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Full Waveform Inversion for Di raction Energy

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dc.contributor.author Sethi, Harpreet singh
dc.date.accessioned 2019-05-22T05:16:39Z
dc.date.available 2019-05-22T05:16:39Z
dc.date.issued 2015
dc.identifier.uri http://hdl.handle.net/123456789/14434
dc.description.abstract The identi cation of the small scale geological heterogeneities like pinchouts,faults ,fractures etc is a primary problem in seismics.They hold a signi cant importance in understanding the geology of a particular area as they can act as structural traps for accumulation of hydrocarbons or can behave as migration pathways aiding the escape of the hydrocarbons. Standard approaches to obtain this high-resolution information, such as coherency analysis and structure-oriented lters, derive attributes from stacked, migrated images are image-driven.These techniques are sensitive to artifacts due to an inadequate migration velocity; in fact the attribute derivation is even not based on the physics of wave propagation. These small scale features are usually encoded in the form of di ractions in our seismic data.Thus a seismic section containing only di ractions could be of great value to the interpreter .Di ractions are the other coherent events present along with the re ections in our seismic data. There are some fundamental di erences between re ections and di ractions like di erent moveout, amplitude etc which can facilitate there separation and here we discuss two methods to focus and separate di ractions. The rst part of the thesis is devoted to exploiting the di erence between di ractions and re ections on the basis of Snell's law . We try to utilise this to design a weighting function which account this di erence in behaviour to directly clean the gradient in Full waveform Inversion. 4 The second part of the thesis proposes separating the di ractions using a dip-steering lter in the model domain in the Born framework which could be directly inverted using Full waveform inversion. The algorithms developed in this thesis are coded using GPU's ( CUDA C ) in a parallel environment except the dip-steering lter algorithm. en_US
dc.description.sponsorship Indian Institute of Technology, Roorkee. en_US
dc.language.iso en en_US
dc.publisher Department of Earth Sciences IITR. en_US
dc.subject Waveform Inversion en_US
dc.subject Diffraction Energy en_US
dc.subject Small Scale Geological Heterogeneities en_US
dc.subject Geology en_US
dc.subject Seismic Data en_US
dc.subject Snell's Law en_US
dc.subject Model Domain en_US
dc.subject Full Waveform Inversion. en_US
dc.title Full Waveform Inversion for Di raction Energy en_US
dc.type Other en_US


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