Title :
A Real-Time Processing System for Massive Traffic Sensor Data
Author :
Zhuofeng Zhao ; Qiang Ma
Author_Institution :
Cloud Comput. Res. Center, North China Univ. of Technol., Beijing, China
Abstract :
With the continuous expansion of the scope of the transportation sensor networks, a new kind of data, namely traffic sensor data, becomes widely available. Traffic sensor data gathered by large amounts of transportation sensors shows the massive, continuous, streaming and probabilistic characteristics compared to traditional data. In order to satisfy the requirements of different traffic sensor data applications, the capability of real-time processing for massive traffic sensor data is emergently needed. In this paper, a Real-Time Processing System (shorted as RTPS), which adopts the decentralized distributed architecture to support the parallel processing of traffic sensor data, is presented with a case study of a real world application about vehicle license plate recognition data. And the parallel computing model behind RTPS and corresponding programing interface are proposed. The experiment based on application of vehicle license plate recognition data shows that our system has good scalability and the processing performance increases in linear progression as the number of processing nodes increases.
Keywords :
automated highways; cloud computing; parallel processing; probability; real-time systems; road traffic; road vehicles; traffic engineering computing; transportation; RTPS; cloud computing; decentralized distributed architecture; intelligent transportation; linear progression; parallel computing model; parallel processing; probabilistic characteristics; programing interface; real-time processing system; traffic sensor data application; transportation sensor network; vehicle license plate recognition data; Cloud Computing; Intelligent Transportation; Real-time Processing; Vehicle License Plate Recognition Data;
Conference_Titel :
Connected Vehicles and Expo (ICCVE), 2012 International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4673-4705-1
DOI :
10.1109/ICCVE.2012.34