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Continuous Query Processing on Combined Data Stream: Sensor, Location and Identification

机译:组合数据流的连续查询处理:传感器,位置和识别

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RFID has become one of the emerging technologies for a wide area of applications such as cold chain system and blood transportation. To support a safe transaction of tagged items in those systems, it is necessary to provide the history of item's stat us and location by using other devices, including a RFID sensor tag, GPS, and RTLS. Because of high communication cost to RFID middleware on the move, status and location of tagged items are simultaneously gathered by the RFID reader after they are stored in the tag memory. This information has characteristics of not only streaming data but bulk data. To prevent data loss by large amount of input data, therefore, RFID middleware should manage dynamically the size of queues for collecting data from readers. In this paper, we propose a queue resizing technique of RFID middleware in order to process combined data stream efficiently. Queue resizing adjusts queue size of each data source based on the size of collected data. Since proposed technique prevent data overflow by small queue size and memory loss by excessive static queue size, RFID middleware can process continuous queries for combined data stream in real-time.
机译:RFID已成为广泛应用的新兴技术之一,如冷链系统和血液运输。为了支持这些系统中标记物品的安全事务,有必要通过使用其他设备,包括RFID传感器标签,GPS和RTL来提供项目的统计数据和位置的历史。由于对RFID中间件的高通信成本,在移动标签存储器中,标记物品的状态和位置同时由RFID读取器收集。该信息具有不仅具有流式数据但批量数据的特征。为防止大量输入数据进行数据丢失,因此RFID中间件应动态管理用于从读取器收集数据的队列大小。在本文中,我们提出了RFID中间件的队列调整大小技术,以便有效地处理组合数据流。队列调整大小调整基于所收集的数据的大小调整每个数据源的队列大小。由于所提出的技术通过过多的静态队列大小来防止通过小队列大小和内存丢失的数据溢出,RFID中间件可以实时地处理组合数据流的连续查询。

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