首页> 外文会议>International Conference on Modeling, Simulation and Visualization Methods(MSV'05); 20050627-30; Las Vegas,NV(US) >Autoregressive Integrated Moving Average Modeling for Short-Term Arterial Travel Time Prediction
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Autoregressive Integrated Moving Average Modeling for Short-Term Arterial Travel Time Prediction

机译:短期动脉行程时间预测的自回归综合移动平均模型

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Travel time information is a good operational measure of the effectiveness of transportation systems and can be used to detect incidents and quantify congestion. The ability to accurately predict freeway and arterial travel times in transportation networks is a critical component for many Intelligent Transportation Systems (ITS) applications. This paper focuses on the arterial travel time prediction by studying the travel time data, modeling and diagnostic checking so that short-term travel time can be predicted with reasonable accuracy. A 3.7-mile corridor on Minnesota State Highway 194 is chosen as our test site. The Global Positioning System (GPS) probe vehicle method is used in our data collection. The time series analysis techniques are used in our model building, in particular, we focus on the autoregressive integrated moving average (ARIMA) model. Finally, the model established for each road section is verified via both the residual analysis and portmanteau lack-of-fit test. The near term goal of this study is to use the developed models to predict section travel times with reasonable accuracy.
机译:出行时间信息是衡量运输系统有效性的良好操作指标,可用于检测事件和量化拥堵。在许多智能交通系统(ITS)应用中,准确预测交通网络中高速公路和主干行车时间的能力是至关重要的组成部分。本文通过研究行程时间数据,建模和诊断检查,着重于动脉行程时间的预测,以便可以合理地预测短期行程时间。我们选择了位于明尼苏达州194号高速公路上的3.7英里长的走廊作为测试地点。我们的数据收集中使用了全球定位系统(GPS)探测车方法。时间序列分析技术用于我们的模型构建中,尤其是,我们专注于自回归综合移动平均值(ARIMA)模型。最后,通过残差分析和Portmanteau失配检验对每个路段建立的模型进行验证。这项研究的近期目标是使用发达的模型以合理的精度预测路段的行驶时间。

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