Poisson's Ration, Deep Resistivity and Water Saturation Relationships for Shaly Sand Reservoir, SE Sirt, Murzuq and Gadames Basins, Libya (Case study)

Similar documents
Correlation of brittleness index with fractures and microstructure in the Barnett Shale

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

Brittleness analysis study of shale by analyzing rock properties

Unconventional reservoir characterization using conventional tools

Strength, creep and frictional properties of gas shale reservoir rocks

Verification of Archie Constants Using Special Core Analysis and Resistivity Porosity Cross Plot Using Picket Plot Method

Geophysical model response in a shale gas

ROCK PHYSICS MODELING FOR LITHOLOGY PREDICTION USING HERTZ- MINDLIN THEORY

Theoretical Approach in Vp/Vs Prediction from Rock Conductivity in Gas Saturating Shaly Sand

Variety of Cementation Factor between Dolomite and Quartzite Reservoir

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

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

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

Seismic characterization of Montney shale formation using Passey s approach

Optimising Resource Plays An integrated GeoPrediction Approach

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

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

SPE These in turn can be used to estimate mechanical properties.

A shale rock physics model for analysis of brittleness index, mineralogy, and porosity in the Barnett Shale

PETROPHYSICAL EVALUATION CORE COPYRIGHT. Petrophysical Evaluation Approach and Shaly Sands Evaluation. By the end of this lesson, you will be able to:

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

Simultaneous Inversion of Clastic Zubair Reservoir: Case Study from Sabiriyah Field, North Kuwait

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

Shear Wave Velocity Estimation Utilizing Wireline Logs for a Carbonate Reservoir, South-West Iran

Comparison of Classical Archie s Equation with Indonesian Equation and Use of Crossplots in Formation Evaluation: - A case study

Stochastic Modeling & Petrophysical Analysis of Unconventional Shales: Spraberry-Wolfcamp Example

BPM37 Linking Basin Modeling with Seismic Attributes through Rock Physics

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

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

An Integrated Petrophysical Approach for Shale Gas Reservoirs

An empirical method for estimation of anisotropic parameters in clastic rocks

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

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

Shale gas reservoir characterization workflows

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

A Fast Method For Estimating Shear Wave Velocity By Using Neural Network

Shaly Sand Rock Physics Analysis and Seismic Inversion Implication

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

Geomechanics, Anisotropy and LMR

GEOPHYSICAL AND WELL CORELLATION ANALYSIS OF OGO FIELD: A CASE STUDY IN NIGER DELTA BASIN OF NIGERIA

Rock Physics of Shales and Source Rocks. Gary Mavko Professor of Geophysics Director, Stanford Rock Physics Project

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

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

Exploration / Appraisal of Shales. Petrophysics Technical Manager Unconventional Resources

Title: Application and use of near-wellbore mechanical rock property information to model stimulation and completion operations

Recent advances in application of AVO to carbonate reservoirs: case histories

Elastic and Electrical Properties Evaluation of Low Resistivity Pays in Malay Basin Clastics Reservoirs

Determination of the Laminar, Structural and Disperse Shale Volumes Using a Joint Inversion of Conventional Logs*

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

P314 Anisotropic Elastic Modelling for Organic Shales

An Integrated Approach to Volume of Shale Analysis: Niger Delta Example, Orire Field

Induced microseismic fracture prediction

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

Researcher 2015;7(9)

Effects of VTI Anisotropy in Shale-Gas Reservoir Characterization

Determining the Relationship between Resistivity, Water and Hydrocarbon Saturation of Rock Formation Using Composite Well Logs

PETROPHYSICAL EVALUATION CORE COPYRIGHT. Saturation Models in Shaly Sands. By the end of this lesson, you will be able to:

A Petrophysical Model to Quantify Pyrite Volumes and to Adjust Resistivity Response to Account for Pyrite Conductivity

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

Application of Geomechanics and Rock Property Analysis for a Tight Oil Reservoir Development: A Case Study from Barmer Basin, India

Neutron Log. Introduction

INVESTIGATION ON THE EFFECT OF STRESS ON CEMENTATION FACTOR OF IRANIAN CARBONATE OIL RESERVOIR ROCKS

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

Petrophysics. Theory and Practice of Measuring. Properties. Reservoir Rock and Fluid Transport. Fourth Edition. Djebbar Tiab. Donaldson. Erie C.

LITTLE ABOUT BASIC PETROPHYSICS

Advances in Elemental Spectroscopy Logging: A Cased Hole Application Offshore West Africa

Evaluation of Low Resistivity Laminated Shaly Sand Reservoirs

Rock Physics Modeling in Montney Tight Gas Play

Petrophysical approach for estimating porosity, clay volume, and water saturation in gas-bearing shale: A case study from the Horn River Basin, Canada

Using Conventional Open Hole Log Data to Generate Petrophysical Models for Unconventional Reservoirs

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

D047 Change of Static and Dynamic Elastic Properties due to CO2 Injection in North Sea Chalk

A look into Gassmann s Equation

Reservoir Rock Properties COPYRIGHT. Sources and Seals Porosity and Permeability. This section will cover the following learning objectives:

Methane hydrate rock physics models for the Blake Outer Ridge

We Simultaneous Joint Inversion of Electromagnetic and Seismic Full-waveform Data - A Sensitivity Analysis to Biot Parameter

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

Saturation Modelling: Using The Waxman- Smits Model/Equation In Saturation Determination In Dispersed Shaly Sands

Petrophysical Rock Typing: Enhanced Permeability Prediction and Reservoir Descriptions*

Increasing Production with Better Well Placement in Unconventional Shale Reservoirs

Rock physics and AVO applications in gas hydrate exploration

Shale Natural Resources. Stephen Ingram, North America Technology Manager, Halliburton

RESERVOIR CHARACTERIZATION USING SEISMIC AND WELL LOGS DATA (A CASE STUDY OF NIGER DELTA)

The elastic properties such as velocity, density, impedance,

Ingrain Laboratories INTEGRATED ROCK ANALYSIS FOR THE OIL AND GAS INDUSTRY

Characteristics of the Triassic Upper Montney Formation (Unit C), West-Central Area, Alberta

Apply Rock Mechanics in Reservoir Characterization Msc Julio W. Poquioma

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

Quantifying Bypassed Pay Through 4-D Post-Stack Inversion*

Keys to Successful Multi-Fractured Horizontal Wells In Tight and Unconventional Reservoirs

Rock Physics and Quantitative Wavelet Estimation. for Seismic Interpretation: Tertiary North Sea. R.W.Simm 1, S.Xu 2 and R.E.

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

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

Module for: Resistivity Theory (adapted/modified from lectures in PETE 321 (Jensen/Ayers))

Rock Physics of Organic Shale and Its Implication

Estimation of Water Saturation Using a Modeled Equation and Archie s Equation from Wire-Line Logs, Niger Delta Nigeria

FORMATION EVALUATION OF SIRP FIELD USING WIRELINE LOGS IN WESTERN DEPOBELT OF NIGER DELTA

Formation Evaluation of an Onshore Oil Field, Niger Delta Nigeria.

INTRODUCTION TO WELL LOGS And BAYES THEOREM

Well Logging. Salam Al Rbeawi 2011

Transcription:

Journal of Geography and Geology; Vol. 7, No. 1; 2015 ISSN 1916-9779 E-ISSN 1916-9787 Published by Canadian Center of Science and Education Poisson's Ration, Deep Resistivity and Water Saturation Relationships for Shaly Sand Reservoir, SE Sirt, Murzuq and Gadames Basins, Libya (Case study) Bahia M. Ben Ghawar 1 & Fathi S. Elburas 2 1 Faculty of Engineering, Geological Engineering Department, Tripoli, Libya 2 Faculty of Sciences, Geophysics Department, Tripoli, Libya Correspondence: Bahia M. Ben Ghawar, Faculty of Engineering, Geological Engineering Department, Tripoli, Libya. Tel: 1-613-947-3592. E-mail: gloriamuftah@yahoo.com Received: June 17, 2014 Accepted: July 7, 2014 Online Published: February 7, 2015 doi:10.5539/jgg.v7n1p20 URL: http://dx.doi.org/10.5539/jgg.v7n1p20 Abstract It is important to obtain relationships between the physical quantities, overburden and reservoir composition and fluid type. This is significant in the sense that if one property, e.g., electrical resistivity, can be more easily measured than Poisson s ratio (). Therefore, later parameter can be estimated and defined against resistivity log data. In fact, these relations constructed by several wells data have been taken for each studied productive reservoir from different oil fields at different sedimentary basin, in Libya. However, comparison between calculated, measured deep resistivity and calculated water saturation content are using to a certain extent justification of reservoir conditions (tight zone). These cross relations throw up the increase of range at low values of deep resistivity values and water saturation degrees, which present like a hyperbolic curves formed a two parts. The stable trend with constant values in hydrocarbon and clean intervals depths within a first part, while a shaly depth intervals act as a second part of the hyperbolic shape, which shows a scatter or cluster points indicates of water intervals and not a tight zone. Therefore, estimation of in shaly intervals in such these reservoirs are ranging above 0.3 up to 0.4. Keywords: Poisson s Ratio, porosity, deep resistivity, water saturation 1. Introduction Any reservoir rock has electrical property related to lithological type and characteristic. In fact, this electricity is function of many factors which one of them fluid type. Hydrocarbon and water are the main prospective fluids filled the different porosity types of reservoir rocks. However, Deep resistivity wire line log data relate to Poisson s ratio () is the main task in this work for shaly sand throughout different reservoir rocks, which have different location and depositional environments. One of these studied reservoirs is gas producer. In additional, affect and distribution behavior of water saturation over these reservoirs relate also to the Poisson s ratio. Thickness of the studied reservoir ranged from 100 to 400 feet. Benefit of these cross properties to determine variety values of geomechanical properties () throughout the productive reservoir clean and/or shaly depth intervals. These depths associated with the changed range helping to delineate weakness depths intervals. This work present an approach helps to understand primary geologic controls on rock mechanical properties and to translate this new insight into novel predictive tools. Therefore, using of multivariate statistics to generate lithotype-dependent empirical predictive relationships between mechanical properties and log-derived petrophysical attributes/properties. It is give an idea about strength for perforation stability, rock compressibility for reservoir simulation. Finally, test overall performance and quantify uncertainty in predictions. Therefore, this approach has provided a more predictive model to be applied in a field in one of the early investigation stage of geomechanical properties. Ursin and Carcione (2007) relate the electrical conductivity to the P-wave velocity. Hilfan and Zuhar (2007) construct alternatively new technique by using joint two techniques which relate between velocity and conductivity. Dvorkin et. al., (2001) present an observation change of Poisson s ratio with porosity and water 20

saturation in Sandstone with different degree of shale content. Dvorkin (2006) present an abnormally high values sometimes observed in well data in gas sand. Most theories indicate that in gas saturated sand lies within a zero to 0.25 ranges, with typical values about 0.15. However, some well log measurements, especially in gas formations, persistently produce a Poisson s ratio as large as 0.3. The electrical properties of reservoir rocks which have a significant volume of clay have been discussed in the literature for more than three decades. It is generally accepted that clay affects the electrical conductivity which is measured in these so-called shaly sands, but a variety of opinions exist about what combination of rock and fluid parameters best characterizes the variation of the parameters best characterizes the variation of the conductivity of a shaly sand with variation of the conductivity and volume of a saturating brine (1989). Perez (2013) investigate how changes in mineralogy and porosity affect the effective elastic moduli and presents chart interpretate the rock physics trends in Poisson s ratio and Young s modulus space with constant lines of bulk modulus. 2. Methodology Four wells are productive from clastic reservoir rock type, which they are located at three different sedimentary basins in Libya. Have wire-line logging data used to study variety of Poisson s ratio () with the electrical property (measured deep resistivity), fluid type (hydrocarbon and/or water) and its saturation degree. Poisson s ratio () can be calculated from any other pair, such as bulk and shear moduli or the two Lame s constants. It can also be calculated from the P- and S-wave elastic-wave velocities, which are routinely measured in the laboratory and/or well. One may find it is more convenient to use rather than the velocity ratio (Vp/Vs) simply because the former is contained between zero and 0.5 while the latter may span the range between the square root of 2 and infinity. Poisson's ratio is the ratio of expansion in one direction of a rock caused by a contraction at right angles. The Poisson's ratio of most materials is between 0.0 and 0.5. If the material is showing almost no Poisson contraction as a response to extension, then the Poisson's ratio is 0. On the other hand, a perfectly in compressible material deformed elastically at small strains would have a Poisson's ratio of 0.5. Rocks are subject to Poisson's effect under stress and strain. For instance, excessive erosion or sedimentation in the overburden can either create or remove large vertical stresses on a particular rock layer, under which it will deform in the horizontal direction as a result of Poisson's effect. This change in strain in the horizontal direction can affect formation of joints or local stresses in the rock. Determination of Poisson's ratio () is very useful when calculating rock mechanical properties such as compressive strength, angle of internal friction, and cohesive shear strength. Poisson's ratio is also useful for modeling seismic responses, borehole stresses, and acoustic responses of the selected formation(s). Poisson's ratio is dependent on pore fluid characteristics and on the shaliness of the selected formation(s). This parameter is computed by the following formula (1), which depend on volume of shale (Crain, 2000). = 0.125 * Vsh + 0.27 (1) Calculation of the gamma ray index is the first step needed to determine the volume of shale from gamma ray log. Gamma ray log is often the best shale indicator available, which is recored over the drilled reservoir intervals, fast and very simple method, and generally the most reliable. The gamma ray log has several nonlinear empirical responses as well a linear responses. The non linear responses are based on geographic area or formation age. All non linear relationships are more optimistic that is they produce a shale volume value lower than that from the linear equation (Asquith and Krygowski, 2004). A main step for the Shaly sands reservoir evaluation is to determine the effects of shale upon porosity, permeability and fluid saturations. The multiple measurements of porosity logs (Neutron and Density) can frequently be used together to determine porosity, because the Ø nd generally provides the best sensitivity to lithology, porosity, hydrocarbons, and shaliness. Electrical resistivity is the ability of a substance to impede the flow of an electrical current. This is a very important rock property in formation evaluation as it helps to differentiate between formations filled with salty waters (good conductors of electricity) and those filled with hydrocarbons (poor conductors of electricity). Also, this measured of rock proprty is affected by pore space and also matrix content. Archie equation is not an adequate for water saturation determination in shaly sand, due to overestimates of saturation degrees. Simandoux equation (2) reduces to the Archie equation when volume of shale equal zero. When low resistivity shale is present, the Simandoux equation accounts for the resistivity of the shale and generates a more accurate water saturation (Crain and Holgate, 2014). The Simandoux equation works well for most situations and the most common when shale unknown exactly distriution, therefore, it used in the studied 21

reservoirs. 2 m a R w V sh V sh 4 ϕ Sw = + + m 2 ϕ R sh Rsh a R w R t Where: a = tortuosity exponent. m = cementation exponent. Ø = porosity (Ø nd, fr.). R t = deep resistivity log reading (Ω.m). R sh = resistivity of the shale (Ω.m). V sh = shale content (fr.). R w = water resistivity at formation temperature (Ω.m). Estimation of volume of shale (or clay content, Vsh) in these reservoirs was computed by using gamma ray log (GR) data as prevouse mentioned for older rock formula. Usually gamma ray do not gives an idea about the shale distribution cross the studied reservoir. Therefore, cutoff values of the Vsh for each well take separately and most value was 20%. A conditional filter (20% > Vsh > 20%) has been applied to identify clean sand and shale intervals. 3. Results and Discusion Elastic property () changes with measured deep resistivity through the productive reservoir depths as Hyperbola relationship. Figures 1, 2, 3 and 4, illustrate with discrimination between clean and shaly intervals in both oil and gas productive wells. Through this section pattern between clean and shaly depths clearly discriminate when stable values (about 0.27) against resistivity changes in clean depths (Vsh < 20%) was function of porosity content. While change in values excess (about 0.35) in shaly depths. The changing values along reservoir shaly depths are important to define and determine a weakness for stresses depths. In other meaning, a little change of this elastic rock parameter in clean intervals occurred only at low measured deep resistivity (10 20 Ohm.m) as present in the following Figures. 0.5 (2) Figure 1. Deep Resistivity versus Poisson s Ratio of Studied Reservoir, SE Sirt Basin, Libya Figure 2. Resistivity versus poisson s ratio of stuudied reservoir, Murzuq Basin, Libya 22

Figure 3. Resistivity versus poisson s ratio of reservoir studied, Ghadamas Basin, Libya Figure 4. Resistivity versus poisson s ratio of studied reservoir (Gas well), Ghadamas Basin, Libya The fluid effect depends on its degree of saturation and geometry of the pores. Most water is present in upper part of any reservoir is interstitial water associated with the hydrocarbon or as a main part of chemical structure of the rock matrix (clay minerals). This amount of water is an increase with depth. Also, this water amounts related to the shale content and its type in such like these different studied reservoirs. However, relation of water saturation and geoelastic property () is essential to show a percentage of water saturation which causes the weak depths in the reservoir rock. Generally Figures (5, 6 and 7) show clean intervals have a stable trend; whereas shaly intervals have a scattered with high values of even this intervals located at production depths. Figure 5. Water saturation versus Poisson s ration of studied reservoir, SE Sirt Basin Figure 6. Water saturation versus Poisson s ration for Murzuq Basin reservoir rock Figure 7. A. Water saturation versus Poisson s ration for Ghadamas Basin reservoir rock Figure 7. B. water saturation versus Poisson s ration for Ghadamas Basin reservoir rock (Gas producer) 23

Poisson s ratio and Young s modulus are two of many elastic moduli and are related through the material constitutive relations (Cho and Perez, 2014). High deep resistivity values through the depths are indicating to reservoir rock if it is a less porous and /or pores contain hydrocarbon. However, the is not one the dynamic elastic is important for petrophysicists and have recently begun using well log derived rock properties as a proxy for rock brittleness or ductility (Rickman et al, 2008). Therefore, through this work relate between elastic properties () which reveal changing of rock coherent as resistivity manner, and involve degree of water saturation occupied pore spaces. Figures 8, 9 and 10 show 2D crossplots, while Figures 11, 12, 13 and 14 show continue contribuation between these properties over depth. It is clearly have stable range between values 0.27 and 0.28 with an increase of the deep resistivity (coherent rock), and the same phenomena occurred with the water saturation pattern. Variety of occurred at shaly depths with range values over 0.30 against low values of the deep resistivity and the water saturation. It noticeable observed high values of not related to high degrees of water saturation. Table (1) present a range values of these main properties for studied reservoirs. Table 1. Summarized range values between physical and elastic property of studied reservoirs Rock type Rd (Ohm.m) Sw % Clean Sandstone 0.25 0.30 10 - <1000 0 - <50 Shaly sand 0.30 0.40 <10 - < 50 10-70 Consequintly, the fluid contain pores of rock (high content water) doesn t have major affect on the as resistivity parameter. While porosity variations lead to areas that are more susceptible to failure and ultimately reduce the rock s overall strength. Furthermore, an increase in porosity will enhance the rock s ability to fail under stress. According to that, Perez (2013) illustrates an increase in quartz content ( clean depths) will lower the Poisson s ratio and Rickman et al., (2008) considered brittle rocks whoms have low. The studied reservoirs ranged from brittle to ductle rocks. Figure 8. Poisson s ratio versus resistivity and water saturation of studied reservoir, SE Sirt Basin, Libya Figure 9. Poisson s ratio versus resistivity and water saturation studied reservoir, Murzuq Basin, Libya Figure 10. A. Poisson s ratio versus resistivity and water saturation studied reservoir, Ghadamas Basin, Libya Figure 10. B. Poisson s ratio versus resistivity and water saturation studied reservoir, Ghadamas Basin, Libya (Gas producer) 24

Sws (fr.) & Sws (fr.) & 15240 4780 15260 4830 15280 15300 4880 15320 4930 15340 4980 15360 Sw ILD 1 10 100 1000 ILD (Ohm.m) Figure 11. Water saturation, Resistivity and Poisson s ratio studied reservoir, SE Sirt Basin, Libya Sws ILD 1 10 100 1000 10000 ILD (Ohm.m) Figure 12. Water saturation, Resistivity and Poisson s ratio studied reservoir, Murzuq Basin, Libya Sws (fr.) & Sws (fr.) & 8610 8460 8480 8660 8500 8710 8520 8760 8540 8560 8810 8580 8860 Sws LLD 1 10 100 1000 LLD(Ohm.m) Figure 13. Water saturation, Resistivity and Poisson s ratio studied reservoir, Ghadamas Basin, Libya 8600 Sws LLD 1 10 100 1000 10000 LLD(Ohm.m) Figure 14. Water saturation, Resistivity and Poisson s ratio studied reservoir, Ghadamas Basin, Libya (Gas producer well) 4. Conclusion Through this paper cross relation were presented and shown, easier and quick approach to predicate or estimate and define weakness depth, which define stability of borehole and/or reservoir coherent. Majority of this approach is easier applicable and economic procedure. However, low resistivity measurements confirm low water saturation content, which is common in producer reservoir have stable Poisson s Ratio between two limit values 0.27 and 0.28, while high reading of excess 0.28 up to 0.40 at high water saturation content with 25

stable deep resistivity measurements (about 10 Ohm.m) or high deep resistivity (over 100 Ohm.m). It clearly present that fluid content occupied the pore space of shaly reservoir (Hydrocarbon; oil and/or gas or water) not responsible on variety of. Whereas the shale content is the only reason cause effect of values. References Asquith, G., & Krygowski, D. (2004). Basic Well Log Analysis: AAPG Methods in Exploration, 16, 31-35. Crain, E. R. (2000). PETROPHYSICAL Handbook: ELASTIC OPERTIES OF ROCKS. Crain, E. R., & Holgate, D. (2014). Digital Log Data to Mechanical Rock Properties for Stimulation Design. Geoconvention 2014: Focus. Dvorkin, J., Moos, D., Packwood, J., & Nur, A. (2001). Identifying Patchy Saturation from Well Logs, Department of Geophysics: Stanford University, Short Note. Dvorkin, J. (2006). Can gas sand have a large Poisson s ratio? SEG, Stanford University and Rock Solid Images. Hilfan, K., & Zuhar, Z. T. H. (2007). Joint inversion of porosity for establishing velocity Conductivity relationship by using Levenberg-Marquardt and Singular value decomposition: International conference on intelligent and advance systems. Perez, M. (2013). Seismic modeling of unconventional reservoirs. Focus Article CSEG Recorder. Rickman, R., Mullen, M., Petre, E., Grieser, B., & Kundert, D. (2008). A practical use of shale petrophysics for stimulation design optimization: All shale plays are not clones of the Barnett Shale: SPE annual technical conference and exhibition, Denver, Colorado, SPE 115258. Stenson, J. D., & Sharma, M. M. (1989). A Petrophysical Model for Shaly Sands. SPE Annual Technical Conference and Exhibition, 8-11 October 1989, San Antonio, Texas: Publisher Society of Petroleum Engineers Language English Document ID 19574-MSDOI. 10.2118/19574-MS. Ursin, B., & Carcione, J. M. (2007). Seismic-Velocity/Electrical-Conductivity Relations. EGM 2007 International Workshop Innovation in EM, Grav and Mag Methods: A new Perspective for Exploration Capri, Italy. Copyrights Copyright for this article is retained by the author(s), with first publication rights granted to the journal. This is an open-access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/). 26