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Sensitivity Analysis of Wavelet Neural Network Model for Short-Term Traffic Volume Prediction

机译:小波神经网络模型在短期交通量预测中的敏感性分析

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摘要

In order to achieve a more accurate and robust traffic volume prediction model, the sensitivity of wavelet neural network model (WNNM) is analyzed in this study. Based on real loop detector data which is provided by traffic police detachment of Maanshan, WNNM is discussed with different numbers of input neurons, different number of hidden neurons, and traffic volume for different time intervals. The test results show that the performance of WNNM depends heavily on network parameters and time interval of traffic volume. In addition, the WNNM with 4 input neurons and 6 hidden neurons is the optimal predictor with more accuracy, stability, and adaptability. At the same time, amuch better prediction record will be achieved with the time interval of traffic volume are 15 minutes. In addition, the optimized WNNM is compared with the widely used back-propagation neural network (BPNN). The comparison results indicated that WNNM produce much lower values of MAE, MAPE, and VAPE than BPNN, which proves that WNNM performs better on short-term traffic volume prediction.
机译:为了获得更准确,更健壮的交通量预测模型,本文对小波神经网络模型(WNNM)的敏感性进行了分析。基于马鞍山交警支队提供的真实环路检测器数据,讨论了具有不同数量的输入神经元,不同数量的隐藏神经元以及不同时间间隔的交通量的WNNM。测试结果表明,WNNM的性能在很大程度上取决于网络参数和通信量的时间间隔。此外,具有4个输入神经元和6个隐藏神经元的WNNM是具有更高准确性,稳定性和适应性的最佳预测器。同时,当交通量的时间间隔为15分钟时,将获得更好的预测记录。此外,将优化的WNNM与广泛使用的反向传播神经网络(BPNN)进行了比较。比较结果表明,WNNM产生的MAE,MAPE和VAPE值远低于BPNN,这证明WNNM在短期流量预测上表现更好。

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