2019
DOI: 10.1190/geo2018-0504.1
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Automatic 3D illumination-diagnosis method for large-N arrays: Robust data scanner and machine-learning feature provider

Abstract: Automatic 3D illumination-diagnosis method for large-N arrays: robust data scanner and machine-learning feature provider Chamarczuk, M.; Malinowski, M.; Nishitsuji, Yohei; Thorbecke, Jan Willem; Koivisto, E.; Heinonen, S.; Juurela, S.; Mężyk, M.; Draganov, Deyan ABSTRACTThe main issues related to passive-source reflection imaging with seismic interferometry are inadequate acquisition parameters for sufficient spatial wavefield sampling and vulnerability of surface arrays to the dominant influence of the omni-p… Show more

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Cited by 16 publications
(16 citation statements)
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“…To characterize the passive seismic wavefield at higher frequencies, we applied a plane-wave cross-correlation beamforming method (similar to illumination diagnosis, see Almagro Vidal et al, 2014;Chamarczuk et al, 2019) using a subarray and 1 min time windows filtered between 15 and 40 Hz (results in Fig. 4).…”
Section: Data Processing and Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…To characterize the passive seismic wavefield at higher frequencies, we applied a plane-wave cross-correlation beamforming method (similar to illumination diagnosis, see Almagro Vidal et al, 2014;Chamarczuk et al, 2019) using a subarray and 1 min time windows filtered between 15 and 40 Hz (results in Fig. 4).…”
Section: Data Processing and Resultsmentioning
confidence: 99%
“…For example, when there exists sufficient time-separable sources, such as microearthquakes, they can be used directly for imaging (Reshetnikov et al, 2010;Chaput et al, 2012Chaput et al, , 2015. When sources are not time separable, it is still possible to evaluate noise over time to select periods when there exists high ratios of body-to surface-wave energy based on apparent velocity analysis (Draganov et al, 2013;Almagro Vidal et al, 2014;Cheraghi et al, 2015;Chamarczuk et al, 2019). There are also many studies that utilize trains passing on nearby railways as strong sources of body-wave energy (Quiros et al, 2016;Brenguier et al, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…In 1908, geologists found an ore containing boulder some 50 km away from the bedrock hosted copper deposit that later developed into the Outokumpu mine. During the past hundred years, Outokumpu-type sulfide deposits have been discovered in a zone covering an area of about 4500 km 2 . The Kylylahti polymetallic sulfide deposit was discovered in 1984 [11].…”
Section: Geology and Survey Layoutmentioning
confidence: 99%
“…Seismic methods can be used to image subsurface geological features at high resolution down to several kilometers depth but are often considered expensive by the mineral exploration industry. The COGITO-MIN project (COst-effective Geophysical Imaging Techniques for supporting Ongoing MINeral exploration in Europe) investigated and developed cost-effective seismic exploration techniques [1] including passive seismic interferometry [2] and distributed-acoustic sensing vertical seismic profiling [3]. A major part of the cost of seismic surveys is attributed to the seismic source and the large field crews operating and moving the seismic receivers.…”
Section: Introductionmentioning
confidence: 99%
“…In the case of ambient noise recordings focused on body-wave reflection retrieval, the selective-stacking approach can be automated and improved by introducing the algorithms that could sift through massive volumes of continuous data in order to identify coherent noise sources, which contribute constructively to the stacked EGFs. The automatic detection of noise records (noise panels) containing body-wave energy (hereinafter referred to as body-wave events) evaluated using large-N (i.e., large receiver number) array was already tackled by Chamarczuk et al [22], who applied support vector machine (SVM), a supervised machine-learning (ML) algorithm, in combination with a cross-correlated wavefield evaluation in the tau-p (intercept time-slowness) domain and predefined body-wave velocity limits. Recently, deep learning approaches have been also utilized for detection purposes in passive seismic recordings.…”
Section: Introductionmentioning
confidence: 99%