Combining Filtering and Cross-Correlation Efficiently for Streaming Time Series

Sheng Zhong, Vinicius M. A. Souza, A. Mueen
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引用次数: 2

Abstract

Monitoring systems have hundreds or thousands of distributed sensors gathering and transmitting real-time streaming data. The early detection of events in these systems, such as an earthquake in a seismic monitoring system, is the base for essential tasks as warning generations. To detect such events is usual to compute pairwise correlation across the disparate signals generated by the sensors. Since the data sources (e.g., sensors) are spatially separated, it is essential to consider the lagged correlation between the signals. Besides, many applications require to process a specific band of frequencies depending on the event’s type, demanding a pre-processing step of filtering before computing correlations. Due to the high speed of data generation and a large number of sensors in these systems, the operations of filtering and lagged cross-correlation need to be efficient to provide real-time responses without data losses. This article proposes a technique named FilCorr that efficiently computes both operations in one single step. We achieve an order of magnitude speedup by maintaining frequency transforms over sliding windows. Our method is exact, devoid of sensitive parameters, and easily parallelizable. Besides our algorithm, we also provide a publicly available real-time system named Seisviz that employs FilCorr in its core mechanism for monitoring a seismometer network. We demonstrate that our technique is suitable for several monitoring applications as seismic signal monitoring, motion monitoring, and neural activity monitoring.
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流时间序列滤波和互相关的有效结合
监控系统有数百或数千个分布式传感器收集和传输实时流数据。在这些系统中对事件的早期发现,例如地震监测系统中的地震,是作为预警代的基本任务的基础。为了检测这些事件,通常需要计算传感器产生的不同信号之间的成对相关性。由于数据源(如传感器)在空间上是分离的,因此必须考虑信号之间的滞后相关性。此外,许多应用程序需要根据事件类型处理特定频带,这就要求在计算相关性之前进行滤波预处理步骤。由于这些系统中数据生成速度快,传感器数量多,滤波和滞后互相关的操作需要高效,才能在不丢失数据的情况下提供实时响应。本文提出了一种名为FilCorr的技术,它可以在一个步骤中有效地计算这两个操作。通过保持滑动窗口上的频率变换,我们实现了一个数量级的加速。该方法具有精度高、无敏感参数、易于并行化等特点。除了我们的算法,我们还提供了一个公开可用的实时系统,名为Seisviz,该系统在其核心机制中使用FilCorr来监测地震仪网络。我们证明了我们的技术适用于地震信号监测、运动监测和神经活动监测等多种监测应用。
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