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Another Outlier Bites the Dust: Computing Meaningful Aggregates in Sensor Networks

机译:另一个离群之地:在传感器网络中计算有意义的聚合

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Recent work has demonstrated that readings provided by commodity sensor nodes are often of poor quality. In order to provide a valuable sensory infrastructure for monitoring applications, we first need to devise techniques that can withstand "dirty" and unreliable data during query processing. In this paper we present a novel aggregation framework that detects suspicious measurements by outlier nodes and refrains from incorporating such measurements in the computed aggregate values. We consider different definitions of an outlier node, based on the notion of a user-specified minimum support, and discuss techniques for properly routing messages in the networkin order to reduce the bandwidth consumption and the energy drain during the query evaluation. In our experiments using real and synthetic traces we demonstrate that: (i) a straightforward evaluation of a user aggregate query leads to practically meaningless results due to the existence of outliers; (ii) our techniques can detect and eliminate spurious readings without any application specific knowledge of what constitutes normal behavior; (iii) the identification of outliers, when performed inside the network, significantly reduces bandwidth and energy drain compared to alternative methods that centrally collect and analyze all sensory data; and (iv) we can significantly reduce the cost of the aggregation process by utilizing simple statistics on outlier nodes and reorganizing accordingly the collection tree.
机译:最近的工作表明,商品传感器节点提供的读数通常质量较差。为了为监视应用程序提供有价值的传感基础结构,我们首先需要设计出在查询处理期间可以承受“脏”和不可靠数据的技术。在本文中,我们提出了一种新颖的聚合框架,该框架可检测异常节点的可疑度量,并避免将此类度量合并到计算出的聚合值中。我们基于用户指定的最小支持的概念考虑离群节点的不同定义,并讨论在网络中正确路由消息的技术,以减少查询评估期间的带宽消耗和能量消耗。在使用真实迹线和合成迹线的实验中,我们证明:(i)由于存在异常值,对用户聚合查询进行直接评估会导致实际上毫无意义的结果; (ii)我们的技术可以检测和消除虚假的读数,而无需任何特定于应用程序的特定知识来构成正常行为; (iii)与集中收集和分析所有感官数据的替代方法相比,识别异常值在网络内部执行时,显着减少了带宽和能量消耗; (iv)通过利用离群节点的简单统计信息并相应地重组收集树,可以显着降低聚合过程的成本。

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