Banca de DEFESA: LORENNA SÁVILLA BRITO OLIVEIRA

Uma banca de DEFESA de DOUTORADO foi cadastrada pelo programa.
STUDENT : LORENNA SÁVILLA BRITO OLIVEIRA
DATE: 13/03/2023
TIME: 14:00
LOCAL: videoconferência https://www.youtube.com/@ppggufrn
TITLE:

FAULT CHARACTERIZATION USING OUTCROP DATA AND 3D SEISMIC DATA, RIO DO PEIXE BASIN - BRAZIL


KEY WORDS:

Mechanical Stratigraphy; Deformation Bands; Petrophysical Properties; Seismic Attributes; Machine Learning; Automatic Detection; Rio do Peixe Basin.


PAGES: 121
BIG AREA: Ciências Exatas e da Terra
AREA: Geociências
SUMMARY:

Fault zones accommodate deformation in a complex pattern, presenting themselves with different geometries, types of secondary structures, and changing the petrophysical parameters of host rocks. From a perspective of exploration of siliciclastic hydrocarbon reservoirs, understanding the complexity of fault zones has become fundamental, since these structures alter rock volumes, thus influencing fluid flow. The challenge of understanding these structures requires the use of conventional methodologies, providing relationships with the structural framework of the basin, as well as understanding the deformation of a fault zone from the outcrop scale, where it is possible to observe secondary structures such as deformation bands. In this research, fault zones in the Rio do Peixe Basin were investigated at the outcrop scale, understanding the mechanical-stratigraphic influence of deformation bands, and fault detection and characterization were also performed automatically using reflection seismic data. For this, structural, sedimentological and petrophysical data were combined to analyze mechanically the rock layers, and to characterize the deformation generated by deformation bands. Also, seismic data were used for automatic fault detection through seismic attributes and deep learning. Our results show the mechanical-stratigraphic influence of deformation bands in a fault zone that indicate the same regional trend of NE-SW, E-W and NW-SE direction, generating changes evidenced by our models in petrophysical parameters such as porosity, permeability, Young's modulus and Poisson's ratio. The deformation bands cross the sedimentary layers without being conditioned to their thickness, varying structural parameters such as frequency, dip, geometry and thickness of the bands. Our results also demonstrate the comparison between seismic attributes and deep learning (DNN), in which DNN is more successful in detecting faults, identifying their subsidiary segments with more strikes variation and number of minor faults. Seismic attributes are shown to be conditional on noise in the seismic data. Furthermore, we interpreted and mapped a new fault, which is aligned parallel to Fault Malta of E-W direction, with a central negative flower structure.



COMMITTEE MEMBERS:
Externo à Instituição - MATHEUS AMADOR NICCHIO - UFRJ
Interno - 1315614 - DAVID LOPES DE CASTRO
Presidente - 350640 - FRANCISCO HILARIO REGO BEZERRA
Externa à Instituição - INGRID BARRETO MACIEL - UFRN
Externo à Instituição - KLEDSON TOMASO PEREIRA DE LIMA - PETROBRAS
Notícia cadastrada em: 03/03/2023 13:27
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