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Local network connectivity optimization: an evaluation of heuristics applied to complex spatial networks a transportation case study and a spatial social network

机译:本地网络连接优化:对复杂的空间网络运输案例研究和空间社交网络的评估

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摘要

Optimizing global connectivity in spatial networks, either through rewiring or adding edges, can increase the flow of information and increase the resilience of the network to failures. Yet, rewiring is not feasible for systems with fixed edges and optimizing global connectivity may not result in optimal local connectivity in systems where that is wanted. We describe the local network connectivity optimization problem, where costly edges are added to a systems with an established and fixed edge network to increase connectivity to a specific location, such as in transportation and telecommunication systems. Solutions to this problem maximize the number of nodes within a given distance to a focal node in the network while they minimize the number and length of additional connections. We compare several heuristics applied to random networks, including two novel planar random networks that are useful for spatial network simulation research, a real-world transportation case study, and a set of real-world social network data. Across network types, significant variation between nodal characteristics and the optimal connections was observed. The characteristics along with the computational costs of the search for optimal solutions highlights the need of prescribing effective heuristics. We offer a novel formulation of the genetic algorithm, which outperforms existing techniques. We describe how this heuristic can be applied to other combinatorial and dynamic problems.
机译:通过重新挖掘或添加边缘,优化空间网络中的全局连接可以增加信息的流程并提高网络的恢复失败。然而,REWIRING对于具有固定边缘的系统来说是不可行的,并且优化全局连接可能不会导致所需系统中的最佳本地连接。我们描述了本地网络连接优化问题,其中昂贵的边缘被添加到具有建立和固定边缘网络的系统中,以增加与特定位置的连接,例如在运输和电信系统中。解决此问题的解决方案最大限度地提高到网络中的给定距离内的节点的数量,同时最小化附加连接的数量和长度。我们比较适用于随机网络的几个启发式,包括两种新的平面随机网络,可用于空间网络仿真研究,真实的运输案例研究以及一系列现实世界的社交网络数据。跨网络类型,观察到节点特征与最佳连接之间的显着变化。这些特性以及搜索最优解决方案的计算成本突出了规定有效启发式的需求。我们提供了一种新颖的遗传算法制定,其优于现有技术。我们描述了这种启发式如何适用于其他组合和动态问题。

著录项

  • 期刊名称 PeerJ Computer Science
  • 作者

    Jeremy Auerbach; Hyun Kim;

  • 作者单位
  • 年(卷),期 2021(-1),-1
  • 年度 2021
  • 页码 -1
  • 总页数 20
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:网络连接;运输;城市规划;遗传算法;街道连接;运输网络;网络优化;社交网络;空间网络;
  • 入库时间 2022-08-21 12:36:14

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