首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Blind Signal Separation Methods for InSAR: The Potential to Automatically Detect and Monitor Signals of Volcanic Deformation
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Blind Signal Separation Methods for InSAR: The Potential to Automatically Detect and Monitor Signals of Volcanic Deformation

机译:盲管信号分离方法:自动检测和监测火山变形信号的潜力

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There are some 1,500 volcanoes with the potential to erupt, but most are not instrumentally monitored. However, routine acquisition by the Sentinel-1 satellites now fulfils the requirements needed for interferometric synthetic aperture radar (InSAR) to progress from a retrospective analysis tool to one used for near-real-time monitoring globally. However, global monitoring produces vast quantities of data, and consequently, an automatic detection algorithm is therefore required that is able to identify signs of new deformation, or changes in rate, in a time series of interferograms. On the basis that much of the signal contained in a time series of interferograms can be considered as a linear mixture of several latent sources, we explore the use of blind source separation methods to address this issue. We consider principal component analysis and independent component analysis (ICA) which have previously been applied to InSAR data and nonnegative matrix factorization which has not. Our systematic analysis of the three methods shows ICA to be best suited for most applications with InSAR data. However, care must be taken in the dimension reduction step of ICA not to remove important smaller magnitude signals. We apply ICA to the 2015 Wolf Volcano eruption (Galapagos Archipelago, Ecuador) and automatically isolate three signals, which are broadly similar to those manually identified in other studies. Finally, we develop a prototype detection algorithm based on ICA to identify the onset of the eruption.
机译:有一些1,500个火山有潜力爆发,但大多数都没有乐于乐意监测。然而,Sentinel-1卫星的常规采集现在满足干涉性合成孔径雷达(INSAR)从回顾性分析工具到用于全球近实时监控的所需的要求。然而,全局监测产生大量数据,因此需要一种自动检测算法,其能够在一次干扰图中识别新变形的迹象或速率变化。在基础上,在一次时间序列的时间序列中包含的许多信号可以被视为几个潜在来源的线性混合,我们探讨了使用盲源分离方法来解决这个问题。我们考虑主成分分析和独立的分量分析(ICA),这些分析(ICA)已经应用于insar数据和非负矩阵分组,其没有。我们对这三种方法的系统分析表明,ICA最适合具有INSAR数据的大多数应用。但是,必须在ICA的尺寸减小步骤中进行护理,而不是去除重要的较小幅度信号。我们将ICA申请到2015年狼火山爆发(加拉帕戈斯群岛,厄瓜多尔),并自动隔离三个信号,这与其他研究中手动识别的那些相似。最后,我们开发了一种基于ICA的原型检测算法,以识别爆发的开始。

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