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Traffic Congestion Prediction Model Based on Integrated Learning
School of Cyber Science and Engineering School of Geodesy and Geomatics School of Mathematics and Statistics
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Abstract  The current navigation software has obvious inaccurate speed assessment when facing some serious traffic congestion, and cannot accurately predict the duration of the traffic congestion. Therefore, we propose a traffic congestion prediction model to accu- rately predict the congestion time in the face of most congestion situations through the prediction of speed. Regarding the speed pre- diction model, we select high-similarity samples based on the KNN algorithm. The prediction speed model is divided into two main models, KNN-VA and KNN-RBF, and we use an integrated learning method to fuse these two models to obtain more accurate aver- age speed prediction. Then, the congestion time can be predicted. In order to determine the congestion time, we use the RBF speed prediction method and the sampling method in a fixed area to verify. The results show that the model has high reliability for conges- tion time prediction.
Key wordscongestion prediction      KNN      RBF      integrated learnin     
Published: 10 April 2020

Cite this article:

TIAN Yu HOU Qian-bao DOU Dan TANG Jian . . Computer & Telecommunication, 2020, 1(4): 60-63.

URL:

https://www.computertelecom.com.cn/EN/     OR     https://www.computertelecom.com.cn/EN/Y2020/V1/I4/60

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