Abstract :
In recent years, with the further adoption of the Internet of Things and sensor technology, all kinds of intelligent transportation system (ITS) applications based on a wide range of traffic sensor data have had rapid development. Traffic sensor data gathered by large amounts of sensors show some new features, such as massiveness, continuity, streaming, and spatio-temporality. ITS applications utilizing traffic sensor data can be divided into three main types: 1) offline processing of historical data; 2) online processing of streaming data; and 3) hybrid processing of both. Current research tends to solve these problems in separate solutions, such as stream computing and batch processing. In this paper, we propose a hybrid processing approach and present corresponding system implementation for both streaming and historical traffic sensor data, which combines spatio-temporal data partitioning, pipelined parallel processing, and stream computing techniques to support hybrid processing of traffic sensor data in real-time. Three types of real-world applications are explained in detail to show the usability and generality of our approach and system. Our experiments show that the system can achieve better performance than a popular open-source streaming system called Storm.
Keywords :
intelligent transportation systems; pipeline processing; sensor fusion; spatiotemporal phenomena; traffic engineering computing; ITS; Internet of Things; hybrid processing system; intelligent transportation system; offline historical data processing; online streaming data processing; pipelined parallel processing; spatiotemporal data partitioning; stream computing technique; traffic sensor data; Computational modeling; Data models; Data processing; Distributed databases; Real-time systems; Storms; System implementation; Traffic sensor data; real-time processing; spatio-temporal data object; stream computing;