首页> 外文期刊>Pure and Applied Geophysics >Automatic Recognition of Landslides Based on Neural Network Analysis of Seismic Signals: An Application to the Monitoring of Stromboli Volcano (Southern Italy)
【24h】

Automatic Recognition of Landslides Based on Neural Network Analysis of Seismic Signals: An Application to the Monitoring of Stromboli Volcano (Southern Italy)

机译:基于地震信号神经网络分析的滑坡自动识别:在斯特龙博利火山监测中的应用(意大利南部)

获取原文
获取原文并翻译 | 示例
           

摘要

In the last 9 years, the amount and the quality of geophysical and volcanological observations of Stromboli's' activity have undergone a marked increase. This new information highlighted that the landslides on the Sciara del Fuoco flank are tightly linked to the volcanic activity. Actually, at the beginning of the December 28, 2002, effusive eruption, the seismic monitoring network was less dense than now, and therefore it is not known if there was an increase in the landslide rate before the eruption. Despite this, it is known that a big landslide occurred 2 days after the beginning of the eruption which caused a tsunami (December 30, 2002). More recently, the effusive eruption in February 2007 was preceded by an increase in landslides on the Sciara del Fuoco flank, which were recorded by the seismological monitoring system that had been improved after the 2002-2003 crisis. These episodes led us to believe that monitoring the Sciara del Fuoco flank instability is an important topic, and that landslides might be significant short-term precursors of effusive eruptions at the Stromboli volcano. To automatically detect landslide signals, we have developed a specialized neural algorithm. This can distinguish between landslides and the other types of seismic signals usually recorded at the Stromboli volcano (i.e., explosion quakes and volcanic tremor). The discrimination results show an average performance of 98.67 %. According to the experience of the crisis of 2007, to identify changes that can be considered as precursors of effusive eruptions, we set up an automatic decision-making method based on the neural network responses. This method can operate on a continuous data stream. It calculates a landslide percentage index (LPI) that depends on the number of records that are classified by the net as landslides over a given time interval. We tested the method on February 27, 2007, including the beginning of the effusive phase. The index showed an increase as early as at 09:00 UTC on that day and reached its maximum value (100 %) at 12:00, about 40 min before the onset of the eruption. After the beginning of the effusive phase, the index remains high due to the blocks that roll down along the slope from the front of the lava flow. On the basis of these tests, we propose a decision-making method that is able to recognize a trend in the LPI similar to that of 2007 eruption, allowing the identification of precursors of effusive phases at the Stromboli volcano.
机译:在过去的9年中,Stromboli活动的地球物理和火山学观测资料的数量和质量都显着增加。这一新信息突显了Sciara del Fuoco侧翼的滑坡与火山活动紧密相关。实际上,在2002年12月28日爆发性喷发时,地震监测网络的密度不如现在,因此未知喷发前滑坡率是否增加。尽管如此,众所周知,在爆发海啸的两天后(2002年12月30日)发生了大的滑坡。最近,在2007年2月爆发性喷发之前,Sciara del Fuoco侧翼的滑坡增加,而地震监测系统记录了此情况,该系统在2002-2003年危机后得到了改善。这些事件使我们相信,监视Sciara del Fuoco侧翼的不稳定性是一个重要的话题,并且滑坡可能是Stromboli火山喷发的短期重要先兆。为了自动检测滑坡信号,我们开发了一种特殊的神经算法。这可以区分滑坡和通常在斯特龙博利火山上记录的其他类型的地震信号(即爆炸地震和火山震颤)。鉴别结果显示平均性能为98.67%。根据2007年危机的经验,为了确定可以看作是爆发性喷发的前兆的变化,我们建立了基于神经网络响应的自动决策方法。该方法可以对连续数据流进行操作。它计算的滑坡百分比指数(LPI)取决于在给定时间间隔内被网络分类为滑坡的记录数。我们在2007年2月27日对方法进行了测试,其中包括喷射阶段的开始。该指数最早在该天的09:00 UTC出现上升,并在爆发开始前约40分钟的12:00达到最大值(100%)。在流出阶段开始之后,由于块从熔岩流的前端沿着斜坡向下滚动,该指数仍然很高。在这些测试的基础上,我们提出一种决策方法,该方法能够识别LPI中与2007年喷发相似的趋势,从而可以识别Stromboli火山喷发相的前兆。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号