Description

Book Synopsis

Seismic reservoir characterizationaimsto build 3-dimensional models of rock and fluid properties, including elastic and petrophysicalvariables, to describe andmonitor the state of the subsurfacefor hydrocarbonexploration andproduction andforCO2 sequestration. Rock physics modeling and seismic wave propagation theory provide a set of physical equations to predict the seismic response of subsurface rocks based on their elastic and petrophysical properties. However, the rock and fluid properties are generally unknown and surface geophysical measurements areoftenthe only available data to constrain reservoir models far away from well control. Therefore,reservoirproperties are generally estimated from geophysical data as a solution of an inverse problem, by combining rock physics and seismic models with inverse theory and geostatistical methods, in the context of the geologicalmodelingof the subsurface. A probabilistic approach to the inverse problem provides the probability distribution

Trade Review

"This is a very timely book that combines traditional geoscience disciplines, rock physics and geostatistics with recent developments in inversion theory, all within an overall probabilistic framework. It will serve as both a reference and a source of inspiration for future development in this rapidly advancing field."
Patrick Alexander Connolly, Mathematical Geosciences



Table of Contents

Preface x

Acknowledgments xii

1 Review of Probability and Statistics 1

1.1 Introduction to Probability and Statistics 1

1.2 Probability 3

1.3 Statistics 6

1.3.1 Univariate Distributions 6

1.3.2 Multivariate Distributions 12

1.4 Probability Distributions 16

1.4.1 Bernoulli Distribution 16

1.4.2 Uniform Distribution 17

1.4.3 Gaussian Distribution 17

1.4.4 Log-Gaussian Distribution 19

1.4.5 Gaussian Mixture Distribution 21

1.4.6 Beta Distribution 23

1.5 Functions of Random Variable 23

1.6 Inverse Theory 25

1.7 Bayesian Inversion 27

2 Rock Physics Models 29

2.1 Rock Physics Relations 29

2.1.1 Porosity – Velocity Relations 29

2.1.2 Porosity – Clay Volume – Velocity Relations 31

2.1.3 P-Wave and S-Wave Velocity Relations 32

2.1.4 Velocity and Density 33

2.2 Effective Media 34

2.2.1 Solid Phase 34

2.2.2 Fluid Phase 39

2.3 Critical Porosity Concept 43

2.4 Granular Media Models 44

2.5 Inclusion Models 46

2.6 Gassmann’s Equations and Fluid Substitution 51

2.7 Other Rock Physics Relations 56

2.8 Application 60

3 Geostatistics for Continuous Properties 66

3.1 Introduction to Spatial Correlation 66

3.2 Spatial Correlation Functions 70

3.3 Spatial Interpolation 77

3.4 Kriging 79

3.4.1 Simple Kriging 80

3.4.2 Data Configuration 85

3.4.3 Ordinary Kriging and Universal Kriging 88

3.4.4 Cokriging 90

3.5 Sequential Simulations 94

3.5.1 Sequential Gaussian Simulation 94

3.5.2 Sequential Gaussian Co-Simulation 100

3.6 Other Simulation Methods 102

3.7 Application 105

4 Geostatistics for Discrete Properties 109

4.1 Indicator Kriging 109

4.2 Sequential Indicator Simulation 114

4.3 Truncated Gaussian Simulation 118

4.4 Markov Chain Models 120

4.5 Multiple-Point Statistics 123

4.6 Application 127

5 Seismic and Petrophysical Inversion 129

5.1 Seismic Modeling 130

5.2 Bayesian Inversion 133

5.3 Bayesian Linearized AVO Inversion 135

5.3.1 Forward Model 135

5.3.2 Inverse Problem 137

5.4 Bayesian Rock Physics Inversion 141

5.4.1 Linear – Gaussian Case 142

5.4.2 Linear – Gaussian Mixture Case 143

5.4.3 Non-linear – Gaussian Mixture Case 146

5.4.4 Non-linear – Non-parametric Case 149

5.5 Uncertainty Propagation 152

5.6 Geostatistical Inversion 154

5.6.1 Markov Chain Monte Carlo Methods 156

5.6.2 Ensemble Smoother Method 157

5.6.3 Gradual Deformation Method 159

5.7 Other Stochastic Methods 163

6 Seismic Facies Inversion 165

6.1 Bayesian Classification 165

6.2 Bayesian Markov Chain Gaussian Mixture Inversion 172

6.3 Multimodal Markov Chain Monte Carlo Inversion 176

6.4 Probability Perturbation Method 179

6.5 Other Stochastic Methods 181

7 Integrated Methods 183

7.1 Sources of Uncertainty 184

7.2 Time-Lapse Seismic Inversion 186

7.3 Electromagnetic Inversion 188

7.4 History Matching 189

7.5 Value of Information 192

8 Case Studies 194

8.1 Hydrocarbon Reservoir Studies 194

8.1.1 Bayesian Linearized Inversion 194

8.1.2 Ensemble Smoother Inversion 198

8.1.3 Multimodal Markov Chain Monte Carlo Inversion 203

8.2 CO2 Sequestration Study 206

Appendix: MATLAB Codes 211

A.1 Rock Physics Modeling 211

A.2 Geostatistical Modeling 213

A.3 Inverse Modeling 217

A.3.1 Seismic Inversion 218

A.3.2 Petrophysical Inversion 220

A.3.3 Ensemble Smoother Inversion 223

A.4 Facies Modeling 226

References 229

Index 242

Seismic Reservoir Modeling

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    RRP £71.95 – you save £7.19 (9%)

    Order before 4pm today for delivery by Sat 20 Jun 2026.

    A Hardback by Dario Grana, Tapan Mukerji, Philippe Doyen

    15 in stock


      View other formats and editions of Seismic Reservoir Modeling by Dario Grana

      Publisher: John Wiley and Sons Ltd
      Publication Date: 13/05/2021
      ISBN13: 9781119086185, 978-1119086185
      ISBN10: 1119086183
      Also in:
      Earth sciences

      Description

      Book Synopsis

      Seismic reservoir characterizationaimsto build 3-dimensional models of rock and fluid properties, including elastic and petrophysicalvariables, to describe andmonitor the state of the subsurfacefor hydrocarbonexploration andproduction andforCO2 sequestration. Rock physics modeling and seismic wave propagation theory provide a set of physical equations to predict the seismic response of subsurface rocks based on their elastic and petrophysical properties. However, the rock and fluid properties are generally unknown and surface geophysical measurements areoftenthe only available data to constrain reservoir models far away from well control. Therefore,reservoirproperties are generally estimated from geophysical data as a solution of an inverse problem, by combining rock physics and seismic models with inverse theory and geostatistical methods, in the context of the geologicalmodelingof the subsurface. A probabilistic approach to the inverse problem provides the probability distribution

      Trade Review

      "This is a very timely book that combines traditional geoscience disciplines, rock physics and geostatistics with recent developments in inversion theory, all within an overall probabilistic framework. It will serve as both a reference and a source of inspiration for future development in this rapidly advancing field."
      Patrick Alexander Connolly, Mathematical Geosciences



      Table of Contents

      Preface x

      Acknowledgments xii

      1 Review of Probability and Statistics 1

      1.1 Introduction to Probability and Statistics 1

      1.2 Probability 3

      1.3 Statistics 6

      1.3.1 Univariate Distributions 6

      1.3.2 Multivariate Distributions 12

      1.4 Probability Distributions 16

      1.4.1 Bernoulli Distribution 16

      1.4.2 Uniform Distribution 17

      1.4.3 Gaussian Distribution 17

      1.4.4 Log-Gaussian Distribution 19

      1.4.5 Gaussian Mixture Distribution 21

      1.4.6 Beta Distribution 23

      1.5 Functions of Random Variable 23

      1.6 Inverse Theory 25

      1.7 Bayesian Inversion 27

      2 Rock Physics Models 29

      2.1 Rock Physics Relations 29

      2.1.1 Porosity – Velocity Relations 29

      2.1.2 Porosity – Clay Volume – Velocity Relations 31

      2.1.3 P-Wave and S-Wave Velocity Relations 32

      2.1.4 Velocity and Density 33

      2.2 Effective Media 34

      2.2.1 Solid Phase 34

      2.2.2 Fluid Phase 39

      2.3 Critical Porosity Concept 43

      2.4 Granular Media Models 44

      2.5 Inclusion Models 46

      2.6 Gassmann’s Equations and Fluid Substitution 51

      2.7 Other Rock Physics Relations 56

      2.8 Application 60

      3 Geostatistics for Continuous Properties 66

      3.1 Introduction to Spatial Correlation 66

      3.2 Spatial Correlation Functions 70

      3.3 Spatial Interpolation 77

      3.4 Kriging 79

      3.4.1 Simple Kriging 80

      3.4.2 Data Configuration 85

      3.4.3 Ordinary Kriging and Universal Kriging 88

      3.4.4 Cokriging 90

      3.5 Sequential Simulations 94

      3.5.1 Sequential Gaussian Simulation 94

      3.5.2 Sequential Gaussian Co-Simulation 100

      3.6 Other Simulation Methods 102

      3.7 Application 105

      4 Geostatistics for Discrete Properties 109

      4.1 Indicator Kriging 109

      4.2 Sequential Indicator Simulation 114

      4.3 Truncated Gaussian Simulation 118

      4.4 Markov Chain Models 120

      4.5 Multiple-Point Statistics 123

      4.6 Application 127

      5 Seismic and Petrophysical Inversion 129

      5.1 Seismic Modeling 130

      5.2 Bayesian Inversion 133

      5.3 Bayesian Linearized AVO Inversion 135

      5.3.1 Forward Model 135

      5.3.2 Inverse Problem 137

      5.4 Bayesian Rock Physics Inversion 141

      5.4.1 Linear – Gaussian Case 142

      5.4.2 Linear – Gaussian Mixture Case 143

      5.4.3 Non-linear – Gaussian Mixture Case 146

      5.4.4 Non-linear – Non-parametric Case 149

      5.5 Uncertainty Propagation 152

      5.6 Geostatistical Inversion 154

      5.6.1 Markov Chain Monte Carlo Methods 156

      5.6.2 Ensemble Smoother Method 157

      5.6.3 Gradual Deformation Method 159

      5.7 Other Stochastic Methods 163

      6 Seismic Facies Inversion 165

      6.1 Bayesian Classification 165

      6.2 Bayesian Markov Chain Gaussian Mixture Inversion 172

      6.3 Multimodal Markov Chain Monte Carlo Inversion 176

      6.4 Probability Perturbation Method 179

      6.5 Other Stochastic Methods 181

      7 Integrated Methods 183

      7.1 Sources of Uncertainty 184

      7.2 Time-Lapse Seismic Inversion 186

      7.3 Electromagnetic Inversion 188

      7.4 History Matching 189

      7.5 Value of Information 192

      8 Case Studies 194

      8.1 Hydrocarbon Reservoir Studies 194

      8.1.1 Bayesian Linearized Inversion 194

      8.1.2 Ensemble Smoother Inversion 198

      8.1.3 Multimodal Markov Chain Monte Carlo Inversion 203

      8.2 CO2 Sequestration Study 206

      Appendix: MATLAB Codes 211

      A.1 Rock Physics Modeling 211

      A.2 Geostatistical Modeling 213

      A.3 Inverse Modeling 217

      A.3.1 Seismic Inversion 218

      A.3.2 Petrophysical Inversion 220

      A.3.3 Ensemble Smoother Inversion 223

      A.4 Facies Modeling 226

      References 229

      Index 242

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