Automatic Detection of Volcanic Unrest Using Blind Source Separation with a Minimum Spanning Tree Based Stability Analysis

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autoren

  • Binayak Ghosh
  • Mahdi Motagh
  • Mahmud Haghshenas Haghighi
  • Magdalena Stefanova Vassileva
  • Thomas R. Walter
  • Setareh Maghsudi

Externe Organisationen

  • Technische Universität Berlin
  • Helmholtz-Zentrum Potsdam Deutsches GeoForschungsZentrum (GFZ)
  • Eberhard Karls Universität Tübingen
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Details

OriginalspracheEnglisch
Aufsatznummer9490365
Seiten (von - bis)7771-7787
Seitenumfang17
FachzeitschriftIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
Jahrgang14
PublikationsstatusVeröffentlicht - 19 Juli 2021

Abstract

Repeated synthetic aperture radar (SAR) acquisitions can be utilized to produce measurements of ground deformations and associated geohazards, such as it can be used to detect signs of volcanic unrest. Existing time series algorithms like permanent scatterer analysis and small baseline subset are computationally demanding and cannot be applied in near real time to detect subtle, transient, and precursory deformations. To overcome this problem, we have adapted a minimum spanning tree based spatial independent component analysis method to automatically detect sources related to volcanic unrest from a time series of differential interferograms. For a synthetic dataset, we first utilize the algorithm's capability to isolate signals of geophysical interest from atmospheric artifacts, topography, and other noise signals, before monitoring the evolution of these signals through time in order to detect the onset of a period of volcanic unrest, in near real time. In this article, we first demonstrate our approach on synthetic datasets having different signal strengths and temporal complexities. Second, we demonstrate our approach on a couple of real datasets, one acquired in 2017-2019 over the Colima volcano, Mexico, showing the occurrence of previously unrecognized short-term deformation events and the other over Mt. Thorbjorn in Iceland acquired over 2020. This shows the strength of the deep learning application to differential interferometric SAR measurements, and highlights that deformation events occurring without eruptions, which may have previously been undetected.

ASJC Scopus Sachgebiete

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Automatic Detection of Volcanic Unrest Using Blind Source Separation with a Minimum Spanning Tree Based Stability Analysis. / Ghosh, Binayak; Motagh, Mahdi; Haghighi, Mahmud Haghshenas et al.
in: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Jahrgang 14, 9490365, 19.07.2021, S. 7771-7787.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Ghosh B, Motagh M, Haghighi MH, Vassileva MS, Walter TR, Maghsudi S. Automatic Detection of Volcanic Unrest Using Blind Source Separation with a Minimum Spanning Tree Based Stability Analysis. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing. 2021 Jul 19;14:7771-7787. 9490365. doi: 10.1109/JSTARS.2021.3097895
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abstract = "Repeated synthetic aperture radar (SAR) acquisitions can be utilized to produce measurements of ground deformations and associated geohazards, such as it can be used to detect signs of volcanic unrest. Existing time series algorithms like permanent scatterer analysis and small baseline subset are computationally demanding and cannot be applied in near real time to detect subtle, transient, and precursory deformations. To overcome this problem, we have adapted a minimum spanning tree based spatial independent component analysis method to automatically detect sources related to volcanic unrest from a time series of differential interferograms. For a synthetic dataset, we first utilize the algorithm's capability to isolate signals of geophysical interest from atmospheric artifacts, topography, and other noise signals, before monitoring the evolution of these signals through time in order to detect the onset of a period of volcanic unrest, in near real time. In this article, we first demonstrate our approach on synthetic datasets having different signal strengths and temporal complexities. Second, we demonstrate our approach on a couple of real datasets, one acquired in 2017-2019 over the Colima volcano, Mexico, showing the occurrence of previously unrecognized short-term deformation events and the other over Mt. Thorbjorn in Iceland acquired over 2020. This shows the strength of the deep learning application to differential interferometric SAR measurements, and highlights that deformation events occurring without eruptions, which may have previously been undetected.",
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Download

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T1 - Automatic Detection of Volcanic Unrest Using Blind Source Separation with a Minimum Spanning Tree Based Stability Analysis

AU - Ghosh, Binayak

AU - Motagh, Mahdi

AU - Haghighi, Mahmud Haghshenas

AU - Vassileva, Magdalena Stefanova

AU - Walter, Thomas R.

AU - Maghsudi, Setareh

N1 - Funding Information: Manuscript received May 5, 2021; revised June 14, 2021; accepted July 1, 2021. Date of publication July 19, 2021; date of current version August 18, 2021. This work was supported by the HEIBRiDS Research School (https: //www.heibrids.berlin/) and in part by the Helmholtz Incubator Pilot Project TECVOLSA. (Corresponding author: Binayak Ghosh.) Binayak Ghosh is with the GFZ German Research Centre for Geosciences, Technical University Berlin, 10623 Berlin, Germany (e-mail: binghosh@gmail.com).

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N2 - Repeated synthetic aperture radar (SAR) acquisitions can be utilized to produce measurements of ground deformations and associated geohazards, such as it can be used to detect signs of volcanic unrest. Existing time series algorithms like permanent scatterer analysis and small baseline subset are computationally demanding and cannot be applied in near real time to detect subtle, transient, and precursory deformations. To overcome this problem, we have adapted a minimum spanning tree based spatial independent component analysis method to automatically detect sources related to volcanic unrest from a time series of differential interferograms. For a synthetic dataset, we first utilize the algorithm's capability to isolate signals of geophysical interest from atmospheric artifacts, topography, and other noise signals, before monitoring the evolution of these signals through time in order to detect the onset of a period of volcanic unrest, in near real time. In this article, we first demonstrate our approach on synthetic datasets having different signal strengths and temporal complexities. Second, we demonstrate our approach on a couple of real datasets, one acquired in 2017-2019 over the Colima volcano, Mexico, showing the occurrence of previously unrecognized short-term deformation events and the other over Mt. Thorbjorn in Iceland acquired over 2020. This shows the strength of the deep learning application to differential interferometric SAR measurements, and highlights that deformation events occurring without eruptions, which may have previously been undetected.

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KW - independent component analysis (ICA)

KW - interferometric synthetic aperture radar (InSAR)

KW - Mexico

KW - minimum spanning tree

KW - MtThorbjorn

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JO - IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing

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