基于K-近邻算法的夜间交通流量预测

Q1 Engineering
D. Mladenović, S. Janković, S. Zdravković, Snezana Mladenovic, Ana Uzelac
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引用次数: 3

摘要

本研究的目的是使用监督机器学习技术预测塞尔维亚国道上的总夜间交通量和月平均夜间交通量。一组关于每月总夜间交通量和平均夜间交通量的数据已用于预测模型的训练和测试。该数据集是通过统计2011年至2020年期间塞尔维亚道路上的交通量而获得的。已经使用Weka软件工具在可用数据集上测试了各种分类和回归预测模型,并且基于K-最近邻算法的模型以及基于回归树的模型显示出最佳结果。此外,通过比较模型的性能,选择了最佳模型。根据上述标准,基于K-最近邻算法的模型显示出最好的结果。使用该模型,已经对选定交通计数位置下一年每月的总交通量和平均夜间交通量进行了预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Night Traffic Flow Prediction Using K-Nearest Neighbors Algorithm
The aim of this research is to predict the total and average monthly night traffic on state roads in Serbia, using the technique of supervised machine learning. A set of data on total and average monthly night traffic has been used for training and testing of predictive models. The data set was obtained by counting the traffic on the roads in Serbia, in the period from 2011 to 2020. Various classification and regression prediction models have been tested using the Weka software tool on the available data set and the models based on the K-Nearest Neighbors algorithm, as well as models based on regression trees, have shown the best results. Furthermore, the best model has been chosen by comparing the performances of models. According to all the mentioned criteria, the model based on the K-Nearest Neighbors algorithm has shown the best results. Using this model, the prediction of the total and average nightly traffic per month for the following year at the selected traffic counting locations has been made.
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来源期刊
CiteScore
7.90
自引率
0.00%
发文量
25
审稿时长
15 weeks
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