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Origin-destination Flow Prediction with Vehicle Trajectory Data and Semi-supervised Recurrent Neural Network

机译:车辆轨迹数据和半监督递归神经网络的原点流预测

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Origin-Destination (OD) flow data is an important instrument for traffic study and management. So far traditional ways like surveys or detectors are costly and only give limited availability of OD flows. Various statistical and stochastic models for OD flow estimation and prediction based on limited link volume data or automatic vehicle identification (AVI) data have been developed. However, smartphone-generated trajectory data has not been as much leveraged in this field, though the usage of smartphones in traveling is emerging in recent years. In this paper, we propose a semi-supervised deep learning based model that appropriately combines both AVI and smartphone trajectory data during training and is able to generate predictions of OD flows in an urban network solely based on the smartphone trajectory data at inference time. Our model can provide OD estimation and prediction services on larger spatial areas beyond the limited spatial coverage of AVI data. Tests of our model using real data have shown promising results, compared with an AVI input-dependent Kalman filter model. Potentially, our model can easily be embedded to a trajectory collecting platform and generate continuous real-time OD flow predictions online.
机译:起点(OD)流量数据是交通研究和管理的重要工具。到目前为止,传统的方式(例如调查或检测器)非常昂贵,并且只能提供有限的OD流量。已经开发了用于基于有限的链接量数据或自动车辆识别(AVI)数据进行OD流量估计和预测的各种统计和随机模型。然而,尽管近年来智能手机在旅行中的使用正在兴起,但智能手机生成的轨迹数据在这一领域并未得到充分利用。在本文中,我们提出了一种基于半监督的深度学习模型,该模型在训练过程中适当地结合了AVI和智能手机轨迹数据,并且能够仅基于推理时的智能手机轨迹数据生成城市网络中OD流量的预测。我们的模型可以在AVI数据的有限空间覆盖范围之外的更大空间区域上提供OD估计和预测服务。与依赖AVI输入的卡尔曼滤波器模型相比,使用真实数据对我们的模型进行的测试显示出了可喜的结果。潜在地,我们的模型可以轻松地嵌入到轨迹收集平台中,并在线生成连续的实时OD流量预测。

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