首页> 外文学位 >Applying Machine and Statistical Learning Techniques to Intelligent Transport Systems: Bottleneck Identification and Prediction, Dynamic Travel Time Prediction, Driver Stoprun Behavior Modeling, and Autonomous Vehicle Control at Intersections
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Applying Machine and Statistical Learning Techniques to Intelligent Transport Systems: Bottleneck Identification and Prediction, Dynamic Travel Time Prediction, Driver Stoprun Behavior Modeling, and Autonomous Vehicle Control at Intersections

机译:将机器和统计学习技术应用于智能交通系统:瓶颈识别和预测,动态行驶时间预测,驾驶员停车行为模型以及交叉口的自主车辆控制

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摘要

In this dissertation, new algorithms that address three traffic problems of major importance are developed. First automatic identification and prediction algorithms are developed to identify and predict the occurrence of traffic congestion. The identification algorithms concoct a model to identify speed thresholds by exploiting historical spatiotemporal speed matrices. We employ the speed model to define a cutoff speed separating free-flow from congested traffic. We further enhance our algorithm by utilizing weather and visibility data. To our knowledge, we are the first to include weather and visibility variables in formulating an automatic congestion identification model. We also approach the congestion prediction problem by adopting an algorithm which employs Adaptive Boosting machine learning classifiers again something novel that has not been done previously. The algorithm is promising where it resulted in a true positive rate slightly higher than 0.99 and false positive rate less than 0.001.;We next address the issue of travel time modeling. We propose algorithms to model travel time using various machine learning and statistical learning techniques. We obtain travel time models by employing the historical spatiotemporal speed matrices in conjunction with our algorithms. The algorithms yield pertinent information regarding travel time reliability and prediction of travel times. Our proposed algorithms give better predictions compared to the state of practice algorithms.;Finally we consider driver safety at signalized intersections and uncontrolled intersections in a connected vehicles environment. For signalized intersections, we exploit datasets collected from four controlled experiments to model the stop-run behavior of the driver at the onset of the yellow indicator for various roadway surface conditions and multiple vehicle types. We further propose a new variable (predictor) related to driver aggressiveness which we estimate by monitoring how drivers respond to yellow indications. The performance of the stoprun models shows improvements after adding the new aggressiveness predictor. The proposed models are practical and easy to implement in advanced driver assistance systems. For uncontrolled intersections, we present a game theory based algorithm that models the intersection as a chicken game to solve the conflicts between vehicles crossing the intersection. The simulation results show a 49% saving in travel time on average relative to a stop control when the vehicles obey the Nash equilibrium of the game.
机译:本文提出了解决三个重要交通问题的新算法。首先开发了自动识别和预测算法,以识别和预测交通拥堵的发生。识别算法编制模型以通过利用历史时空速度矩阵来识别速度阈值。我们使用速度模型来定义将自由流与拥堵交通分开的临界速度。我们通过利用天气和能见度数据进一步增强算法。据我们所知,我们是第一个在建立自动拥堵识别模型时纳入天气和能见度变量的公司。我们还通过采用再次采用自适应Boosting机器学习分类器的算法来解决拥塞预测问题,这是以前没有做过的一些新颖的事情。该算法很有希望,因为它会导致真正的阳性率略高于0.99,而错误的阳性率小于0.001。我们接下来解决旅行时间建模的问题。我们提出了使用各种机器学习和统计学习技术对旅行时间建模的算法。我们通过使用历史时空速度矩阵和我们的算法来获得旅行时间模型。该算法产生有关行程时间可靠性和行程时间预测的相关信息。与实践算法的状态相比,我们提出的算法提供了更好的预测。最后,我们考虑了互联车辆环境中信号交叉口和非控制交叉口的驾驶员安全。对于信号交叉口,我们利用从四个受控实验中收集的数据集,针对各种路面状况和多种车辆类型,在黄色指示器开始时对驾驶员的停车运行行为进行建模。我们进一步提出了与驾驶员攻击性相关的新变量(预测变量),我们通过监控驾驶员对黄色指示的反应来估算该变量。添加新的攻击性预测器后,stoprun模型的性能得到改善。所提出的模型实用且易于在高级驾驶员辅助系统中实施。对于不受控制的路口,我们提出了一种基于博弈论的算法,该算法将路口建模为鸡博弈,以解决穿越路口的车辆之间的冲突。仿真结果表明,与车辆遵循游戏的纳什平衡时,停止控制相比,平均节省49%的行驶时间。

著录项

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Computer engineering.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 292 p.
  • 总页数 292
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:52:35

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