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The transit network design problem: An AI-based approach.

机译:公交网络设计问题:一种基于AI的方法。

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摘要

Standard Operations Research optimization approaches have not been successful in the solution of practical public transport network design problems. The problem is combinatorial in nature and presents several sources of non-linearities and non-convexities which preclude guaranteed optimal solution algorithms. We define the above problem, present a typical mathematical formulation of it, and review the past approaches. A solution methodology that relies on AI heuristics and search techniques in addition to domain-specific human knowledge and expertise is presented. Such solution employs three major components: (1) an AI-based route generation design algorithm, (2) an analysis procedure that generates all necessary performance measures and descriptors, particularly on the demand side, and (3) an AI-based route improvement algorithm that suggests modifications to the already generated sets of routes. The route generation algorithm is a design algorithm that is: (1) heavily guided by the transit demand matrix, (2) allows the designer's knowledge to be implemented so as to reduce the search space, and (3) generates different sets of routes corresponding to different tradeoffs between user costs and operator resources and performance measures reflecting the quality of service of the transit network. We test the solution approach on an existing benchmark problem as well as data derived from the transit system of the city of Austin, Texas, U.S.A.
机译:在解决实际的公共交通网络设计问题时,标准运营研究的优化方法尚未成功。这个问题本质上是组合的,并且提出了非线性和非凸性的几种来源,这些来源排除了有保证的最优解算法。我们定义了上述问题,提出了典型的数学公式,并回顾了过去的方法。提出了一种解决方法,该方法除了依赖特定领域的人类知识和专业知识外,还依赖于AI启发式技术和搜索技术。这种解决方案采用三个主要组成部分:(1)基于AI的路线生成设计算法;(2)生成所有必要的性能度量和描述符(特别是在需求方面)的分析过程;以及(3)基于AI的路线改进建议修改已生成的路由集的算法。路线生成算法是一种设计算法,它是:(1)在运输需求矩阵的严格指导下;(2)允许实现设计者的知识以减少搜索空间;(3)生成与之对应的不同路线集用户成本与运营商资源之间的权衡取舍,以及反映传输网络服务质量的性能指标。我们针对现有的基准问题以及来自美国德克萨斯州奥斯汀市的公交系统的数据测试了解决方案方法。

著录项

  • 作者

    Baaj, Muhammad Hadi.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Engineering Civil.;Urban and Regional Planning.;Artificial Intelligence.;Transportation.
  • 学位 Ph.D.
  • 年度 1990
  • 页码 246 p.
  • 总页数 246
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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