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首页> 外文期刊>Bulletin of the Seismological Society of America >Automatic discrimination among landslide, explosion-quake, and microtremor seismic signals at Stromboli volcano using neural networks
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Automatic discrimination among landslide, explosion-quake, and microtremor seismic signals at Stromboli volcano using neural networks

机译:使用神经网络自动识别Stromboli火山的滑坡,地震和微震地震信号

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In this article we report on the implementation of an automatic system for discriminating landslide seismic signals on Stromboli island (southern Italy). This is a critical point for monitoring the evolution of this volcanic island, where at the end of 2002 a violent tsunami occurred, triggered by a big landslide. We have devised a supervised neural system to discriminate among landslide, explosion-quake, and volcanic microtremor signals. We first preprocess the data to obtain a compact representation of the seismic records. Both spectral features and amplitude-versus-time information have been extracted from the data to characterize the different types of events. As a second step, we have set up a supervised classification system, trained using a subset of data (the training set) and tested on another data set (the test set) not used during the training stage. The automatic system that we have realized is able to correctly classify 99% of the events in the test set for both explosion-quake/ landslide and explosion-quake/microtremor couples of classes, 96% for landslide/ microtremor discrimination, and 97% for three-class discrimination (landslides/ explosion-quakes/microtremor). Finally, to determine the intrinsic structure of the data and to test the efficiency of our parametrization strategy, we have analyzed the preprocessed data using an unsupervised neural method. We apply this method to the entire dataset composed of landslide, microtremor, and explosion-quake signals. The unsupervised method is able to distinguish three clusters corresponding to the three classes of signals classified by the analysts, demonstrating that the parametrization technique characterizes the different classes of data appropriately.
机译:在本文中,我们报告了用于识别Stromboli岛(意大利南部)的滑坡地震信号自动系统的实施情况。这是监测该火山岛演变的关键点,该火山岛在2002年底发生了由大滑坡引发的暴力海啸。我们设计了一种监督神经系统,以区分滑坡,爆炸和火山微震信号。我们首先对数据进行预处理以获得地震记录的紧凑表示。已从数据中提取了频谱特征和幅度与时间的信息,以表征不同类型的事件。第二步,我们建立了一个监督分类系统,使用一个数据子集(训练集)进行训练,并在训练阶段未使用的另一个数据集(测试集)上进行测试。我们认识到的自动系统能够正确分类测试集中爆炸/滑坡和爆炸/微震情侣对类别中99%的事件,对于滑坡/微震判别类别为96%,对于爆炸/微震判别类别为97%三类歧视(滑坡/爆炸/微震)。最后,为了确定数据的内在结构并测试我们的参数化策略的效率,我们使用无监督神经方法分析了预处理数据。我们将此方法应用于由滑坡,微震和爆炸信号组成的整个数据集。这种无监督的方法能够区分与分析人员分类的三类信号相对应的三个聚类,这表明参数化技术可以恰当地表征不同类别的数据。

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