基于红外高光谱图像的光谱分类方法,实现对埃特纳火山羽流二氧化硫排放通量的近实时估算

Charlotte Segonne, N. Huret, S. Payan, M. Gouhier
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摘要

监测活火山活动通过探测脱气水平的波动,这可能反映岩浆供应速率的变化,并有助于对正在发生的火山喷发进行短期预测。红外高光谱成像仪是一种很少用于火山监测的成像技术,近年来已被部署在各种活火山野外活动中。例如,2015年6月,在IMAGETNA活动期间,超高速长波红外(Hyper-Cam LWIR)的光谱分辨率在850-1300 cm-1 (7.7 - 11.8 µm)之间,光谱分辨率高达0.25 cm-1,提供了基于地面测量埃特纳火山(意大利西西里岛)羽流的高光谱分辨率图像。利用LATMOS (Laboratoire atmosphere ères Milieux Observations Spatiales)大气检索算法(LARA)处理原始数据并检索红外光谱,这是一个鲁棒且完整的辐射传输模型,每张图像的计算时间约为7天。对火山喷发释放的二氧化硫通量进行快速、准确的量化,是评估火山喷发风险缓解效果的主要途径之一。在这种情况下,利用在埃特纳火山IMAGETNA活动期间获得的数据集,开发了一种光谱分类方法,大大减少了计算时间,并达到了近乎实时的二氧化硫斜柱密度检索。该方法基于O3和SO2发射波段光谱特征提取的两层信息构建的网络。使用耗时的逐像素检索方法检索五个SO2倾斜柱密度图像的训练数据集允许创建一个库。光谱分类使得在不到40秒的时间内处理每张高光谱图像成为可能。它开启了从红外高光谱成像仪测量推断二氧化硫发射通量的近实时估计的可能性。
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A spectra classification methodology of infrared hyperspectral images to reach near real-time SO2 emission flux estimation of Mount Etna plume

Monitoring active volcanoes activity passes through the detection of fluctuations in degassing levels which may reflect changes in the magma supply rate and help inform a short-term forecast of on-going eruptions. Infrared hyperspectral imagers, which is an imaging technology still little used for volcanoes monitoring, have been deployed for various field campaigns on active volcanoes recently. For example, the Hyper-Cam LWIR (LongWave InfraRed) ranging between 850-1300 cm-1 (7.7 - 11.8 µm) with a spectral resolution up to 0.25 cm-1, provided high spectral resolution images from ground-based measurements of the Mount Etna (Sicily, Italy) plume during IMAGETNA campaign in June 2015. Processing the raw data and retrieving the infrared spectra with the LATMOS (Laboratoire Atmosphères Milieux Observations Spatiales) Atmospheric Retrieval Algorithm (LARA), a robust and a complete radiative transfer model, require a calculation time of ~7 days per image.

One of the main ways of risk mitigation effects of explosive eruptions is to get a fast and accurate quantification of SO2 fluxes emitted by volcanoes. In this context, using the dataset acquired during IMAGETNA campaign at Mount Etna, a spectra classification methodology has been developed to drastically decrease the calculation time and reach near real-time retrievals of SO2 slant column densities. The methodology is based on a network built on two layers of information from the extraction of spectral features in the O3 and SO2 emission bands. A training dataset of five SO2 slant column densities images retrieved with the time-consuming pixel-by-pixel retrieval method allowed the creation of a library. The spectra classification makes it possible to process each hyperspectral image in less than 40 seconds. It opens the possibility to infer near real-time estimation of SO2 emission fluxes from IR hyperspectral imager measurements.

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