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Discovering Teleconnected Flow Anomalies: A Relationship Analysis of Dynamic Neighborhoods (RAD) Approach

机译:发现遥控的流动异常:动态邻域(RAD)方法的关系分析

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Given a collection of sensors monitoring a flow network, the problem of discovering teleconnected flow anomalies aims to identify strongly connected pairs of events (e.g., introduction of a contaminant and its removal from a river). The ability to mine teleconnected flow anomalies is important for applications related to environmental science, video surveillance, and transportation systems. However, this problem is computationally hard because of the large number of time instants of measurement, sensors, and locations. This paper characterizes the computational structure in terms of three critical tasks, (1) detection of flow anomaly events, (2) identification of candidate pairs of events, and (3) evaluation of candidate pairs for possible teleconnection. The first task was addressed in our recent work. In this paper, we propose a RAD (Relationship Analysis of spatio-temporal Dynamic neighborhoods) approach for steps 2 and 3 to discover teleconnected flow anomalies. Computational overhead is brought down significantly by utilizing our proposed spatio-temporal dynamic neighborhood model as an index and a pruning strategy. We prove correctness and completeness for the proposed approaches. We also experimentally show the efficacy of our proposed methods using both synthetic and real datasets.
机译:鉴于监测流量网络的传感器集合,发现遥控的流异常的问题旨在识别强烈连接的事件对(例如,引入污染物及其从河流中移除)。挖掘遥控流量异常的能力对于与环境科学,视频监控和运输系统有关的应用很重要。然而,由于测量,传感器和位置的大量时间阶段,这个问题是艰难的。本文以三项关键任务,(1)检测流异常事件的检测,(2)识别事件的识别成对的候选对的计算结构,以及对可能的遥控器的候选对的评估。在我们最近的工作中解决了第一批任务。在本文中,我们提出了步骤2和3的三种时空动态邻域的关系分析,以发现遥控流异常。通过利用我们提出的时空动态邻域模型作为指数和修剪策略,可以显着地降低了计算开销。我们证明了拟议方法的正确性和完整性。我们还通过合成和实际数据集进行了实验表明我们所提出的方法的功效。

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