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Vehicle trajectory reconstruction using automatic vehicle identification and traffic count data

机译:利用自动车辆识别和交通计数数据重建车辆轨迹

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The origina??destination (OD) matrix and the vehicle trajectory data are critical to transportation planning, design, and operation management. On the basis of the deployment of automatic vehicle identification (AVI) technology in urban traffic networks in China, this study proposed a vehicle trajectory reconstruction method for a largea??scale network by using AVI and traditional detector data. Particle filter theory was employed as the framework for this method that combines five spatiala??temporal trajectory correction factors (i.e., the path consistency, the AVI measurability criterion, the travel time consistency, the gravity flow model, and the patha??link flow matching model) to estimate the trajectory of a vehicle. The probabilities of the most likely trajectories are updated by the Bayesian method to approximate the a??truea?? trajectory. The traffic network in the Beijing Olympic Park was selected as the test bed and was simulated by using VISSIM to create a complete set of vehicle trajectories. The accuracy of the resulting trajectory reconstruction exceeds 90% when the AVI coverage is only 50%, assuming an AVI detection error of 5% for a closed network and an open network. The average relative error of a static OD matrix is 11.05%. Although the accuracy of reconstruction exceeds 80% when the AVI coverage is between 50% and 40%, the accuracy of a defective producta??OD matrix decreases rapidly. The proposed method yields high estimation accuracy for the full trajectories of individual vehicles and the OD matrix, which demonstrates significant potential for traffica??related applications. Copyright ?? 2014 John Wiley & Sons, Ltd.
机译:始发目的地(OD)矩阵和车辆轨迹数据对于运输计划,设计和运营管理至关重要。在中国城市交通网络自动车辆识别(AVI)技术部署的基础上,本研究提出了一种利用AVI和传统检测器数据对大型网络进行车辆轨迹重构的方法。采用粒子滤波理论作为该方法的框架,该方法结合了五个时空时空轨迹校正因子(即路径一致性,AVI可测量性准则,行程时间一致性,重力流模型和路径流链接流)匹配模型)以估算车辆的轨迹。用贝叶斯方法更新最可能轨迹的概率,以近似a ?? truea ??。弹道。选择北京奥林匹克公园的交通网络作为试验台,并使用VISSIM进行仿真,以创建完整的车辆轨迹集。假设封闭网络和开放网络的AVI检测误差为5%,那么当AVI覆盖率仅为50%时,所得轨迹重构的准确性将超过90%。静态OD矩阵的平均相对误差为11.05%。尽管当AVI覆盖率在50%到40%之间时,重建的精度超过80%,但是有缺陷的产品OD矩阵的精度却迅速下降。所提出的方法对单个车辆的整个轨迹和OD矩阵都具有很高的估计精度,这证明了与交通相关的应用具有巨大的潜力。版权?? 2014 John Wiley&Sons,Ltd.

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