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YASA: Yet Another Time Series Segmentation Algorithm for Anomaly Detection in Big Data Problems

机译:Yasa:又是大数据问题异常检测的另一个时间序列分割算法

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Time series patterns analysis had recently attracted the attention of the research community for real-world applications. Petroleum industry is one of the application contexts where these problems are present, for instance for anomaly detection. Offshore petroleum platforms rely on heavy turbomachines for its extraction, pumping and generation operations. Frequently, these machines are intensively monitored by hundreds of sensors each, which send measurements with a high frequency to a concentration hub. Handling these data calls for a holistic approach, as sensor data is frequently noisy, unreliable, inconsistent with a priori problem axioms, and of a massive amount. For the anomalies detection problems in turbomachinery, it is essential to segment the dataset available in order to automatically discover the operational regime of the machine in the recent past. In this paper we propose a novel time series segmentation algorithm adaptable to big data problems and that is capable of handling the high volume of data involved in problem contexts. As part of the paper we describe our proposal, analyzing its computational complexity.We also perform empirical studies comparing our algorithm with similar approaches when applied to benchmark problems and a real-life application related to oil platform turbomachinery anomaly detection.
机译:时间序列模式分析最近吸引了研究界的实际应用的关注。石油工业是这些问题存在的应用上下文之一,例如用于异常检测。海上石油平台依靠重型涡轮机,以进行其提取,泵送和发电操作。通常,这些机器由数百个传感器集中监测,每个传感器将以高频率发送到浓度轮毂的测量。处理这些数据呼叫全面方法,因为传感器数据经常嘈杂,不可靠,与先验问题公理和大量不一致。对于涡轮机中的异常检测问题,必须将数据集进行分割,以便在最近的过去自动发现机器的运营制度。在本文中,我们提出了一种适用于大数据问题的新型时间序列分割算法,并且能够处理问题上下文中涉及的大量数据。作为本文的一部分,我们描述了我们的建议,分析了其计算复杂性。我们还表现了在应用于基准问题的基准问题和与石油平台涡轮机械异常检测相关方法时具有相似方法的算法的实证研究。

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