SEG Technical Program Expanded Abstracts 2019 2019
DOI: 10.1190/segam2019-3215138.1
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Internal multiple attenuation for OBN data with overburden/target separation

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Cited by 14 publications
(12 citation statements)
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“…The latter are then (indirectly) used in an Amundsen et al (2001)-like multidimensional deconvolution (MDD) to remove the effect of overburden-borne reverberations on the target primary reflections. Thus far, the Marchenko equation-based approach had been tested in settings where source signature estimation was not a limiting factor (Staring et al, 2018;Pereira et al, 2018Pereira et al, , 2019. Alternatively, given multicomponent data, Ravasi et al (2016) suggest deconvolving the upgoing and downgoing wavefields, which results in data free from (a) surface-related multiples and (b) the source signature.…”
mentioning
confidence: 99%
“…The latter are then (indirectly) used in an Amundsen et al (2001)-like multidimensional deconvolution (MDD) to remove the effect of overburden-borne reverberations on the target primary reflections. Thus far, the Marchenko equation-based approach had been tested in settings where source signature estimation was not a limiting factor (Staring et al, 2018;Pereira et al, 2018Pereira et al, , 2019. Alternatively, given multicomponent data, Ravasi et al (2016) suggest deconvolving the upgoing and downgoing wavefields, which results in data free from (a) surface-related multiples and (b) the source signature.…”
mentioning
confidence: 99%
“…Since the sources and receivers stay at the surface, the output R ddr can be directly compared with the input data R, which is advantageous for quality control. Pereira et al (2019) apply a modified version of this method to suppress first order internal multiples from a 3D deep water OBN dataset. and Staring et al (2021) apply the method to shallow water numerical and field datasets, demonstrating the significance of including higher order terms to suppress internal multiples caused by a complex overburden.…”
Section: Retrieval Of Extrapolated Focusing Functionsmentioning
confidence: 99%
“…To make the Marchenko method less sensitive to the macro model, it was proposed to extrapolate the virtual sources and receivers upward to the acquisition surface van der Neut and Wapenaar, 2016). This led to a class of Marchenko multiple elimination methods, i.e., methods in which the sources and receivers stay at the surface while the internal multiples are eliminated from the data (Zhang et al, 2019a,b;Pereira et al, 2019;Elison et al, 2020;Dukalski and de Vos, 2020;Meles et al, 2020;Staring et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…Wapenaar et al (2017) derive the homogeneous Green's function retrieval scheme from the Marchenko equations, where the homogeneous Green's function between any two points inside a medium can be retrieved from the measured single-sided reflection response. Ravasi et al (2016), Jia et al (2018), Staring et al (2018), Pereira et al (2019), andMildner et al (2019) apply the Marchenko method successfully on field data. Sripanich et al (2019) derive a method that can estimate initial focusing functions from data and does not rely on a velocity model for mildly varying media.…”
Section: Introductionmentioning
confidence: 99%