Predicting Traffic Data in GIS using Different Neural Network Methods

Zeynab Ghasempoor, S. Behzadi
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引用次数: 1

Abstract

Traffic is one of the most influential factors in choosing the route to reach the destination. It can be said that a large percentage of people prefer a long but low traffic route than a short route with heavy traffic. Therefore, traffic is a very determining factor in societies, especially in metropolitan areas. The issue of traffic forecasting is another important factor in the field of traffic. In such a way that the traffic of the coming days can be predicted based on the traffic of the previous days. In this paper, traffic forecasting in the coming days is done using a neural network algorithm based on the collected traffic data. Traffic forecasting is performed using Basic Neural Network methods, Feed-forward Levenberg-Marquardt, Conjugate Gradient Neural Network and Bayesian Neural Network. The results of the forecast are then compared with real observations. The results show that the Feed-forward Levenberg-Marquardt method predicts traffic data with 81.59% accuracy, which is the most accurate method among the others. The accuracy of Bayesian Neural Network, Conjugate Gradient Neural Network and Basic Neural Network methods is 81.55, 81.50 and 75%, respectively. Regression values of 24 hours a day were also estimated and it was found that the proximity of input and output values in the Basic Neural Network method is approximately 80%. This parameter was obtained 69.69%, 69.71% and 69.87% for three Feed-forward Levenberg-Marquardt, Conjugate Gradient Neural Network and Bayesian Neural Network respectively.
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基于不同神经网络方法的GIS交通数据预测
交通是影响人们选择到达目的地路线的最重要因素之一。可以说,很大一部分人更喜欢长但流量小的路线,而不是流量大的短路线。因此,交通是社会中一个非常决定性的因素,尤其是在大都市地区。交通预测问题是交通领域的另一个重要问题。通过这种方式,可以根据前几天的交通预测未来几天的交通。本文基于采集到的交通数据,采用神经网络算法对未来几天的交通进行预测。使用基本神经网络方法、前馈Levenberg-Marquardt、共轭梯度神经网络和贝叶斯神经网络进行流量预测。然后将预报结果与实际观测结果进行比较。结果表明,前馈Levenberg-Marquardt方法预测交通数据的准确率为81.59%,是预测准确率最高的方法。贝叶斯神经网络、共轭梯度神经网络和基本神经网络方法的准确率分别为81.55%、81.50%和75%。对一天24小时的回归值也进行了估计,发现Basic Neural Network方法中输入和输出值的接近度约为80%。对于三种前馈Levenberg-Marquardt、共轭梯度神经网络和贝叶斯神经网络,该参数分别为69.69%、69.71%和69.87%。
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