...
首页> 外文期刊>INFORMS journal on computing >Simultaneous Generalized Hill-Climbing Algorithms for Addressing Sets of Discrete Optimization Problems
【24h】

Simultaneous Generalized Hill-Climbing Algorithms for Addressing Sets of Discrete Optimization Problems

机译:解决离散优化问题集的同时通用爬山算法

获取原文
获取原文并翻译 | 示例
           

摘要

This paper introduces simultaneous generalized hill-climbing (SGHC) algorithms as a framework for simultaneously addressing a set of related discrete optimization problems using heuristics. Many well-known heuristics can be embedded within the SGHC algorithm framework, including simulated annealing, pure local search, and threshold accepting (among others). SGHC algorithms probabilistically move between a set of related discrete optimization problems during their execution according to a problem probability mass function. When an SGHC algorithm moves between discrete optimization problems, information gained while optimizing the current problem is used to set the initial solution in the subsequent problem. The information used is determined by the practitioner for the particular set of problems under study. However, effective strategies are often apparent based on the problem description. SGHC algorithms are motivated by a discrete manufacturing process design optimization problem (that is used throughout the paper to illustrate the concepts needed to implement a SGHC algorithm). This paper discusses effective strategies for three examples of sets of related discrete optimization problems (a set of traveling salesman problems, a set of permutation flow shop problems, and a set of MAX 3-satisfiability problems). Computational results using the SGHC algorithm for randomly generated problems for two of these examples are presented. For comparison purposes, the associated generalized hill-climbing (GHC) algorithms are applied to the individual discrete optimization problems in the sets. These computational results suggest that near-optimal solutions can be reached more effectively and efficiently using SGHC algorithms.
机译:本文介绍了同步广义爬山(SGHC)算法作为框架,用于同时使用启发式方法解决一组相关的离散优化问题。可以将许多众所周知的启发式方法嵌入SGHC算法框架中,包括模拟退火,纯局部搜索和阈值接受(以及其他方法)。 SGHC算法根据问题概率质量函数在执行过程中概率地在一组相关的离散优化问题之间移动。当SGHC算法在离散优化问题之间移动时,在优化当前问题时获得的信息将用于设置后续问题的初始解。所使用的信息由从业者针对正在研究的特定问题确定。但是,基于问题描述,有效的策略通常很明显。 SGHC算法受离散制造过程设计优化问题(在整篇文章中用于说明实现SGHC算法所需的概念)的启发。本文讨论了三个相关离散优化问题示例的有效策略(一组旅行商问题,一组置换流水车间问题以及一组MAX 3-可满足性问题)。给出了使用SGHC算法计算出其中两个示例随机产生的问题的计算结果。为了进行比较,将关联的广义爬山(GHC)算法应用于集合中的各个离散优化问题。这些计算结果表明,使用SGHC算法可以更有效地获得接近最佳的解决方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号