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Artificial Neural Network-Based Traffic State Estimation Using Erroneous Automated Sensor Data

机译:使用错误的自动传感器数据的基于人工神经网络的交通状态估计

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摘要

Capturing real-time traffic system characteristics is a primary step in any intelligent transportation system ( ITS) application. The majority of the traffic sensors used to capture real-time data have been developed for homogeneous and lane-disciplined traffic conditions. Hence many of them may not perform accurately under heterogeneous and less-lane-disciplined traffic conditions, ultimately leading to reduced estimation accuracy of end applications. The present study addresses this issue by developing an artificial neural network ( ANN)based estimation scheme that can handle these errors and still generate reasonably accurate results. The estimation of location-based speed, stream-based density, and stream speed is carried out using erroneous data as inputs to an ANN trained with accurate data. The same is also performed under varying ranges of errors in inputs. The results show that the ANN can handle the errors in automated data and produce accurate traffic state estimates when trained with good-quality data, hence demonstrating its efficacy for real-time ITS implementation under such traffic conditions. (C) 2017 American Society of Civil Engineers.
机译:捕获实时交通系统特征是任何智能交通系统(ITS)应用程序中的第一步。大多数用于捕获实时数据的交通传感器都是针对同类和车道有规律的交通条件而开发的。因此,它们中的许多可能在异构和较少车道管制的交通条件下无法准确执行,最终导致最终应用程序的估计准确性降低。本研究通过开发一种基于人工神经网络(ANN)的估计方案来解决此问题,该方案可以处理这些错误并仍然产生合理准确的结果。基于位置的速度,基于流的密度和流速度的估计是使用错误的数据作为经过精确数据训练的ANN的输入来进行的。在输入错误的变化范围内也可以执行相同的操作。结果表明,当使用高质量数据进行训练时,ANN可以处理自动化数据中的错误并产生准确的交通状态估计,从而证明了其在这种交通条件下实时ITS实施的功效。 (C)2017年美国土木工程师学会。

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