Articles | Volume 10, issue 4
Solid Earth, 10, 1301–1319, 2019
https://doi.org/10.5194/se-10-1301-2019

Special issue: Advances in seismic imaging across the scales

Solid Earth, 10, 1301–1319, 2019
https://doi.org/10.5194/se-10-1301-2019

Research article 05 Aug 2019

Research article | 05 Aug 2019

Monitoring of induced distributed double-couple sources using Marchenko-based virtual receivers

Joeri Brackenhoff et al.

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Cited articles

Aki, K. and Richards, P. G.: Quantitative seismology, University Science Books, 2002. a
Brackenhoff, J.: Rescaling of incorrect source strength using Marchenko redatuming, M.sc. thesis, Delft University of Technology, Delft, Zuid-Holland, the Netherlands, available at: http://resolver.tudelft.nl/uuid:0f0ce3d0-088f-4306-b884-12054c39d5da (last access: 29 July 2019), 2016. a
Brackenhoff, J., Thorbecke, J., and Wapenaar, K.: Virtual sources and receivers in the real Earth, a method for induced seismicity monitoring, arXiv preprint, arXiv:1901.03566, 2019. a, b, c, d
Broggini, F., Snieder, R., and Wapenaar, K.: Focusing the wavefield inside an unknown 1D medium: Beyond seismic interferometry, Geophysics, 77, 25–28, 2012. a
Buijze, L., van den Bogert, P. A., Wassing, B. B., Orlic, B., and ten Veen, J.: Fault reactivation mechanisms and dynamic rupture modelling of depletion-induced seismic events in a Rotliegend gas reservoir, Neth. J. Geosci., 96, 131–148, 2017. a
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Short summary
Earthquakes in the subsurface are hard to monitor due to their complicated signals. We aim to make the monitoring of the subsurface possible by redatuming the sources and the receivers from the surface of the Earth to the subsurface to monitor earthquakes originating from small faults in the subsurface. By using several sources together, we create complex earthquake signals for large-scale faults sources.