, this research proposed four global performance measures to allow for the analysis and comparison of simulation optimization methods. These global performance measures examined the computational efficiency, the quality of solution, and a combination of the efficiency and quality. There were two measures used to evaluate the computational efficiency or the computational speed. The representative operation counts (ROC) were evaluated at two separate points: the number of calls to the simulation model required to complete the method (ROCCM) and the number of calls to the simulation model required to find the best solution (ROCBS). The quality of solution was evaluated based on the best solution found (BSF). The overall performance of a method was determined based on a combination of the computational speed and the quality of solution. A formula was determined for a performance measure called the time-quality estimator (TQE).; A test bed of problems was also developed to allow for current and future simulation optimization methods to be evaluated based on the same set of test problems. Five problems were developed representing five different domains. These problems included the inventory, logistics, PERT, production, and reliability domains.; In general, all five test bed problems, all three multi-criteria simulation optimization methods, and all four global performance measures performed well.
机译:通过改编和扩展遗传算法(GA),禁忌搜索(TS)和字典法Nelder-Mead(LNM)方法,开发了三种方法来解决多准则仿真优化问题。这些修改很大程度上是通过合并模拟并使用目标编程来完成的。所有这三种方法都包含一个内存组件,以确保每种方法的每个复制仅模拟一次。产生的三种方法是GA仿真优化(GA-SO)方法,TS仿真优化(TS-SO)方法和LNM仿真优化(LNM-SO)方法。这些方法旨在解决多个目标,但也可以用于处理单个目标问题。当前,没有足够的性能指标来允许对仿真优化方法进行有效比较。为了满足这一需求,本研究提出了四种全局性能指标,以允许对仿真优化方法进行分析和比较。这些全局性能指标检查了计算效率,解决方案的质量以及效率和质量的组合。有两种方法可用来评估计算效率或计算速度。在两个不同的点评估了代表性操作计数(ROC):完成方法所需的对仿真模型的调用次数(ROCCM)和寻找最佳解决方案所需的对仿真模型的调用次数(ROCBS)。根据找到的最佳解决方案(BSF)评估解决方案的质量。方法的整体性能是基于计算速度和解决方案质量的组合来确定的。确定了一种性能度量的公式,称为时间质量估算器(TQE)。还开发了一个问题测试台,以允许基于相同的测试问题集评估当前和将来的仿真优化方法。开发了代表五个不同领域的五个问题。这些问题包括库存,物流,PERT,生产和可靠性领域。通常,所有五个测试平台问题,所有三个多准则仿真优化方法以及所有四个全局性能度量均表现良好。

著录项

  • 作者

    Kuriger, Glenn W.;

  • 作者单位

    The University of Oklahoma.;

  • 授予单位 The University of Oklahoma.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 410 p.
  • 总页数 410
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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