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Novel Real-Time System for Traffic Flow Classification and Prediction

Novel Real-Time System for Traffic Flow Classification and Prediction
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摘要 Traffic flow prediction has been applied into many wireless communication applications(e.g., smart city, Internet of Things). With the development of wireless communication technologies and artificial intelligence, how to design a system for real-time traffic flow prediction and receive high accuracy of prediction are urgent problems for both researchers and equipment suppliers. This paper presents a novel real-time system for traffic flow prediction. Different from the single algorithm for traffic flow prediction, our novel system firstly utilizes dynamic time wrapping to judge whether traffic flow data has regularity,realizing traffic flow data classification. After traffic flow data classification, we respectively make use of XGBoost and wavelet transform-echo state network to predict traffic flow data according to their regularity. Moreover, in order to realize real-time classification and prediction, we apply Spark/Hadoop computing platform to process large amounts of traffic data. Numerical results show that the proposed novel system has better performance and higher accuracy than other schemes. Traffic flow prediction has been applied into many wireless communication applications(e.g., smart city, Internet of Things). With the development of wireless communication technologies and artificial intelligence, how to design a system for real-time traffic flow prediction and receive high accuracy of prediction are urgent problems for both researchers and equipment suppliers. This paper presents a novel real-time system for traffic flow prediction. Different from the single algorithm for traffic flow prediction, our novel system firstly utilizes dynamic time wrapping to judge whether traffic flow data has regularity,realizing traffic flow data classification. After traffic flow data classification, we respectively make use of XGBoost and wavelet transform-echo state network to predict traffic flow data according to their regularity. Moreover, in order to realize real-time classification and prediction, we apply Spark/Hadoop computing platform to process large amounts of traffic data. Numerical results show that the proposed novel system has better performance and higher accuracy than other schemes.
出处 《ZTE Communications》 2019年第2期10-18,共9页 中兴通讯技术(英文版)
基金 partly supported by the National Natural Science Foundation of China(Grants No.61571240,61671474) the Jiangsu Science Fund for Excellent Young Scholars(No.BK20170089) the ZTE program“The Prediction of Wireline Network Malfunction and Traffic Based on Big Data,”(No.2016ZTE04-07) Postgraduate Research&Practice Innovation Program of Jiangsu Province(No.KYCX18_0916) the Priority Academic Program Development of Jiangsu Higher Education Institutions
关键词 TRAFFIC flow prediction dynamic time WARPING XGBoost ECHO state network Spark/Hadoop COMPUTING platform traffic flow prediction dynamic time warping XGBoost echo state network Spark/Hadoop computing platform
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