Adapting traffic simulation for traffic management: A neural network approach

Benjamin N. Passow, D. Elizondo, F. Chiclana, S. Witheridge, E. Goodyer
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引用次数: 11

Abstract

Static models and simulations are commonly used in urban traffic management but none feature a dynamic element for near real-time traffic control. This work presents an artificial neural network forecaster methodology applied to traffic flow condition prediction. The spatially distributed architecture uses life-long learning with a novel adaptive Artificial Neural Network based filter to detect and remove outliers from training data. The system has been designed to support traffic engineers in their decision making to react to traffic conditions before they get out of control. We performed experiments using feed-forward backpropagation, cascade-forward back-propagation, radial basis, and generalized regression Artificial Neural Networks for this purpose. Test results on actual data collected from the city of Leicester, UK, confirm our approach to deliver suitable forecasts.
适应交通模拟的交通管理:一种神经网络方法
静态模型和仿真通常用于城市交通管理,但没有一个具有动态元素的近实时交通控制。本文提出了一种应用于交通流状态预测的人工神经网络预测方法。空间分布式架构使用终身学习和一种新颖的基于自适应人工神经网络的过滤器来检测和去除训练数据中的异常值。该系统旨在支持交通工程师在交通状况失控之前做出决策。为此,我们使用前馈反向传播、级联前向反向传播、径向基和广义回归人工神经网络进行了实验。从英国莱斯特市收集的实际数据的测试结果证实了我们提供合适预测的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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