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首页> 外文期刊>Frontiers in Digital Humanities >Sequential Assimilation of Volcanic Monitoring Data to Quantify Eruption Potential: Application to Kerinci Volcano, Sumatra
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Sequential Assimilation of Volcanic Monitoring Data to Quantify Eruption Potential: Application to Kerinci Volcano, Sumatra

机译:火山监测数据的顺序同化以量化喷发潜力:在苏门答腊凯林奇火山中的应用

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Quantifying the eruption potential of a restless volcano requires the ability to model parameters such as overpressure and calculate the host rock stress state as the system evolves. A critical challenge is developing a model-data fusion framework to take advantage of observational data and provide updates of the volcanic system through time. The Ensemble Kalman Filter (EnKF) uses a Monte Carlo approach to assimilate volcanic monitoring data and update models of volcanic unrest, providing time-varying estimates of overpressure and stress. Although the EnKF has been proven effective to forecast volcanic deformation using synthetic InSAR and GPS data, until now, it has not been applied to assimilate data from an active volcanic system. In this investigation, the EnKF is used to provide a a??hindcasta?? of the 2009 explosive eruption of Kerinci volcano, Indonesia. A two-sources analytical model is used to simulate the surface deformation of Kerinci volcano observed by InSAR time-series data and to predict the system evolution. A deep, deflating dike-like source reproduces the subsiding signal on the flanks of the volcano, and a shallow spherical McTigue source reproduces the central uplift. EnKF predicted parameters are used in finite element models to calculate the host-rock stress state prior to the 2009 eruption. Mohr-Coulomb failure models reveal that the shallow magma reservoir is trending towards tensile failure prior to 2009, which may be the catalyst for the 2009 eruption. Our results illustrate that the EnKF shows significant promise for future applications to forecasting the eruption potential of restless volcanoes and hind-cast the triggering mechanisms of observed eruptions.
机译:量化不安火山的爆发潜力需要能够对诸如超压之类的参数进行建模,并能够随着系统的发展来计算主岩应力状态。一个关键的挑战是开发一种模型-数据融合框架,以利用观测数据并提供火山系统随时间的更新。集合卡尔曼滤波器(EnKF)使用蒙特卡洛方法来吸收火山监测数据并更新火山动荡模型,从而提供对超压和应力的时变估计。尽管EnKF已被证明可以有效地使用合成的InSAR和GPS数据预测火山形变,但迄今为止,它尚未用于吸收活动火山系统中的数据。在此调查中,EnKF用于提供一个“ hindcasta”消息。印度尼西亚Kerinci火山2009年爆发的火山爆发。使用两源分析模型来模拟InSAR时间序列数据所观测到的Kerinci火山的表面变形,并预测系统的演化。一个深的,收缩的,像堤坝一样的震源会在火山的侧面重现沉降信号,而浅球形的麦克蒂格震源会重现中央隆起。 EnKF预测参数用于有限元模型中,以计算2009年喷发之前的岩体应力状态。 Mohr-Coulomb破坏模型显示,浅层岩浆储层在2009年之前趋向于拉伸破坏,这可能是2009年喷发的催化剂。我们的结果表明,EnKF在未来的应用中具有很大的前景,可用于预测不安定火山的爆发潜力,并后发观测到的爆发触发机制。

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