Muography. Группа авторов

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Muography - Группа авторов


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of plume rise (Witsil & Johnson, 2020) helped to characterize and elucidate eruptions’ behavior. ML‐based analysis of time series of gas emission, gravimetric, and tilting data alerted us one day before the occurrence of flank eruptions (Brancato et al., 2019). Deep learning‐based image analysis procedures allowed us to classify volcano deformations (Anantrasirichai et al., 2018; Gaddes et al., 2019) and understand how lava flows occurred (Corradino et al., 2019), and demonstrated its applicability for automatic prediction of future volcano behavior.

      Currently, only the Sakurajima volcano shows persistent activity among the volcanoes that are continuously monitored with muography during recent years (D'Alessandro et al., 2019; Le Gonidec et al., 2019; Lo Presti et al., 2020; Oláh et al., 2019b). The Sakurajima volcano is an andesitic composite volcano formed on the Aira caldera in Kagoshima Bay, Kyushu, Japan. The last plinian eruption occurred in 1914. A recent study has shown that the magma supply rate of the Aira caldera amassed enough magma within approx. 130 years to feed a plinian type eruption (Hickey et al., 2016). The two craters, Minamidake and Showa, have erupted explosively more than 3,000 times in the last five years (Japan Meteorological Agency, 2020). The mechanism of these vulcanian type eruptions (Iguchi et al., 2008; Kazahaya et al., 2016) is reviewed in another chapter of this monograph (Oláh & Tanaka, 2021). During these eruptions, one of the two active craters ejected aerosols and gas with a bulk volume of below 107m to a height of 1,000–5,000 m above the crater rims, throwing fragments of volcanic plug and lava bombs usually within approx. 3,000 m radius. Although sometimes the injected ash cloud reached Kagoshima City and caused difficulties to the local transport, the activity of the Sakurajima volcano usually impacts the nearby area that is continuously visited by tourists. The constant threat to this area motivates the improvement and coordination of volcano monitoring techniques. The forecasting of short‐term eruptions of the Sakurajima volcano is a good candidate for using ML techniques to automate muographic image processing. The Multi‐Wire‐Proportional‐Chamber (MWPC)‐based Muography Observation System (MMOS) (Oláh et al., 2018b, 2019a; Varga et al., 2015, 2016, 2020) of Sakurajima Muography Observatory (SMO) has acquired sufficient amounts of data since 2018 to study the feasibility and limits of forecasting short‐term, vulcanian type eruptions.

      In this chapter, we focus on how ML techniques can process muographic images captured through the Sakurajima volcano for the forecasting of impending vulcanian type eruptions. Our analysis is based on recently developed methods that are applied on new data sets collected by the MMOS during the eruption episodes of the Minamidake crater occurring between October 2018 and July 2020.

      In this section, we review how the muographic images are produced and prepared for ML‐based data processing. The MWPC‐based Muography Observation System operates with ten tracking systems in the SMO at a distance of approx. 2,800 m from the active craters of the Sakurajima volcano. Currently, all tracking systems are oriented towards the Showa crater at the same site to maximize the detection acceptance and thus the number of muons which are observed with a flux of 0.02 to 0.2 1/cm2/sr/day through the kilometer‐thick crater regions. Other chapters of this monograph describe the applied detector technology (Varga et al., 2021) as well as the experimental setup and data analysis methods (Oláh & Tanaka, 2021).

Schematic illustration of the data flow diagram of MWPC-based Muography Observation System. Schematic illustration of three muograms captured by MWPC-based Muography Observation System, corresponding to three consecutive days.


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