首页> 外文期刊>Journal of South American earth sciences >Advanced signal recognition methods applied to seismo-volcanic events from Planchon Peteroa Volcanic Complex: Deep Neural Network classifier
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Advanced signal recognition methods applied to seismo-volcanic events from Planchon Peteroa Volcanic Complex: Deep Neural Network classifier

机译:应用于普拉森彼得罗省Volcanic复合体的地震火山事件的高级信号识别方法:深神经网络分类器

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摘要

Advanced techniques in the recognition and classification of seismo-volcanic events are transcendental when studying active volcanoes, not only for their importance as an accurate real time seismic monitoring procedure but also for the use of their results in modeling the dynamics of the volcanic environment. It is well known that real time seismic monitoring deals with such a large amount of data that it would become an overwhelming job for an operator to do manually. Therefore the use of automatic detection and classification techniques based on the Machine Learning approach are suitable in meeting such a challenge.The aim of this work is to test the capability of the Deep Neural Network (DNN) by using different event parametrization as a confident classifier tool that could permit a reliable seismic catalog to be built in a new and un-analyzed volcanic scenario. We tested different configurations in order to build an approach that was as simple as possible to use this classifier with a limited number of events. In this regard, the feature space was explored in order to select the most significant parameters of the seismic signals. The data used for this analysis corresponds to the Planchon Peteroa Volcanic Complex (PPVC) located in the Transitional Southern Volcanic Zone (TSVZ) between Chile and Argentina, South America. The most significant result of this work was not only that it provided an analysis in terms of performance of this algorithm, especially when the training, validation and test dataset is reliable although definitely reduced, but it also gave an insight of into how an optimal event parametrization can significantly improve the automatic detection and classification of seismo-volcanic events.
机译:在研究活性火山的情况下,Seismo-Volcanic事件的识别和分类中的先进技术是在学习活性的火山时,不仅仅是为了它们作为准确的实时地震监测程序的重要性,而且为了利用它们的结果,在模拟火山环境的动态方面。众所周知,实时地震监测处理如此大量的数据,即它将成为操作员手动做的压倒性工作。因此,使用基于机器学习方法的自动检测和分类技术适用于满足这种挑战。这项工作的目的是通过使用不同的事件参数化作为自信的分类器来测试深神经网络(DNN)的能力工具可以允许在新的和未分析的火山场景中建立可靠的地震目录。我们测试了不同的配置,以便构建一种尽可能简单的方法,以使用该分类器具有有限数量的事件。在这方面,探讨了特征空间,以便选择地震信号的最重要参数。该分析用于该分析的数据对应于位于智利和阿根廷,南美洲之间的过渡南部火山区(TSVZ)的普林斯彼得罗瓦火山复合物(PPVC)。这项工作的最重要结果不仅提供了在这种算法的性能方面提供了分析,特别是当训练,验证和测试数据集可靠,但虽然肯定会降低,但它也介绍了如何实现最佳事件参数化可以显着提高地震火山事件的自动检测和分类。

著录项

  • 来源
    《Journal of South American earth sciences》 |2021年第4期|103115.1-103115.12|共12页
  • 作者单位

    Univ Nacl La Plata Fac Astron & Geophys Sci Dept Seismol CONICET Av Centenario S-N La Plata Argentina;

    Univ Granada Dept Signal Theory Telemat & Commun C Periodista Daniel Saucedo Aranda S-N E-18071 Granada Spain;

    Univ Granada Dept Signal Theory Telemat & Commun C Periodista Daniel Saucedo Aranda S-N E-18071 Granada Spain;

    Univ Nacl La Plata Fac Astron & Geophys Sci Dept Seismol CONICET Av Centenario S-N La Plata Argentina|Argentine Geol Min Serv SEGEMAR Argentine Observ Volcan Surveillance OAVV Av Gen Paz 5445 Colectora Parque Tecnol Miguelete Buenos Aires DF Argentina;

    Consejo Nacl Invest Cient & Tecn Argentine Geol Min Serv SEGEMAR Av Gral Paz 5445 Edificio 25 Buenos Aires DF Argentina;

    Argentine Geol Min Serv SEGEMAR Argentine Observ Volcan Surveillance OAVV Av Gen Paz 5445 Colectora Parque Tecnol Miguelete Buenos Aires DF Argentina;

    Univ Granada Dept Theoret Phys & Cosmol Fac Sci Area Phys Earth Edificio Mecenas Campus Fuentenueva E-18071 Granada Spain|Univ Granada Andalusian Inst Geophys & Earthquake Disaster Pre C Prof Clavera 12 Granada 18071 Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Peteroa volcano; Volcanic seismology; Automatic seismo-volcanic classification; Seismic parameters selection;

    机译:Peteroa火山;火山地震学;自动地震 - 火山分类;地震参数选择;
  • 入库时间 2022-08-19 01:57:19

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