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Detecting Hydrocarbon Reservoirs from Marine CSEM in the Santos Basin, Brazil*
Marco Polo Buonora1, Andrea Zerilli2, Tiziano Labruzzo2, and Luiz Felipe Rodrigues3
Search and Discovery Article #40402 (2009)
Posted April 6, 2009
*Adapted from oral presentation at AAPG International Conference and Exhibition, Cape Town, South Africa, October 26-29, 2008
1Petrobras E&P/GEOF/MP, Rio de Janeiro, RJ,
Brazil
2WesternGeco Electromagnetics, Houston, TX, USA (mailto:[email protected]
)
3Petrobras E&P/IABS/PN, Rio de Janeiro, RJ, Brazil
The Santos Basin marine Controlled
Source Electromagnetic (mCSEM)
data
were acquired as part of a cooperative
project between Petrobras and Schlumberger to assess the integration of
deep reading Electromagnetic (EM) technologies into the full cycle of oil
field exploration and development. Multi-component electric and magnetic
fields
data
were recorded. All fields at each receiver location were processed
and interpreted using an advanced integrated workflow.
The main objectives of the survey were to calibrate mCSEM over known reservoirs, quantify the anomalies associated with those reservoirs with the expectation that new prospective location(s) could be found. We show that the mCSEM response of the known reservoirs yields signatures that can be imaged and accurately quantified by new processing and interpretation procedures. A further initiative was to advance the state of the art in integrated interpretation and establish guidelines toward the development of an industry standard workflow unavailable at present.
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In recent years mCSEM has driven the attention of an increasing number of operators due to its sensitivity to map resistive structures (such as hydrocarbon reservoirs) beneath the ocean bottom, and successful case studies have been reported (Srnka and Carazzone, 2005; Darnet et al., 2007).
A few hundred commercial mCSEM surveys have been conducted in water depths ranging from 50 to 3,000+ meters and in latitudes ranging from the tropics to the Arctic. In cases where a well has been drilled in the survey area, the reservoir predictions based on the integrated interpretation have been validated. Many improvements have been made to operating practices, survey equipment and delivery of advanced answer products.
The Santos Basin
survey was performed as part of a co-operation project between
Petrobras and Schlumberger to assess the integration of deep reading
Electromagnetic technologies into the full cycle of oil field exploration
and development. The mCSEM
mCSEM
is proving to be a rewarding tool when applied to real E&P
problems, but a great deal of R&D is needed to push its efficiency
and reliability in: acquisition hardware, accurate survey engineering,
The
layout of the Santos Basin mCSEM survey is shown in Figures
1-2
.
One hundred and eighty mCSEM receivers
Forward multi-component E and H responses were computed for these models incorporating bathymetry and varying sea-water resistivities with water depth. Responses were computed for all frequencies used in the course of the survey.
Figure 3
shows the stacked normalized amplitude and phase
centered on 5 km offset for the fundamental frequency 0.25 Hz
for tow line LTAM8N. The stacked responses are normalized for
the radial horizontal electric fields by the field measured at
the reference receiver TAM147 (Figure 2). The choice of the reference receiver is
to have the same background resistivity at the reference location
and the measurement receiver location, with the only differences
occurring in the possible anomalous features. The normalized
fields clearly show two distinct areas of anomalies centered
above two known reservoirs (A and B), reservoir A showing a maximum
anomaly of about 1.8, reservoir B showing a maximum anomaly of
about 1.5. The single frequency, narrow offset range
Selected tow
lines were further imaged using a new fast 2.5D inversion method
(A. Abubakar et al., 2006). The forward solution uses an optimal
grid technique based on an anisotropic material averaging formula
to upscale fine structure to a coarser computational grid. The
algorithm allows solving the problem for multiple transmitter positions
simultaneously and does not confine the sources and receivers to
a single plane that is perpendicular to the invariant direction,
and thus realistic acquisition geometries can be simulated. The
inversion is based on a Gauss-Newton scheme with constrained minimization
that enforces physical bounds on the inverted parameters via a
nonlinear transformation procedure. The inverted depth images show
resistivity anomalies that are consistent with the depth and lateral
extent of the known reservoirs and closely tie the well-log and
seismic
We show that the mCSEM response of hydrocarbon reservoirs known to be present in the Santos Basin yield anomalies that can be clearly imaged and there are evident correlations between the anomalies and the reservoirs. We show that the application of a new workflow based on true geometry processing, fast and reliable multi-dimensional modeling and inversion advanced integrated interpretation increase our ability to find and delineate hydrocarbon, understand the entire EM response and increase our confidence about the resistivity at the reservoir(s) level.
There are numerous aspects that must be considered to further develop mCSEM for successful hydrocarbon exploration. One critical need will be the establishment of advanced interpretation paradigms embedded within industry-standard applications. This will become apparent as more companies start to bring mCSEM into more complex settings and potentially into production for reservoir monitoring purposes.
We thank Petrobras and WesternGeco Electromagnetics for allowing us to present this paper.
Abubakar, A.,
T.M. Habashy, V.L. Druskin, D. L. Alumbaugh, A. Zerilli, and L.
Knizherman, 2006, Fast Two-Dimensional Forward and Inversion Algorithms
for Interpreting Marine CSEM
Darnet, M., M.C.K.
Choo, R.E. Plessix, M.L. Rosenquist, K.Y. Cheong, E. Sims, and
J.W.K. Voon, 2007, Detecting hydrocarbon reservoirs from CSEM
Srnka, L.J.,
and J.J. Carazzone, 2005, Remote reservoir resistivity
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