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Location-based Services in Vehicular Networks.

机译:车载网络中基于位置的服务。

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摘要

Location-based services have been identified as a promising communication paradigm in highly mobile and dynamic vehicular networks. However, existing mobile ad hoc networking cannot be directly applied to vehicular networking due to differences in traffic conditions, mobility models and network topologies. On the other hand, hybrid architectures in vehicular networks, with ad hoc-based inter-vehicle and infrastructure-based vehicle-to-roadside communications, can facilitate robust and efficient communication services using geographical information. In this dissertation, we focus on the design and evaluation of location-based protocols and algorithms to improve scalability, efficiency, and resiliency in hybrid vehicular networks.;We first provide a cross-layer self-localization algorithm for moving vehicles. A new ultra-wide band (UWB) coding method, based on an orthogonal variable spreading factor and time hopping, is proposed for minimum interference during ranging. Then, a UWB based non-metric multidimensional scaling derives accurate and robust self-localization results. In addition, we employ an online compressive sensing scheme to count and localize sparse roadside units (RSUs) for war-driving applications. Online war-driving records received signal strength (RSS) values at runtime, and can recover the number and location of RSUs immediately based on far fewer noisy RSS readings.;After obtaining the location information of vehicles and RSUs, we address multiple channel scheduling in hybrid vehicular networks. We use the natural beauty of Latin squares to achieve fair and deterministic scheduling in micro-time scale for channel access and macro-time scale for channel assignment. A grid based scalable scheme is proposed to map Latin squares to grids for dynamic single-radio multi-channel scheduling. Another interference graph based scheme uses nodal location and social centrality to reflect the social behavior patterns related to access in vehicular networks, and then form adaptive clusters for multi-radio multi-channel scheduling.;We also investigate several vehicular environments, and propose corresponding location- and environment-aware data dissemination solutions. We first present an efficient on-demand bounce routing method in vehicular tunnels. It applies a hybrid signal propagation model and location-based forwarding metric to choose the best data dissemination strategy. Then, we design a hybrid routing scheme for robust and reliable data dissemination in urban transportation environments, in which the choice of communication method is dependent upon geographical connectivity, by taking network coding based multicast routing in dense network and opportunistic routing using carry and forward method in sparse network. In addition, we propose an online learning based knowledge dissemination in unmanned aerial vehicle (UAV) swarms under delay/disruption-tolerant networking, where each UAV adaptively chooses broadcast probability by learning link status. A fractionated Cyber-Physical System framework, based on partial ordering for knowledge sharing and colored Petri net for work flow, is implemented to achieve distributed knowledge management in UAV swarms.;Our extensive simulation and real testbed results show the robustness and efficiency of location-based services in vehicular networks with hybrid architectures.
机译:在高移动性和动态车辆网络中,基于位置的服务已被视为一种有前途的通信范例。然而,由于交通状况,移动性模型和网络拓扑的差异,现有的移动自组织网络不能直接应用于车辆网络。另一方面,具有基于ad hoc的车辆间和基于基础设施的车对路通信的车载网络中的混合架构可以促进使用地理信息的强大而有效的通信服务。本文主要研究基于位置的协议和算法的设计和评估,以提高混合动力汽车网络的可扩展性,效率和弹性。我们首先提供了一种用于移动车辆的跨层自定位算法。针对测距中的最小干扰,提出了一种基于正交可变扩频因子和跳时的超宽带编码方法。然后,基于UWB的非度量多维缩放可得出准确而可靠的自定位结果。此外,我们采用了在线压缩传感方案来计算和定位稀疏的路边单位(RSU),以用于战争驾驶应用。在线战争驾驶记录在运行时接收到信号强度(RSS)值,并且可以根据少得多的嘈杂RSS读数立即恢复RSU的数量和位置。;在获得车辆和RSU的位置信息后,我们在混合车辆网络。我们利用拉丁方的自然美来在频道访问的微时间尺度和频道分配的宏观时间尺度上实现公平和确定的调度。提出了一种基于网格的可伸缩方案,以将拉丁方映射到网格以进行动态单无线电多信道调度。另一种基于干扰图的方案使用节点位置和社会中心性来反映与车辆网络中的访问相关的社交行为模式,然后形成用于多无线电多信道调度的自适应集群。我们还研究了几种车辆环境,并提出了相应的位置以及环境感知数据传播解决方案。我们首先提出一种在车辆隧道中有效的按需弹跳路由方法。它采用混合信号传播模型和基于位置的转发度量来选择最佳的数据分发策略。然后,通过在密集网络中采用基于网络编码的多播路由,并采用进位和转发方法进行机会路由,设计了一种混合路由方案,用于在城市交通环境中实现可靠可靠的数据分发,其中通信方法的选择取决于地理连通性。在稀疏网络中。此外,我们提出了一种基于在线学习的基于时延/容错网络的无人飞行器(UAV)群中的知识传播,其中每个UAV通过学习链接状态来自适应地选择广播概率。实施了基于知识共享的部分排序和工作流的彩色Petri网的分段式网络物理系统框架,以实现无人机群中的分布式知识管理。我们的广泛仿真和实际测试结果表明,定位的鲁棒性和效率混合架构的车载网络中基于服务的服务。

著录项

  • 作者

    Wu, Di.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Engineering Computer.;Information Technology.;Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 286 p.
  • 总页数 286
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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