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Real-time and short-term anomaly detection for GWAC light curves

机译:GWAC光线曲线的实时和短期异常检测

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Due to the fast development and wide deployment of cloud computing and big data, applications in various industries have shown their unique advantages. Currently, many fields have gained great changes due to benefits brought by big data analysis. This paper accurately and quickly analyzes the data of Ground-based Wide-Angle Camera array (GWAC) based on Grubbs and detects anomaly astronomical events. In this paper, we improved ARIMA model with the dynamic and parallel processing. The model identifies anomaly events that occur in light curves obtained from GWAC as early as possible with high degree of confidence. A major advantage of improved ARIMA is that it can dynamically adjust its model parameters during the real-time processing of the time series data, and increase its efficiency through a multi-process parallel approach. We identify the anomaly points based on the Grubbs and improved ARIMA model. Experimental results with real survey data show that the improved ARIMA model can identify the anomaly points for all light curves. We also evaluate our model with simulated anomaly events of various types embedded in the real time series data. The improved ARIMA model is able to generate the early warning triggers for all of them. These results from the experiments demonstrate that the proposed improved ARIMA model is a promising method for real-time anomaly detection of short time-scale GWAC light curves. (C) 2018 Elsevier B.V. All rights reserved.
机译:由于云计算和大数据的快速发展和广泛部署,各行业的应用都表明了它们的独特优势。目前,由于大数据分析所带来的益处,许多领域已经获得了很大的变化。本文准确迅速分析了基于Grubbs的地面广角相机阵列(GWAC)的数据,并检测异常天文事件。在本文中,我们通过动态和并行处理改进了Arima模型。该模型识别出在从GWAC获得的光曲线中发生的异常事件,尽早具有高度的置信度。改进的Arima的主要优点是它可以在时间序列数据的实时处理期间动态调整其模型参数,并通过多过程并行方法提高其效率。我们识别基于Grubbs和改进的Arima模型的异常点。实验结果与真实调查数据表明,改进的ARIMA模型可以识别所有光曲线的异常点。我们还通过在实时序列数据中嵌入的各种类型的模拟异常事件评估我们的模型。改进的ARIMA模型能够为所有人产生预警触发器。这些结果的实验​​结果表明,所提出的改进的ARIMA模型是用于短时间尺度GWAC光曲线的实时异常检测的有希望的方法。 (c)2018 Elsevier B.v.保留所有权利。

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