Downloaded 10/29/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

Similar documents
Downloaded 10/29/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

2011 SEG SEG San Antonio 2011 Annual Meeting 771. Summary. Method

Downloaded 11/02/16 to Redistribution subject to SEG license or copyright; see Terms of Use at Summary.

Tu B3 15 Multi-physics Characterisation of Reservoir Prospects in the Hoop Area of the Barents Sea

Rock physics integration of CSEM and seismic data: a case study based on the Luva gas field.

We A Multi-Measurement Integration Case Study from West Loppa Area in the Barents Sea

SEG Houston 2009 International Exposition and Annual Meeting

Geological Classification of Seismic-Inversion Data in the Doba Basin of Chad*

Vertical and horizontal resolution considerations for a joint 3D CSEM and MT inversion

Reservoir properties inversion from AVO attributes

Some consideration about fluid substitution without shear wave velocity Fuyong Yan*, De-Hua Han, Rock Physics Lab, University of Houston

Calibration of the petro-elastic model (PEM) for 4D seismic studies in multi-mineral rocks Amini, Hamed; Alvarez, Erick Raciel

Reducing Uncertainty through Multi-Measurement Integration: from Regional to Reservoir scale

Tu P8 08 Modified Anisotropic Walton Model for Consolidated Siliciclastic Rocks: Case Study of Velocity Anisotropy Modelling in a Barents Sea Well

We apply a rock physics analysis to well log data from the North-East Gulf of Mexico

ROCK PHYSICS MODELING FOR LITHOLOGY PREDICTION USING HERTZ- MINDLIN THEORY

SEG Houston 2009 International Exposition and Annual Meeting. that the project results can correctly interpreted.

Summary. Simple model for kerogen maturity (Carcione, 2000)

Estimating the hydrocarbon volume from elastic and resistivity data: A concept

Measurement of elastic properties of kerogen Fuyong Yan, De-hua Han*, Rock Physics Lab, University of Houston

P314 Anisotropic Elastic Modelling for Organic Shales

Summary. Introduction

Seismic reservoir and source-rock analysis using inverse rock-physics modeling: A Norwegian Sea demonstration

Shaly Sand Rock Physics Analysis and Seismic Inversion Implication

Towed Streamer EM data from Barents Sea, Norway

A new model for pore pressure prediction Fuyong Yan* and De-hua Han, Rock Physics Lab, University of Houston Keyin Ren, Nanhai West Corporation, CNOOC

BPM37 Linking Basin Modeling with Seismic Attributes through Rock Physics

RP 2.6. SEG/Houston 2005 Annual Meeting 1521

The elastic properties such as velocity, density, impedance,

Downloaded 11/20/12 to Redistribution subject to SEG license or copyright; see Terms of Use at

Effects of VTI Anisotropy in Shale-Gas Reservoir Characterization

Uncertainty analysis for the integration of seismic and CSEM data Myoung Jae Kwon & Roel Snieder, Center for Wave Phenomena, Colorado School of Mines

Estimating vertical and horizontal resistivity of the overburden and the reservoir for the Alvheim Boa field. Folke Engelmark* and Johan Mattsson, PGS

RESEARCH PROPOSAL. Effects of scales and extracting methods on quantifying quality factor Q. Yi Shen

4D stress sensitivity of dry rock frame moduli: constraints from geomechanical integration

Determination of reservoir properties from the integration of CSEM and seismic data

Downloaded 03/06/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

Geophysical model response in a shale gas

Geophysical and geomechanical rock property templates for source rocks Malleswar Yenugu, Ikon Science Americas, USA

Seismic Velocity Dispersion and the Petrophysical Properties of Porous Media

Uncertainties in rock pore compressibility and effects on time lapse seismic modeling An application to Norne field

Downloaded 10/25/16 to Redistribution subject to SEG license or copyright; see Terms of Use at

Downloaded 09/09/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

Downloaded 08/29/13 to Redistribution subject to SEG license or copyright; see Terms of Use at

6298 Stress induced azimuthally anisotropic reservoir - AVO modeling

Integrating seismic, CSEM, and well-log data for reservoir characterization

Seismic characterization of Montney shale formation using Passey s approach

Th LHR2 08 Towards an Effective Petroelastic Model for Simulator to Seismic Studies

Unconventional reservoir characterization using conventional tools

RC 1.3. SEG/Houston 2005 Annual Meeting 1307

CHARACTERIZATION OF SATURATED POROUS ROCKS WITH OBLIQUELY DIPPING FRACTURES. Jiao Xue and Robert H. Tatham

Towed Streamer EM Integrated interpretation for accurate characterization of the sub-surface. PETEX, Tuesday 15th of November 2016

Enhancing the resolution of CSEM inversion using seismic constraints Peter Harris*, Rock Solid Images AS Lucy MacGregor, OHM Surveys Ltd

Porosity. Downloaded 09/22/16 to Redistribution subject to SEG license or copyright; see Terms of Use at

Downloaded 01/29/13 to Redistribution subject to SEG license or copyright; see Terms of Use at

Using seismic guided EM inversion to explore a complex geological area: An application to the Kraken and Bressay heavy oil discoveries, North Sea

Downloaded 02/06/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

Optimising Resource Plays An integrated GeoPrediction Approach

Integrating rock physics and full elastic modeling for reservoir characterization Mosab Nasser and John B. Sinton*, Maersk Oil Houston Inc.

GRAIN SORTING, POROSITY, AND ELASTICITY. Jack Dvorkin and Mario A. Gutierrez Geophysics Department, Stanford University ABSTRACT

Effects of Fracture Parameters in an Anisotropy Model on P-Wave Azimuthal Amplitude Responses

We Density/Porosity Versus Velocity of Overconsolidated Sands Derived from Experimental Compaction SUMMARY

Seismic modeling evaluation of fault illumination in the Woodford Shale Sumit Verma*, Onur Mutlu, Kurt J. Marfurt, The University of Oklahoma

Integration of Rock Physics Models in a Geostatistical Seismic Inversion for Reservoir Rock Properties

The prediction of reservoir

Seismic wavepropagation concepts applied to the interpretation of marine controlled-source electromagnetics

Reservoir properties prediction using CSEM, pre-stack seismic and well log data: Case Study in the Hoop Area, Barents Sea, Norway

Downloaded 02/05/15 to Redistribution subject to SEG license or copyright; see Terms of Use at

D034 On the Effects of Anisotropy in Marine CSEM

IDENTIFYING PATCHY SATURATION FROM WELL LOGS Short Note. / K s. + K f., G Dry. = G / ρ, (2)

Crosswell tomography imaging of the permeability structure within a sandstone oil field.

ROCK PHYSICS DIAGNOSTICS OF NORTH SEA SANDS: LINK BETWEEN MICROSTRUCTURE AND SEISMIC PROPERTIES ABSTRACT

Downloaded 08/30/13 to Redistribution subject to SEG license or copyright; see Terms of Use at

Improved Exploration, Appraisal and Production Monitoring with Multi-Transient EM Solutions

Rock Physics Perturbational Modeling: Carbonate case study, an intracratonic basin Northwest/Saharan Africa

THE USE OF SEISMIC ATTRIBUTES AND SPECTRAL DECOMPOSITION TO SUPPORT THE DRILLING PLAN OF THE URACOA-BOMBAL FIELDS

Estimation of density from seismic data without long offsets a novel approach.

QUANTITATIVE ANALYSIS OF SEISMIC RESPONSE TO TOTAL-ORGANIC-CONTENT AND THERMAL MATURITY IN SHALE GAS PLAYS

A look into Gassmann s Equation

Envelope of Fracture Density

Estimation of shale reservoir properties based on anisotropic rock physics modelling

Rock physics of a gas hydrate reservoir. Gas hydrates are solids composed of a hydrogen-bonded ROUND TABLE

Evaluation of Rock Properties from Logs Affected by Deep Invasion A Case Study

Rock Physics of Organic Shale and Its Implication

An empirical method for estimation of anisotropic parameters in clastic rocks

Workflows for Sweet Spots Identification in Shale Plays Using Seismic Inversion and Well Logs

Fluid contacts and net-pay identification in three phase reservoirs using seismic data

Reliability of Seismic Data for Hydrocarbon Reservoir Characterization

THE ROCK PHYSICS HANDBOOK

B-31 Combining 4D seismic and reservoir

SPE DISTINGUISHED LECTURER SERIES is funded principally through a grant of the SPE FOUNDATION

Generation of synthetic shear wave logs for multicomponent seismic interpretation

Methane hydrate rock physics models for the Blake Outer Ridge

Quantitative interpretation using inverse rock-physics modeling on AVO data

Stress induced seismic velocity anisotropy study Bin Qiu, Mita Sengupta, Jorg Herwanger, WesternGeco/Schlumberger

Maximize the potential of seismic data in shale exploration and production Examples from the Barnett shale and the Eagle Ford shale

Keywords. CSEM, Inversion, Resistivity, Kutei Basin, Makassar Strait

Pre-Stack Seismic Inversion and Amplitude Versus Angle Modeling Reduces the Risk in Hydrocarbon Prospect Evaluation

Detection, Delineation and Characterization of Shallow Anomalies Using Dual Sensor Seismic and Towed Streamer EM data

Correspondence between the low- and high-frequency limits for anisotropic parameters in a layered medium

Transcription:

Electrical anisotropy drivers in the Snøhvit region of the Barents Sea Michelle Ellis*, Lucy MacGregor, Rolf Ackermann, Paola Newton, Robert Keirstead, Alberto Rusic, Slim Bouchrara, Amanda Geck Alvarez, Yijie Zhou and Hung-Wen Tseng. RSI Summary In this study we use Controlled Source Electromagnetic (CSEM) data, well log data and rock physics to investigate electrical anisotropy drivers in the Snøhvit area of the Barents Sea. Results show that for the shale dominated sediments electrical anisotropy varies systematically with porosity, depth and elastic properties. However there is little systematic trend with clay content. Introduction CSEM can be used to provide higher sensitivity to hydrocarbon saturation than is possible to achieve with conventional seismic reflection data (MacGregor & Tomlinson, 2014). In CSEM s infancy anisotropy was ignored, however, disregarding resistivity anisotropy will lead to misleading CSEM survey feasibility studies, inaccurate CSEM data analysis, inaccurate estimations of hydrocarbon saturations and, consequently, erroneous interpretations (Ellis et al., 2011). In order to improve our interpretation of CSEM data we need to understand what drives the anisotropy for a given rock type. The aim of rock physics is to understand the relationship between geophysical observations and the underlying physical properties of the rock (Mavko et al., 2009). Physical properties include properties such as porosity, mineral composition, pore-fluid composition and sediment microstructure. By using rock physics we can start to understand the controls on electrical resistivity and anisotropy in a given area. The aim of this project is to determine the controls on electrical anisotropy in the Snohvit area of the Barents Sea and forms part of a wider study of Barents Sea electrical properties (Bouchrara et al, 2015). The Barents Sea was chosen as a study area because of the current interest in the area and the rich dataset which included well logs and CSEM surveys (Figure 1). Also the Barents Sea is geologically complex stratigraphically, structurally, and historically (Gabrielsen et al., 1990). One component of this complexity is the presence of strong Figure 1: Map showing locations of all the exploration wells drilled in the Barents Sea (pink and purple dots) and EMGS s CSEM survey locations. SEG New Orleans Annual Meeting Page 3244

anisotropy in measured and derived electrical resistivity (Fanavoll et al., 2012). The Snohvit Area The Snohvit area is a gas field located in the Hammerfest basin of the Barents Sea. The main reservoir is the Sto formation which is a sandstone rock with varying amounts of porosity. The overburden sediment consists of thick laterally continuous shales (Torsk, Kolmule and Kolje formations). The area is heavily faulted with both E-W and N-S trending faults which act as part of the trapping mechanism for the reservoir. Method In order to achieve the goals of the project we compared electrical resistivity and anisotropy derived from CSEM data with well log data from the overburden sediments of the Snøhvit region of the Barents Sea (Figure 1). Stage 1 - Well log conditioning In the first stage we build a comprehensive suite of conditioned well logs in the study area. Water resistivity, porosity, water saturation and mineral volumes throughout entire wellbore are estimated. Rock physics models are also used to conduct fluid substitution in each reservoir that the well encounters. Following this, a comparison between seismic and electrical properties at in-situ conditions is performed as a preparation for the reservoir modelling in the resistivity domain. This builds a consistent database across the area which can be used to compare to the CSEM data. Stage 2 CSEM modelling The CSEM data can be used to determine the vertical and horizontal resistivity at the well sites using a 1D Figure 2: Six Snøhvit wells. Left sedimentary column with reservoir highed in red. Middle well log resistivity (thin blue line), CSEM derived horizontal resistivty (pink) and CSEM derived verstical resistivity (purple). Right anisotropy due to thin layering (dark blue) and CSEM derived anisotropy (light blue). SEG New Orleans Annual Meeting Page 3245

stratigraphically constrained approach (Bouchrara et at 2015).. A set of receivers was inverted separately around each well in the Snøhvit area of the Barents Sea to give multiple resistivity profiles (Figure 2). This gives us anisotropy profiles which could be compared to well log data to see possible trends. Averaging each of the profiles from each of the receivers gives us a single resistivity and anisotropy measurement per formation. This allows us to compare different formations separately and consistently. Stage 3 Trend analysis Well log data was processed by averaging the well log data in each formation. Resistivity was averaged using a harmonic mean, elastic measurements were averaged using a Backus average, and all other measurements were averaged using an arithmetic mean. The properties averaged were acoustic impedance, neutron porosity, total porosity, effective porosity, Poisson's Ratio, resistivity, density, clay volume, depth P-wave velocity and S-wave velocity. These results were then compared to the CSEM resistivity and anisotropy results in each formation. In this analysis only formations with a thickness greater than 100 m at depths above 2500 m were included, to ensure good CSEM sensitivity to electrical parameters. In general the formations included in the analysis were the overburden shales. Results Figure 3 shows a subset of the trend results for the Snøhvit region and table 1 shows a summary of the correlation coeffecients (R 2 ) for all the different physical properties and anisotropy trends (strong trends are highlighted in green). All stratigraphic units meeting the depth and thickness criteria above are included, and so the variation represents bulk trends in the complete background section. Results show that horizontal resistivity does not vary systematically with any of the well data types investigated when bulk properties across several stratigraphic units are considered. However the horizontal resistivities from the wells match those derived from the CSEM data well providing confidence in the results. Strong trends were seen between various well log measurements and vertical resistivity (Figure 3, Table 1). Porosity, unsurprisingly, correlates well with resistivity, but it also appears to correlate with anisotropy. As the porosity decreases the anisotropy increases. Also the elastic properties, such as p- wave velocity, also correlate strongly with the resistivity and anisotropy. Although this relationship is not causal, it indicates that there may be an underlying control affecting both parameters. Surprisingly clay content showed a relatively low correlation with vertical resistivity and correspondingly with anisotropy. Clay content, along with sediment layering and fracturing, is often given as one of the principal causes of anisotropy. This lack of correlation may be the result of the bulk scale and multiple stratigraphic units being considered in this analysis. Also the range of clay volume values is small in this area making trends difficult to obverse. Acknowledgments The authors would like to thanks the sponsors of the ERA consortium project for funding and donating data to this project. The CSEM data used in the project was provided by EMGS. Well log data type Horizontal resistivity R 2 Vertical resistivity R 2 Anisotropy R 2 Total porosity 0.00 0.80 0.76 Neutron porosity 0.51 0.06 0.17 Bulk Density 0.07 0.70 0.73 Clay Fraction 0.14 0.24 0.20 Depth 0.12 0.77 0.74 P-wave Velocity 0.00 0.77 0.75 S-wave Velocity 0.06 0.80 0.78 Acoustic Impedance 0.08 0.78 0.78 Poisson s Ratio 0.10 0.79 0.80 Table 1: Trend Correlation (R 2 ) values for from well data averages (total porosity, neutron porosity etc.) versus CSEM 1D inverse model derived average resistivity values. Green highlights indicate strong trends (R 2 >0.75). SEG New Orleans Annual Meeting Page 3246

Figure 2: Comparison of unconstrained (red) inversion data and constrained inversion (blue) data for the Snøhvit overburden sediments. Trends lines shown are the best fit trend. Middle Left porosity vs. horizontal resistivity, Middle Center - porosity vs. vertical resistivity, Middle Right porosity vs. anisotropy. Bottom Left acoustic impedance vs. horizontal resistivity, Bottom Center acoustic impedance vs. vertical resistivity, Bottom Right acoustic impedance vs. anisotropy. SEG New Orleans Annual Meeting Page 3247

EDITED REFERENCES Note: This reference list is a copyedited version of the reference list submitted by the author. Reference lists for the 2015 SEG Technical Program Expanded Abstracts have been copyedited so that references provided with the online metadata for each paper will achieve a high degree of linking to cited sources that appear on the Web. REFERENCES Bouchrara, S., L. MacGregor, A. Alvarez, M. Ellis, R. Ackermann, R. Keirstead, A. Rusic, Y. Zhou, and H.-W. Tseng, 2005, CSEM-based anisotropy trends in the Barents Sea: Presented at the 85th Annual Meeting, SEG. Ellis, M., F. Ruiz, S. Nanduri, R. Keirstead, I. Azizov, M. Frenkel, and L. MacGregor, 2011, Importance of anisotropic rock physics modeling in integrated seismic and CSEM interpretation: First Break, 29, no. 6, 87 95. Fanavoll, S., S. Ellingsrud, P. T. Gabrielsen, R. Tharimela, and D. Ridyard, 2012, Exploration with the use of EM data in the Barents Sea: The potential and the challenges: First Break, 30, no. 4, 89 96. Gabrielsen, R.H., Faerseth, R.B., Jensen, L.N., Kalheim, J.E. & Riis, F., 1990, Structural elements of the Norwegian continental shelf, Part1: The Barents Sea Region, NPD-Bulletin, no. 6. MacGregor, L., and J. Tomlinson, 2014, Marine controlled-source electromagnetic methods in the hydrocarbon industry: A tutorial on method and practice: Interpretation, 2, no. 3, SH13 SH32. http://dx.doi.org/10.1190/int-2013-0163.1. Mavko, G., T. Mukerji, and J. Dvorkin, 2009, The rock physics handbook: Tools for seismic analysis in porous media: Cambridge University Press. http://dx.doi.org/10.1017/cbo9780511626753. SEG New Orleans Annual Meeting Page 3248