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Real-Time Traffic Modeling and Estimation with Streaming Probe Data using Machine Learning.

机译:使用机器学习通过流探针数据进行实时流量建模和估计。

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摘要

Traffic information systems play an important role in the world as numerous people rely on the road transportation network for their most important daily functions. This dissertation proposes a general system architecture for processing traffic data and for disseminating accurate, timely traffic information via the internet. It also specifically addresses the challenges with estimating arterial traffic conditions using only data from GPS probe vehicles. GPS probe data promises to be the most ubiquitous source of traffic data for years to come as transit agencies decrease their investment in traditional fixed-location sensing infrastructure.;The dissertation introduces the architecture design and implementation of the Mobile Millennium system. A joint project between UC Berkeley, Nokia and Navteq, Mobile Millennium aggregates data from numerous sources, runs state of the art estimation and forecast algorithms, and provides timely traffic information to drivers and other targets. This system took over two years to build and the result is a robust framework for any traffic estimation researcher to access vast stores of data quickly and easily as well as test any number of estimation algorithms.;For estimating arterial traffic conditions, this dissertation proposes a hybrid approach leveraging advances in the fields of machine learning and traffic theory (based on hydrodynamic theory). This approach provides a foundation for any arterial traffic estimation model. A variety of model/algorithm approaches are presented, with one ultimately proving to be superior to the rest and the one that should be carried forward as research in this area continues.
机译:交通信息系统在世界上起着重要的作用,因为无数人依靠道路运输网络来履行其最重要的日常功能。本文提出了一种通用的系统架构,用于处理交通数据并通过互联网传播准确,及时的交通信息。它还仅使用来自GPS探测车的数据来估算动脉交通状况,从而专门应对挑战。随着交通部门减少对传统固定位置传感基础设施的投资,GPS探测数据有望成为未来数年最普遍的交通数据来源。本文介绍了Mobile Millennium系统的体系结构设计和实现。加州大学伯克利分校,诺基亚和Navteq的一个联合项目,Mobile Millennium收集了许多来源的数据,运行了最新的估算和预测算法,并及时向驾驶员和其他目标提供了交通信息。该系统耗时两年,构建了一个强大的框架,可以使任何流量估算研究人员快速,轻松地访问大量数据,并测试任意数量的估算算法。混合方法,利用了机器学习和交通理论(基于流体动力学理论)领域的先进技术。这种方法为任何动脉流量估计模型提供了基础。提出了多种模型/算法方法,其中一种方法最终被证明优于其他方法/方法,随着这一领域的研究不断发展,应该继续进行下去。

著录项

  • 作者

    Herring, Ryan Jay.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Transportation.;Computer Science.;Operations Research.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 138 p.
  • 总页数 138
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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