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Trend cluster based compression of geographically distributed data streams

机译:基于趋势簇的地理分布数据流压缩

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In many real-time applications, such as wireless sensor network monitoring, traffic control or health monitoring systems, it is required to analyze continuous and unbounded geographically distributed streams of data (e.g. temperature or humidity measurements transmitted by sensors of weather stations). Storing and querying geo-referenced stream data poses specific challenges both in time (real-time processing) and in space (limited storage capacity). Summarization algorithms can be used to reduce the amount of data to be permanently stored into a data warehouse without losing information for further subsequent analysis. In this paper we present a framework in which data streams are seen as time-varying realizations of stochastic processes. Signal compression techniques, based on transformed domains, are applied and compared with a geometrical segmentation in terms of compression efficiency and accuracy in the subsequent reconstruction.
机译:在许多实时应用中,例如无线传感器网络监控,流量控制或健康监控系统,需要分析连续和无界的地理上分布的数据流(例如,由气象站传感器传输的温度或湿度测量)。存储和查询地理引用的流数据在时间(实时处理)和空间(限量存储容量)构成特定的挑战。概述算法可用于将要永久存储到数据仓库中的数据量,而不会丢失信息以进一步进行后续分析。在本文中,我们提出了一个框架,其中数据流被视为随机过程的时变的实现。基于转化域的信号压缩技术应用并在随后的重建中的压缩效率和准确度方面与几何分割进行比较。

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