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Optimization of neural network configurations for short-term traffic flow forecasting using orthogonal design

机译:基于正交设计的短期交通流量预测的神经网络配置优化

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Neural networks have been applied for short-term traffic flow forecasting with reasonable accuracy. Past traffic flow data, which has been captured by on-road sensors, is used as the inputs of neural networks. The size of this data significantly affects the performance of short-term traffic flow forecasting, as too many inputs result in over-specification of neural networks and too few inputs result in under-learning of neural networks. However, the amount of past traffic flow data input, is usually determined by the trial and error method. In this paper, an experimental design method, namely orthogonal design, is used to determine appropriate amount of past traffic flow data for neural networks for short-term traffic flow forecasting. The effectiveness of the orthogonal design is demonstrated by developing neural networks for short-term traffic flow forecasting based on past traffic flow data captured by on-road sensors located on a freeway in Western Australia.
机译:神经网络已经以合理的准确性应用于短期交通流量预测。道路传感器已捕获的过去交通流量数据被用作神经网络的输入。此数据的大小显着影响短期交通流量预测的性能,因为太多的输入会导致神经网络的规范化,而输入太少则会导致神经网络的学习不足。但是,过去的交通流量数据输入量通常由试错法确定。本文采用一种实验设计方法,即正交设计,为神经网络确定适当的过去交通流量数据量,以进行短期交通流量预测。通过开发神经网络来进行短期交通流量预测,可以证明正交设计的有效性,该神经网络基于位于西澳大利亚州高速公路上的公路传感器捕获的过去交通流量数据。

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