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Freeway Travel Time Estimation and Prediction Using Dynamic Neural Networks

机译:基于动态神经网络的高速公路行程时间估计与预测

摘要

Providing transportation system operators and travelers with accurate travel time information allows them to make more informed decisions, yielding benefits for individual travelers and for the entire transportation system. Most existing advanced traveler information systems (ATIS) and advanced traffic management systems (ATMS) use instantaneous travel time values estimated based on the current measurements, assuming that traffic conditions remain constant in the near future. For more effective applications, it has been proposed that ATIS and ATMS should use travel times predicted for short-term future conditions rather than instantaneous travel times measured or estimated for current conditions. This dissertation research investigates short-term freeway travel time prediction using Dynamic Neural Networks (DNN) based on traffic detector data collected by radar traffic detectors installed along a freeway corridor. DNN comprises a class of neural networks that are particularly suitable for predicting variables like travel time, but has not been adequately investigated for this purpose. Before this investigation, it was necessary to identifying methods for data imputation to account for missing data usually encountered when collecting data using traffic detectors. It was also necessary to identify a method to estimate the travel time on the freeway corridor based on data collected using point traffic detectors. A new travel time estimation method referred to as the Piecewise Constant Acceleration Based (PCAB) method was developed and compared with other methods reported in the literatures. The results show that one of the simple travel time estimation methods (the average speed method) can work as well as the PCAB method, and both of them out-perform other methods. This study also compared the travel time prediction performance of three different DNN topologies with different memory setups. The results show that one DNN topology (the time-delay neural networks) out-performs the other two DNN topologies for the investigated prediction problem. This topology also performs slightly better than the simple multilayer perceptron (MLP) neural network topology that has been used in a number of previous studies for travel time prediction.
机译:为运输系统运营商和旅行者提供准确的旅行时间信息,使他们能够做出更明智的决策,从而为单个旅行者和整个运输系统带来收益。假设交通状况在不久的将来保持不变,大多数现有的高级旅行者信息系统(ATIS)和高级交通管理系统(ATMS)使用基于当前测量值估算的瞬时旅行时间值。为了更有效的应用,已经提出,ATIS和ATMS应该使用针对短期未来状况预测的行驶时间,而不是针对当前状况测量或估算的瞬时行驶时间。本论文的研究是基于沿高速公路走廊安装的雷达交通检测器收集的交通检测器数据,利用动态神经网络(DNN)研究短期高速公路出行时间的预测。 DNN包括一类神经网络,特别适合于预测诸如旅行时间之类的变量,但尚未为此目的进行充分研究。在进行此调查之前,有必要确定数据插补方法,以解决使用流量检测器收集数据时通常遇到的丢失数据。还有必要确定一种基于使用点交通检测器收集的数据来估算高速公路走廊上行驶时间的方法。开发了一种新的行进时间估计方法,称为基于分段恒定加速(PCAB)的方法,并将其与文献中报道的其他方法进行了比较。结果表明,一种简单的行程时间估计方法(平均速度方法)可以与PCAB方法一起使用,并且两者均优于其他方法。这项研究还比较了具有不同内存设置的三种不同DNN拓扑的旅行时间预测性能。结果表明,对于所研究的预测问题,一种DNN拓扑(时延神经网络)优于其他两种DNN拓扑。该拓扑还比简单的多层感知器(MLP)神经网络拓扑稍好一些,该方法已在许多先前的研究中用于行进时间预测。

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    Shen Luou;

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  • 年度 2008
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