首页> 外文期刊>Journal of Volcanology and Geothermal Research >Detection And Identification Of Seismic Signals Recorded At Krakatau Volcano (indonesia) Using Artificial Neural Networks
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Detection And Identification Of Seismic Signals Recorded At Krakatau Volcano (indonesia) Using Artificial Neural Networks

机译:利用人工神经网络检测和识别喀拉喀托火山(印度尼西亚)记录的地震信号

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The Anak Krakatau volcano (Indonesia) has been monitored by a multi-parametric system since 2005. A variety of signal types can be observed in the records of the seismic stations installed on the island volcano. These include volcano-induced signals such as LP, VT, and tremor-type events as well as signals not originating from the volcano such as regional tectonic earthquakes and transient noise signals. The work presented here aims at the realization of a system that automatically detects and identifies the signals in order to estimate and monitor current activity states of the volcano. An artificial neural network approach was chosen for the identification task. A set of parameters was defined, describing waveform and spectrogram properties of events detected by an amplitude-ratio-based (STA/LTA) algorithm. The parameters are fed into a neural network which is, after a training phase, able to generalize input data and identify corresponding event types. The success of the identification depends on the network architecture and training strategy. Several tests have been performed in order to determine appropriate network layout and training for the given problem. The performance of the final system is found to be well suited to get an overview of the seismic activity recorded at the volcano. The reliability of the network classifier, as well as general drawbacks of the methods used, are discussed.
机译:自2005年以来,Anak Krakatau火山(印度尼西亚)已通过多参数系统进行了监视。在岛上火山中安装的地震台站的记录中可以观察到多种信号类型。这些信号包括火山爆发的信号(例如LP,VT和震颤类型的事件)以及非火山爆发的信号(例如区域构造地震和瞬态噪声信号)。本文介绍的工作旨在实现一种系统,该系统可自动检测和识别信号,以便估计和监视火山的当前活动状态。为识别任务选择了人工神经网络方法。定义了一组参数,这些参数描述了由基于振幅比率(STA / LTA)算法检测到的事件的波形和频谱图属性。将参数输入到神经网络中,该神经网络在训练阶段之后能够概括输入数据并标识相应的事件类型。识别成功与否取决于网络架构和培训策略。为了确定适当的网络布局和针对给定问题的培训,已进行了几次测试。发现最终系统的性能非常适合获得火山记录的地震活动的概况。讨论了网络分类器的可靠性以及所用方法的一般缺点。

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