基于磁盘的滑动窗口时空数据索引

Manish Singh, Qiang Zhu, H. Jagadish
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引用次数: 10

摘要

无线通信和远程信息处理等许多应用需要跟踪有限过去的时空数据的演变。条例甚至可能要求有限度的保留。一般来说,每个数据条目都可以有自己的用户指定生命周期。我们希望系统通过某种垃圾收集机制自动删除过期的条目。这种有限的保留可以通过使用类似于流数据处理的滑动窗口语义来实现。然而,由于上述应用程序中的数据量大且生命周期相对较长(与实时瞬态流数据相比),这里需要为磁盘上的数据而不是内存中的数据维护滑动窗口。如何提供对最近的信息的快速访问,同时方便有效地删除过期的条目是一个新的挑战。在本文中,我们提出了一种基于磁盘的双层滑动窗口索引方案,用于离散移动的时空数据。我们的索引可以支持对标准时间片和间隔查询的有效处理,并且几乎没有开销地删除过期条目。在现有的历史时空索引技术中,删除要么不可行,要么效率低下。我们基于滑动窗口的处理模型可以同时支持当前和过去条目,而许多现有的历史时空索引技术无法将这两种类型的数据放在同一个索引中。我们与最著名的用于离散移动时空数据的历史索引(即MV3R树)的实验比较表明,我们的索引在插入时间和搜索性能方面大约快五倍。MV3R遵循部分持久性模型,而我们的索引可以支持非常有效的删除和更新。
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SWST: A Disk Based Index for Sliding Window Spatio-Temporal Data
Numerous applications such as wireless communication and telematics need to keep track of evolution of spatio-temporal data for a limited past. Limited retention may even be required by regulations. In general, each data entry can have its own user specified lifetime. It is desired that expired entries are automatically removed by the system through some garbage collection mechanism. This kind of limited retention can be achieved by using a sliding window semantics similar to that from stream data processing. However, due to the large volume and relatively long lifetime of data in the aforementioned applications (in contrast to the real-time transient streaming data), the sliding window here needs to be maintained for data on disk rather than in memory. It is a new challenge to provide fast access to the information from the recent past and, at the same time, facilitate efficient deletion of the expired entries. In this paper, we propose a disk based, two-layered, sliding window indexing scheme for discretely moving spatio-temporal data. Our index can support efficient processing of standard time slice and interval queries and delete expired entries with almost no overhead. In existing historical spatio-temporal indexing techniques, deletion is either infeasible or very inefficient. Our sliding window based processing model can support both current and past entries, while many existing historical spatio-temporal indexing techniques cannot keep these two types of data together in the same index. Our experimental comparison with the best known historical index (i.e., the MV3R tree) for discretely moving spatio-temporal data shows that our index is about five times faster in terms of insertion time and comparable in terms of search performance. MV3R follows a partial persistency model, whereas our index can support very efficient deletion and update.
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