论文标题
使用无线交通传感器数据自动检测主要高速公路拥塞事件:机器学习方法
Automatic Detection of Major Freeway Congestion Events Using Wireless Traffic Sensor Data: A Machine Learning Approach
论文作者
论文摘要
监视主要走廊的流量动态,可以为交通计划目的提供宝贵的见解。该监视的一个重要要求是可以自动检测主要的流量事件并注释大量旅行数据的方法。本文介绍了一种基于机器学习的方法,用于从数百小时的交通速度数据中对公路交通拥堵事件的可靠检测和表征。实际上,提出的方法是检测任何给定时间序列变化的通用方法,即本研究中的无线交通传感器数据。速度数据最初是由一个长达十个小时的滑动窗口稍作窗口的,并将其馈入三个神经网络,这些神经网络用于检测每个窗口中拥塞事件的存在和持续时间(放缓)。滑动窗口多次捕获每个放缓事件,并导致对拥塞检测的信心提高。训练和参数调整是对17,483小时的数据进行的,其中包括168个减速事件。该数据是在马里兰州大学高级运输技术中心(CATT)正在进行的探测数据验证研究的一部分中收集并标记的。仔细训练神经网络,以减少与培训数据过度合适的机会。实验结果表明,这种方法能够成功地检测大多数拥堵事件,同时显着优于基于启发式规则的方法。此外,在估计交通拥堵事件的开始时间和末期时,提出的方法被证明更准确。
Monitoring the dynamics of traffic in major corridors can provide invaluable insight for traffic planning purposes. An important requirement for this monitoring is the availability of methods to automatically detect major traffic events and to annotate the abundance of travel data. This paper introduces a machine learning based approach for reliable detection and characterization of highway traffic congestion events from hundreds of hours of traffic speed data. Indeed, the proposed approach is a generic approach for detection of changes in any given time series, which is the wireless traffic sensor data in the present study. The speed data is initially time-windowed by a ten-hour long sliding window and fed into three Neural Networks that are used to detect the existence and duration of congestion events (slowdowns) in each window. The sliding window captures each slowdown event multiple times and results in increased confidence in congestion detection. The training and parameter tuning are performed on 17,483 hours of data that includes 168 slowdown events. This data is collected and labeled as part of the ongoing probe data validation studies at the Center for Advanced Transportation Technologies (CATT) at the University of Maryland. The Neural networks are carefully trained to reduce the chances of over-fitting to the training data. The experimental results show that this approach is able to successfully detect most of the congestion events, while significantly outperforming a heuristic rule-based approach. Moreover, the proposed approach is shown to be more accurate in estimation of the start-time and end-time of the congestion events.