现象感知流查询处理

Mohamed H. Ali, M. Mokbel, Walid G. Aref
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引用次数: 9

摘要

由移动流源(例如,移动传感器)产生的时空数据流经历类似的环境条件,导致不同的现象。一些研究工作致力于检测和跟踪数据流管理系统(DSMS)内的各种现象。在本文中,我们利用检测到的现象来减少对DSMS资源的需求。其主要思想是让查询处理器在现象级观察输入数据流。然后,每个传入的连续查询只指向那些参与查询答案的现象。使用了两层索引,现象索引和查询索引。现象索引提供了参与特定现象的输入流的精细分辨率视图。查询索引利用现象索引来维护查询部署映射,其中每个输入流都知道该流为其答案提供的连续查询集。这两个指数都是动态更新的,以响应现象的演变性质和流源的流动性。实验结果表明,该方法在查询结果的准确性和资源利用率方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phenomenon-Aware Stream Query Processing
Spatio-temporal data streams that are generated from mobile stream sources (e.g., mobile sensors) experience similar environmental conditions that result in distinct phenomena. Several research efforts are dedicated to detect and track various phenomena inside a data stream management system (DSMS). In this paper, we use the detected phenomena to reduce the demand on the DSMS resources. The main idea is to let the query processor observe the input data streams at the phenomena level. Then, each incoming continuous query is directed only to those phenomena that participate in the query answer. Two levels of indexing are employed, a phenomenon index and a query index. The phenomenon index provides a fine resolution view of the input streams that participate in a particular phenomenon. The query index utilizes the phenomenon index to maintain a query deployment map in which each input stream is aware of the set of continuous queries that the stream contributes to their answers. Both indices are updated dynamically in response to the evolving nature of phenomena and to the mobility of the stream sources. Experimental results show the efficiency of this approach with respect to the accuracy of the query result and the resource utilization of the DSMS.
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