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Probabilistic Reasoning Over Seismic Time Series: Volcano Monitoring by Hidden Markov Models at Mt. Etna

机译:地震时间序列上的概率推理:通过隐马尔可夫模型对火山进行监测。埃特纳火山

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From January 2011 to December 2015, Mt. Etna was mainly characterized by a cyclic eruptive behavior with more than 40 lava fountains from New South-East Crater. Using the RMS (Root Mean Square) of the seismic signal recorded by stations close to the summit area, an automatic recognition of the different states of volcanic activity (QUIET, PRE-FOUNTAIN, FOUNTAIN, POST-FOUNTAIN) has been applied for monitoring purposes. Since values of the RMS time series calculated on the seismic signal are generated from a stochastic process, we can try to model the system generating its sampled values, assumed to be a Markov process, using Hidden Markov Models (HMMs). HMMs analysis seeks to recover the sequence of hidden states from the observations. In our framework, observations are characters generated by the Symbolic Aggregate approXimation (SAX) technique, which maps RMS time series values with symbols of a pre-defined alphabet. The main advantages of the proposed framework, based on HMMs and SAX, with respect to other automatic systems applied on seismic signals at Mt. Etna, are the use of multiple stations and static thresholds to well characterize the volcano states. Its application on a wide seismic dataset of Etna volcano shows the possibility to guess the volcano states. The experimental results show that, in most of the cases, we detected lava fountains in advance.
机译:从2011年1月到2015年12月,埃特纳火山(Etna)的主要特征是周期性的喷发行为,其中有40多个来自新东南火山口的熔岩喷泉。利用靠近山顶区域的站点所记录的地震信号的RMS(均方根),已将自动识别火山活动的不同状态(安静,前喷泉,喷泉,后喷泉)用于监视目的。由于在地震信号上计算出的RMS时间序列的值是从随机过程中生成的,因此我们可以尝试使用隐马尔可夫模型(HMM)对生成其采样值的系统进行建模,假设该采样值为Markov过程。 HMMs分析试图从观测值中恢复隐藏状态的序列。在我们的框架中,观察值是由符号聚合近似(SAX)技术生成的字符,该技术将RMS时间序列值与预定义字母的符号进行映射。相对于应用于Mt地震信号的其他自动系统,基于HMM和SAX提出的框架的主要优势。埃特纳火山(Etna)使用多个站点和静态阈值来很好地描述火山状态。它在埃特纳火山的广泛地震数据集上的应用表明了猜测火山状态的可能性。实验结果表明,在大多数情况下,我们是提前检测到熔岩喷泉的。

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