Application of KNN prediction model in urban traffic flow prediction

Yaxian Liu, Hua Yu, Hao Fang
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引用次数: 2

Abstract

Traffic congestion is one of the most important problems of urban traffic. Real time prediction of urban traffic flow can provide data reference to congestion dredging and driving route planning. In order to realize real-time urban traffic flow prediction, an urban traffic flow prediction model based on K nearest neighbor (KNN) model is studied. The experimental results show that the average prediction time of the urban traffic flow prediction model based on KNN is 1.3s and the average prediction accuracy is 91.1%. It can effectively realize the real-time urban bayonet traffic flow prediction efficiently and accurately, and it is of great practical value for the traffic management department to prevent and dredge road congestion and for the driver to choose a smooth driving path.
KNN预测模型在城市交通流预测中的应用
交通拥堵是城市交通的重要问题之一。城市交通流的实时预测可以为疏浚拥堵、规划行车路线提供数据参考。为了实现实时的城市交通流预测,研究了基于K最近邻(KNN)模型的城市交通流预测模型。实验结果表明,基于KNN的城市交通流预测模型的平均预测时间为1.3s,平均预测精度为91.1%。它能有效、高效、准确地实现城市卡口交通流的实时预测,对交通管理部门预防和疏导道路拥堵以及驾驶员选择畅通的行驶路径具有重要的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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