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A framework for short-term traffic flow forecasting using the combination of wavelet transformation and artificial neural networks

机译:小波变换与人工神经网络相结合的短期交通流量预测框架

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The main objective of this paper is to develop a framework for short-term traffic flow forecasting models with high accuracy. Due to flow oscillations, the real-time information presented to the drivers through variable message signs, etc., may not be valid by the time the driver reaches the location. On the other hand, not all compartments of the flow signal are of same importance in determining its future state. A model is developed to predict the value of traffic flow in near future (next 5-35minutes) based on the combination of wavelet transformation and artificial neural networks. This model is called the hybrid WT-ANN. Wavelet transformation is set to denoise the flow signal, i.e., filtering the unimportant fluctuations of the flow signal. Unimportant fluctuations are those that have little or no effect on the future condition of the signal. The neural network is set and trained to use previous data for predicting future flow. To implement the system, traffic data of US-101 were used from Next Generation Simulation (NGSIM). Results show that removing the noises has improved the accuracy of the prediction to a great extent. The model was used to predict the flow in three different locations on the same highway and a different highway in a different country. The model rendered highly reliable predictions. The proposed model predicts the flow of next 5min on the same location with 2.5% Mean Absolute Percentage Error (MAPE) and of next 35min with less than 12% MAPE. It predicts the flow on downstream locations for next 5min with less than 8% MAPE and for the different highway with 2.3% MAPE.
机译:本文的主要目的是为高精度交通流量短期预测模型开发一个框架。由于流量波动,在驾驶员到达该位置之前,通过可变消息符号等提供给驾驶员的实时信息可能无效。另一方面,并​​非所有流量信号隔间在确定其未来状态时都具有相同的重要性。基于小波变换和人工神经网络的组合,开发了一个模型来预测不久的将来(接下来的5-35分钟)交通流量的价值。该模型称为混合WT-ANN。设置小波变换以对流量信号进行降噪,即过滤流量信号的不重要波动。不重要的波动是那些对信号的未来状况影响很小或没有影响的波动。设置并训练神经网络以使用先前的数据来预测未来的流量。为了实现该系统,使用了来自下一代仿真(NGSIM)的US-101的交通数据。结果表明,去除噪声在很大程度上提高了预测的准确性。该模型用于预测同一国家和不同国家的同一条高速公路上三个不同位置的流量。该模型提供了高度可靠的预测。所提出的模型预测了同一位置下5分钟的流量,平均绝对百分比误差(MAPE)为2.5%,MAPE小于12%的流量预计为35分钟。它预测在接下来的5分钟内,MAPE低于8%的情况下下游位置的流量,以及预测2.3%MAPE的不同高速公路的流量。

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