Generalized Regression Neural Network for predicting traffic flow

J. L. Buliali, Victor Hariadi, Ahmad Saikhu, Saprina Mamase
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引用次数: 9

Abstract

Forecasting traffic flow is a popular research topic in Intelligent Transportation System. There have been several methods used for this forecasting, such as statistical methods, Bayesian Network, Neural Network Model, Hybrid ARIMA and ANN. Generalized Regression Neural Network (GRNN) is an interesting model to be used in forecasting traffic flow, as it can predict data with dynamic change and non-linear in nature, which is generally found in traffic flow data. In this research, a GRNN model is set up to process traffic flow data, and comparing its results and the results from other predicting methods (ARIMA, Single Exponential Smoothing, and Moving Average). Leave One Out Cross Validation (LOOCV) is used in testing traffic flow data and Mean Absolute Percentage Error (MAPE) is used as the evaluation criterion in the testing. The results show that using GRNN method on the testing data can improve the accuracy of predictions by reducing the value of MAPE when three other predicting methods: ARIMA, Single Exponential Smoothing, and Moving Average.
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广义回归神经网络预测交通流
交通流预测是智能交通系统中的一个热门研究课题。有几种方法用于这种预测,如统计方法,贝叶斯网络,神经网络模型,混合ARIMA和ANN。广义回归神经网络(Generalized Regression Neural Network, GRNN)是一种非常有趣的用于交通流预测的模型,因为它可以预测交通流数据中普遍存在的动态变化和非线性数据。在本研究中,建立了一个GRNN模型来处理交通流数据,并将其结果与其他预测方法(ARIMA、单指数平滑和移动平均)的结果进行了比较。在测试交通流数据时使用留一交叉验证(LOOCV),在测试中使用平均绝对百分比误差(MAPE)作为评估标准。结果表明,在ARIMA、单指数平滑和移动平均三种预测方法中,使用GRNN方法对测试数据进行预测可以降低MAPE值,从而提高预测精度。
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