Intelligent Seismic Inversion; From Surface Seismic to Well
Logs via VSP
Artun, Emre 1, Mohaghegh, Shahab D. 1, Toro, Jaime 1, Wilson, Tom 1, and Sanchez, Alejandro 2
1West Virginia University
2Anadarko Petroleum Corporation
In the petroleum exploration work flow, geologists and geophysicists use seismic data to forecast the possible existence of hydrocarbon resources by structural mapping of the subsurface, and making interpretations of the reservoir’s facies distribution. Engineers use this information to make decisions on possible locations for new exploration or development wells. The relatively low resolution of seismic data usually limits its further use. Yet, its areal coverage and availability suggest that it has the potential of providing valuable data for more detailed reservoir characterization studies through the process of seismic inversion.
In this study, a novel intelligent seismic inversion methodology
is presented to achieve a desirable correlation between relatively low-frequency
seismic signals, and the much higher frequency wireline-log
data. Vertical
seismic profile (VSP) is used as an intermediate step between the
well
logs and
the surface seismic. A synthetic seismic model is developed by using real data
and seismic interpretation. In the example presented here, the model represents
the Atoka and Morrow formations, and the overlying Pennsylvanian
sequence
of the
Buffalo Valley Field in New Mexico. Artificial neural networks are used to build
two independent correlation models between; 1) Surface seismic and VSP, 2) VSP
and
well
logs. After generating virtual VSP’s from the surface seismic,
well
logs are predicted by using the correlation between VSP and
well
logs. Density
logs were predicted with 87% accuracy through the seismic line. The same
procedure can be applied to a complete 3D seismic block to obtain a detailed
view of reservoir quality distribution.