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Combining neural networks and Tabu search in a fast neural network simulation for combinatorial optimization.

机译:在快速神经网络仿真中将神经网络和禁忌搜索相结合,以进行组合优化。

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摘要

Since Hopfield and Tank proposed their neural model for the TSP, many researchers have tried to improve their model. While some of these researchers used operations research techniques to improve the solution quality of the model, these improvements still have been plagued by slow computer simulation. This dissertation presents an extension of Vaithyanathan's Tabu Neural Network (TANN) called the Improved Tabu Neural Network (ITANN). ITANN not only improves solution quality when compared to TANN and other HT-based neural models such as mean field annealing and the Boltzmann machine, but also improves simulation speed. The effectiveness of ITANN is illustrated by solving traveling salesman problems of up to 442 cities. The solution quality for ITANN is within a few percent of optimal for all traveling salesman problems tested. These results improve over the best-known HT-based neural network solutions including mean field annealing. In addition, longer term memory tabu search based on clustering all solutions is added to ITANN's structure. This longer term memory is designed to cluster all solutions to allow new areas of the search space with promising solution attributes to be searched. Finally, ITANN is extended to the multiple traveling salesman problem (MTSP) and simple plant location problem (SPLP) to illustrate the fast simulation method of ITANN on these problems.
机译:自从Hopfield和Tank为TSP提出他们的神经模型以来,许多研究人员就试图改进他们的模型。尽管其中一些研究人员使用运筹学技术来改善模型的求解质量,但这些改进仍然受到缓慢的计算机仿真的困扰。本文提出了Vaithyanathan的禁忌神经网络(TANN)的扩展,称为改进禁忌神经网络(ITANN)。与TANN和其他基于HT的神经模型(例如平均场退火和Boltzmann机器)相比,ITANN不仅可以提高解决方案质量,还可以提高仿真速度。解决多达442个城市的旅行商问题说明了ITANN的有效性。对于所有经过测试的旅行推销员问题,ITANN的解决方案质量都在最佳解决方案的百分之几之内。这些结果优于包括平均场退火在内的最著名的基于HT的神经网络解决方案。此外,基于对所有解决方案进行聚类的长期内存禁忌搜索已添加到ITANN的结构中。此长期内存旨在对所有解决方案进行聚类,以允许搜索空间充满希望的解决方案属性的新区域。最后,将ITANN扩展到多重旅行商问题(MTSP)和简单工厂位置问题(SPLP),以说明ITANN在这些问题上的快速仿真方法。

著录项

  • 作者

    Magent, Michael Andrew.;

  • 作者单位

    Lehigh University.;

  • 授予单位 Lehigh University.;
  • 学科 Operations Research.; Engineering Industrial.
  • 学位 Ph.D.
  • 年度 1996
  • 页码 153 p.
  • 总页数 153
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 运筹学;一般工业技术;
  • 关键词

  • 入库时间 2022-08-17 11:49:21

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