秘鲁萨班卡亚火山爆炸活动的近实时多参数地震和视觉监测

IF 2.4 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Journal of Volcanology and Geothermal Research Pub Date : 2024-05-11 DOI:10.1016/j.jvolgeores.2024.108097
Riky Centeno , Valeria Gómez-Salcedo , Ivonne Lazarte , Javier Vilca-Nina , Soledad Osores , Efraín Mayhua-Lopez
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引用次数: 0

摘要

本研究介绍了多参数系统的开发情况,该系统利用人工智能技术近乎实时地识别和分析火山爆炸。该研究分析了 2019 年至 2021 年期间记录的 1343 次爆炸,以及来自萨班卡亚火山的地震、气象和可见光图像数据。U-Net 卷积神经网络等深度学习算法被用来分割和测量图像中的火山羽流,而基于提升的机器学习集合被用来对与火山灰羽流相关的地震事件进行分类。研究结果表明,这些方法能有效处理地震和火山爆发危机期间产生的大量数据。U-Net 网络实现了对火山羽流的精确分割,准确率超过 98%,并且能够泛化到新数据。CatBoost 分类器对地震事件分类的平均准确率达到 94.5%。这些方法能够在没有人工干预的情况下实时估计火山爆发参数,有助于开发火山灾害预警系统。总之,这项研究强调了利用地震信号和图像近实时检测火山爆发并描述其特征的可行性,为火山监测领域做出了重大贡献。
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Near-real-time multiparametric seismic and visual monitoring of explosive activity at Sabancaya volcano, Peru

This study presents the development of a multiparametric system that utilizes artificial intelligence techniques to identify and analyze volcanic explosions in near real-time. The study analyzed 1343 explosions recorded between 2019 and 2021, along with seismic, meteorological, and visible image data from the Sabancaya volcano. Deep learning algorithms like the U-Net convolutional neural network were used to segment and measure volcanic plumes in images, while boosting-based machine learning ensembles were used to classify seismic events related to ash plumes. The findings demonstrate that these approaches effectively handle large amounts of data generated during seismic and eruptive crises. The U-Net network achieved precise segmentation of volcanic plumes with over 98% accuracy and the ability to generalize to new data. The CatBoost classifier achieved an average accuracy of 94.5% in classifying seismic events. These approaches enable the real-time estimation of eruptive parameters without human intervention, contributing to the development of early warning systems for volcanic hazards. In conclusion, this study highlights the feasibility of using seismic signals and images to detect and characterize volcanic explosions in near real-time, making a significant contribution to the field of volcanic monitoring.

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来源期刊
CiteScore
5.90
自引率
13.80%
发文量
183
审稿时长
19.7 weeks
期刊介绍: An international research journal with focus on volcanic and geothermal processes and their impact on the environment and society. Submission of papers covering the following aspects of volcanology and geothermal research are encouraged: (1) Geological aspects of volcanic systems: volcano stratigraphy, structure and tectonic influence; eruptive history; evolution of volcanic landforms; eruption style and progress; dispersal patterns of lava and ash; analysis of real-time eruption observations. (2) Geochemical and petrological aspects of volcanic rocks: magma genesis and evolution; crystallization; volatile compositions, solubility, and degassing; volcanic petrography and textural analysis. (3) Hydrology, geochemistry and measurement of volcanic and hydrothermal fluids: volcanic gas emissions; fumaroles and springs; crater lakes; hydrothermal mineralization. (4) Geophysical aspects of volcanic systems: physical properties of volcanic rocks and magmas; heat flow studies; volcano seismology, geodesy and remote sensing. (5) Computational modeling and experimental simulation of magmatic and hydrothermal processes: eruption dynamics; magma transport and storage; plume dynamics and ash dispersal; lava flow dynamics; hydrothermal fluid flow; thermodynamics of aqueous fluids and melts. (6) Volcano hazard and risk research: hazard zonation methodology, development of forecasting tools; assessment techniques for vulnerability and impact.
期刊最新文献
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