SlideShare une entreprise Scribd logo
1  sur  31
Télécharger pour lire hors ligne
Integration of Seismic Data and
     Uncertainties in the Facies Model
     P. Nivlet*, S. Ng, M.A. Hetle, K. Børset, A.B. Rustad (Statoil ASA),
     P. Dahle, R. Hauge & O. Kolbjørnsen (Norwegian Computing Center)



1-   Classification: Internal   2010-06-10
Motivation: 3D reservoir modelling



                                                                                            Reservoir
                                                                                            simulations




                                                                                                          Production data

                                                                       3D reservoir model




2-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
The Snorre field

                                                                            • Location: Blocks 34/4 and 34/7 in the
                                                                              Tampen area, in the northern part of the
                                                                              North Sea (191 km2)


                                                                            • Production start: 1992


                                                                            • Production (2009): ~180,000 bbl/day




3-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Motivations: Data integration




                 seismic amplitudes
                    (angle-stacks)




                                                         Well log data      3D reservoir model

               Structure, stratigraphy




4-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Challenges in integrating the data




     • Multi-scale issue

5-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Challenges in integrating the data


                                                                                          Shale

                                                 2.0
                                               Vp/Vs




                                                                     Sand
                                                 1.7


                                                       6,000                               10,000
                                                                      AI    (g/cm3.m/s)
     • Non-unique relationship between seismic amplitudes and geology
     • A multivariate problem

6-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
The data uncertainty challenge




     • Random noise
     • Acquisition / Processing footprint
     • Angle Misalignments
     • Imperfect physical model


7-    72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Geological setting




 1,000 m




                  •Reservoir depth: 2-2.7 km

8-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Traditional workflow

                                                                                           Reservoir grid
                                                                                              (depth)


                                                                                             geometry
     Seismic attribute
                                                                   Well facies+extracted
         (depth)
                                                                    seismic attribute


                                                                            conditioning

                                                 integration
                                                                                             Facies model


9-   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Proposed workflow

                                                                                             Reservoir grid
                                                                                                (depth)


                                                                                               geometry
       Seismic attribute
           (depth)                                                   Well facies+extracted
                                                                      seismic attribute


                                                                              conditioning

                                                   integration
                                                                                               Facies model


10 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Workflow from inversion to facies prediction
                                                           Bayesian wavelet
                                                           extraction

                                                                    Seismic
                                                                    modelling
                                                                                    Vp
                                                                                                             Seismic facies
                                                                                                             analysis

                                                                                    Vs
           Seismic (partial angle-stacks)
                                                                Inversion

                                                                                    ρ
                                                                                                             34/4-1
                                                                                                             34/4-


                                                                                m         BCU




            =
                                                                                                                      OWCLunde   Increasing
                                                                                                                                 probability
                                                                                                                                  of shale
                                                                                         SN ML




                                                                                         SN LL                                   Decreasing
                                                                                                                                 probability
                                                                                                                                  of shale




                                                                                                  Lomvi Fm




       m         mBG           mS           mHF                                                  Facies probability

11 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Geostatistical seismic inversion

       • 1D modelling of seismic amplitudes (Aki&Richards’ model): linear in
         m=(log(vp), log(vs), log))


                                                     d  Gm  n

       • Normal distribution of elastic properties m

                                mm|d = mBG+mG*(GmG* + e )-1(d - GmBG)

                                m|d = m - mG*(GmG* + e )-1G m

       • Data (e) stationary uncertainties estimated from analysis of amplitudes
       • Prior (m) stationary uncertainties estimated from well log analysis


12 -    72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Advantages/limitations of the technique




                                                                              Stationary uncertainty model:
       Lateral correlations
                                                                                       - Global matrix
                      - Different stratigraphy settings                                - Lateral correlations
                      - Grid built from max. 2 horizons                                - Vertical correlations

13 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Inversion result: Elastic properties




14 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Impact on elastic parameter uncertainties
                                                                                         Seismic bandwidth (Near)
               0                 10                20                 30

         AI
                                                                                 0
         Vp

         Rho
                                                                               -50
         SI

         Vs

       Vp/Vs
                                                                                     0        20             40     60
                                                                                                   Frequency (Hz)


                        Prior Posterior uncertainty                                 Prior Posterior uncertainty
                               variation (%)                                               variation AI (%)


15 -    72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Inversion results QC
                                                                                            Band-pass filtered

                                                                                       AI        SI              Rhob




                                                                              100 ms
                                                                                                                        Well

                                                                                                                        Inversion




                                                                                Multivariate correlation (RV) between band-
                                                                                pass well-logs and inversion results

                                                                                 35% of wells RV > 0.8
                                                                                 33% of wells 0.8 > RV > 0.7
                                                                                 32% of wells RV < 0.7

16 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Workflow from inversion to facies prediction
                                                           Bayesian wavelet
                                                           extraction

                                                                    Seismic
                                                                    modelling
                                                                                    Vp
                                                                                                             Seismic facies
                                                                                                             analysis

                                                                                    Vs
           Seismic (partial angle-stacks)
                                                                Inversion

                                                                                    ρ
                                                                                                             34/4-1
                                                                                                             34/4-


                                                                                m         BCU




            =
                                                                                                                      OWCLunde   Increasing
                                                                                                                                 probability
                                                                                                                                  of shale
                                                                                         SN ML




                                                                                         SN LL                                   Decreasing
                                                                                                                                 probability
                                                                                                                                  of shale




                                                                                                  Lomvi Fm




       m         mBG           mS           mHF                                                  Facies probability

17 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Supervised seismic facies analysis




                                          Kernel
                                          estimator




                                                              p(m | Sand)
                                                                              p(Sand | m)




18 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Supervised seismic facies analysis

                                          Different resolution scales

                         Raw Well logs
                         Filtered well logs
                         Inversion results at well position
                         Inversion filtered well logs



                        μ m|d = μm+(I- Σm/dΣm-1)(m – μm) + e*

19 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Cross plots: Inversion filtered well logs



                                                                                                                            1
             2.0                                                                2.0
                                                  Shale




                                                                              Vp/Vs
           Vp/Vs




                               Sand
             1.7                                                                1.7

                                                                                                                            0
                     6,000                                  10,000                    6,000                        10,000
                                    AI   (g/cm3   m/s)                                        AI   (g/cm3   m/s)


              Inversion frequency filtered                                              Predicted SAND probability

20 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Seismic facies analysis: Sand probability results




                                                                              Sand
                                                                              probability

21 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Inversion results QC: Finding optimal well
       position

                                                                              Confidence index (khi2):
                                                                              Vertical sand proportion from well
       100
       ms                                                                     compared with seismic sand probability




         Seismic sand probability section




22 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Facies probability QC




                                                                               31% of wells: Good confidence
                                                                               61% of wells: Medium
                                                                               8% of wells: Bad confidence




23 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Inversion results QC

                                      Potential factors impacting mismatch

                                              Stratigraphic level             ++

                                   Position with respect to OWC               +

                                              Presence of faults              +

                                       Average shale proportion               +




24 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
3D confidence index
                                                                              • Measurement of prediction


                                                                              • Weighting function in facies
                                                                                modelling




                                                                                                               1

              Well                              Confidence
             Inversion result                   [0,1]

                                                                                                                   0




25 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Proposed workflow

                                                                                             Reservoir grid
                                                                                                (depth)


                                                                                               geometry

                                                                     Well facies+extracted
                                                                      seismic attribute


                                                                              conditioning

                                                   integration
                                                                                               Facies model


26 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Snorre: Average proportion of channel
                                  Average map estimated from 8 realizations




                                                                1             1




                                                                0             0



27 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Concluding remarks

       • Integrated workflow from seismic inversion to consistent seismic constrained
         facies modelling


       • Fast geostatistical inversion approach and facies prediction


       • Consistent resolution between inversion results and facies probabilities gives
         realistic predictions and facies models




28 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Concluding remarks: Further work


       • How to refine the upscaling of elastic parameters from well log to seismic
         scales? How to have a more local approach?


       • Constraining observed 4D signals by using predicted facies sand probability
         (Ayzenberg and Theune, “Stratigraphically constrained seismic 4D inversion”
         M017, Room 127/128, Wednesday, 9h30)


       • Flow simulations of constrained facies models and history matching with 4D for
         more predictive production prognoses




29 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Acknowledgements




          Thanks to Statoil, Norwegian Computing Center and the
                                Snorre partners
       Petoro, ExxonMobil Norge, Idemitsu Petroleum, RWE Dea
           Norge, Total E&P Norge and Amerada Hess Norge
                  for discussions and permission to publish this work.



30 -   72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
Thank you
       Integration of Seismic Data and Uncertainties in the
       Facies Model

       Philippe Nivlet
       Principal Geophysicist –Petek Tyrihans
       pniv@statoil.com, tel: +47 958 16 589
       www.statoil.com




31 -    72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010

Contenu connexe

Tendances

Avo ppt (Amplitude Variation with Offset)
Avo ppt (Amplitude Variation with Offset)Avo ppt (Amplitude Variation with Offset)
Avo ppt (Amplitude Variation with Offset)Haseeb Ahmed
 
Seismic Data Processing, Ahmed Osama
Seismic Data Processing, Ahmed OsamaSeismic Data Processing, Ahmed Osama
Seismic Data Processing, Ahmed OsamaAhmed Osama
 
Rock Physics: Seismic Velocity
Rock Physics: Seismic VelocityRock Physics: Seismic Velocity
Rock Physics: Seismic VelocityAli Osman Öncel
 
Quantitative and Qualitative Seismic Interpretation of Seismic Data
Quantitative and Qualitative Seismic Interpretation of Seismic Data Quantitative and Qualitative Seismic Interpretation of Seismic Data
Quantitative and Qualitative Seismic Interpretation of Seismic Data Haseeb Ahmed
 
Quantitative and qualitative seismic attributes interpretation
Quantitative and qualitative seismic attributes interpretationQuantitative and qualitative seismic attributes interpretation
Quantitative and qualitative seismic attributes interpretationmohamed Shihata
 
Seismic attribute analysis using complex trace analysis
Seismic attribute analysis using complex trace analysisSeismic attribute analysis using complex trace analysis
Seismic attribute analysis using complex trace analysisSomak Hajra
 
Introduction to seismic interpretation
Introduction to seismic interpretationIntroduction to seismic interpretation
Introduction to seismic interpretationAmir I. Abdelaziz
 
Interpretation 23.12.13
Interpretation 23.12.13Interpretation 23.12.13
Interpretation 23.12.13Shashwat Sinha
 
What do you means by seismic resolution
What do you means by seismic resolutionWhat do you means by seismic resolution
What do you means by seismic resolutionHaseeb Ahmed
 
Reservoir Geophysics : Brian Russell Lecture 1
Reservoir Geophysics : Brian Russell Lecture 1Reservoir Geophysics : Brian Russell Lecture 1
Reservoir Geophysics : Brian Russell Lecture 1Ali Osman Öncel
 
inverse theory and inversion of seismic
inverse theory and inversion of seismic inverse theory and inversion of seismic
inverse theory and inversion of seismic Abdullah Abderahman
 
Seismic Attributes .pptx
Seismic Attributes .pptxSeismic Attributes .pptx
Seismic Attributes .pptxHaseeb Ahmed
 
Filtering in seismic data processing? How filtering help to suppress noises.
Filtering in seismic data processing? How filtering help to suppress noises. Filtering in seismic data processing? How filtering help to suppress noises.
Filtering in seismic data processing? How filtering help to suppress noises. Haseeb Ahmed
 
Multicomponent Seismic Data API
Multicomponent Seismic Data APIMulticomponent Seismic Data API
Multicomponent Seismic Data APIBablu Nonia
 
Seismic stratigraphy techniques
Seismic stratigraphy techniquesSeismic stratigraphy techniques
Seismic stratigraphy techniquesNabaz Jawhar
 
Lecture 23 april29 static correction
Lecture 23 april29 static correctionLecture 23 april29 static correction
Lecture 23 april29 static correctionAmin khalil
 

Tendances (20)

Avo ppt (Amplitude Variation with Offset)
Avo ppt (Amplitude Variation with Offset)Avo ppt (Amplitude Variation with Offset)
Avo ppt (Amplitude Variation with Offset)
 
Seismic Data Processing, Ahmed Osama
Seismic Data Processing, Ahmed OsamaSeismic Data Processing, Ahmed Osama
Seismic Data Processing, Ahmed Osama
 
Rock Physics: Seismic Velocity
Rock Physics: Seismic VelocityRock Physics: Seismic Velocity
Rock Physics: Seismic Velocity
 
Seismic data processing
Seismic data processingSeismic data processing
Seismic data processing
 
Quantitative and Qualitative Seismic Interpretation of Seismic Data
Quantitative and Qualitative Seismic Interpretation of Seismic Data Quantitative and Qualitative Seismic Interpretation of Seismic Data
Quantitative and Qualitative Seismic Interpretation of Seismic Data
 
Quantitative and qualitative seismic attributes interpretation
Quantitative and qualitative seismic attributes interpretationQuantitative and qualitative seismic attributes interpretation
Quantitative and qualitative seismic attributes interpretation
 
Introduction to velocity model building
Introduction to velocity model buildingIntroduction to velocity model building
Introduction to velocity model building
 
Seismic attribute analysis using complex trace analysis
Seismic attribute analysis using complex trace analysisSeismic attribute analysis using complex trace analysis
Seismic attribute analysis using complex trace analysis
 
Introduction to seismic interpretation
Introduction to seismic interpretationIntroduction to seismic interpretation
Introduction to seismic interpretation
 
Interpretation 23.12.13
Interpretation 23.12.13Interpretation 23.12.13
Interpretation 23.12.13
 
What do you means by seismic resolution
What do you means by seismic resolutionWhat do you means by seismic resolution
What do you means by seismic resolution
 
SEISMIC METHOD
SEISMIC METHODSEISMIC METHOD
SEISMIC METHOD
 
Reservoir Geophysics : Brian Russell Lecture 1
Reservoir Geophysics : Brian Russell Lecture 1Reservoir Geophysics : Brian Russell Lecture 1
Reservoir Geophysics : Brian Russell Lecture 1
 
inverse theory and inversion of seismic
inverse theory and inversion of seismic inverse theory and inversion of seismic
inverse theory and inversion of seismic
 
Seismic Attributes .pptx
Seismic Attributes .pptxSeismic Attributes .pptx
Seismic Attributes .pptx
 
Filtering in seismic data processing? How filtering help to suppress noises.
Filtering in seismic data processing? How filtering help to suppress noises. Filtering in seismic data processing? How filtering help to suppress noises.
Filtering in seismic data processing? How filtering help to suppress noises.
 
Multicomponent Seismic Data API
Multicomponent Seismic Data APIMulticomponent Seismic Data API
Multicomponent Seismic Data API
 
Sonic log
Sonic logSonic log
Sonic log
 
Seismic stratigraphy techniques
Seismic stratigraphy techniquesSeismic stratigraphy techniques
Seismic stratigraphy techniques
 
Lecture 23 april29 static correction
Lecture 23 april29 static correctionLecture 23 april29 static correction
Lecture 23 april29 static correction
 

Plus de Statoil

Technologies to solve new energy challenges
Technologies to solve new energy challengesTechnologies to solve new energy challenges
Technologies to solve new energy challengesStatoil
 
Bakken Development: Pathway to Success, Roadmap to a New Tomorrow
Bakken Development: Pathway to Success, Roadmap to a New TomorrowBakken Development: Pathway to Success, Roadmap to a New Tomorrow
Bakken Development: Pathway to Success, Roadmap to a New TomorrowStatoil
 
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...Statoil
 
A collaborative approach to the Arctic
A collaborative approach to the ArcticA collaborative approach to the Arctic
A collaborative approach to the ArcticStatoil
 
Statoil at OTC 2014 - The Power of Possible
Statoil at OTC 2014 - The Power of PossibleStatoil at OTC 2014 - The Power of Possible
Statoil at OTC 2014 - The Power of PossibleStatoil
 
Statoil in north america nacc otc lunch 050614
Statoil in north america   nacc otc lunch 050614Statoil in north america   nacc otc lunch 050614
Statoil in north america nacc otc lunch 050614Statoil
 
Challenge - Going north
Challenge - Going northChallenge - Going north
Challenge - Going northStatoil
 
Ons 2012 peregrino ior (rev2)
Ons 2012   peregrino ior (rev2)Ons 2012   peregrino ior (rev2)
Ons 2012 peregrino ior (rev2)Statoil
 
Ons 2012 us onshore torstein hole 4 3
Ons 2012 us onshore torstein hole 4 3Ons 2012 us onshore torstein hole 4 3
Ons 2012 us onshore torstein hole 4 3Statoil
 
Ons 2012 us onshore torstein hole
Ons 2012 us onshore torstein holeOns 2012 us onshore torstein hole
Ons 2012 us onshore torstein holeStatoil
 
Challenge - Going north
Challenge - Going northChallenge - Going north
Challenge - Going northStatoil
 
Ons 2012 sek@ior conference presentation fragrafisk-final_2
Ons 2012   sek@ior conference presentation fragrafisk-final_2Ons 2012   sek@ior conference presentation fragrafisk-final_2
Ons 2012 sek@ior conference presentation fragrafisk-final_2Statoil
 
Johan sverdrup ons 2012 speakers corner
Johan sverdrup ons 2012 speakers cornerJohan sverdrup ons 2012 speakers corner
Johan sverdrup ons 2012 speakers cornerStatoil
 
Ons 2012 bkv@åsgard speakers corner
Ons 2012   bkv@åsgard speakers cornerOns 2012   bkv@åsgard speakers corner
Ons 2012 bkv@åsgard speakers cornerStatoil
 
Aasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerAasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerStatoil
 
Aasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerAasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerStatoil
 
Skrugard for ons speakers corner
Skrugard for ons  speakers cornerSkrugard for ons  speakers corner
Skrugard for ons speakers cornerStatoil
 
Arctic the final frontier
Arctic the final frontierArctic the final frontier
Arctic the final frontierStatoil
 
Technology will unlock the far north
Technology will unlock the far northTechnology will unlock the far north
Technology will unlock the far northStatoil
 
Challenge - Going North
Challenge - Going NorthChallenge - Going North
Challenge - Going NorthStatoil
 

Plus de Statoil (20)

Technologies to solve new energy challenges
Technologies to solve new energy challengesTechnologies to solve new energy challenges
Technologies to solve new energy challenges
 
Bakken Development: Pathway to Success, Roadmap to a New Tomorrow
Bakken Development: Pathway to Success, Roadmap to a New TomorrowBakken Development: Pathway to Success, Roadmap to a New Tomorrow
Bakken Development: Pathway to Success, Roadmap to a New Tomorrow
 
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...
Aasta Hansteen Development: Opening a New Gas Region. Extending Gas Infrastru...
 
A collaborative approach to the Arctic
A collaborative approach to the ArcticA collaborative approach to the Arctic
A collaborative approach to the Arctic
 
Statoil at OTC 2014 - The Power of Possible
Statoil at OTC 2014 - The Power of PossibleStatoil at OTC 2014 - The Power of Possible
Statoil at OTC 2014 - The Power of Possible
 
Statoil in north america nacc otc lunch 050614
Statoil in north america   nacc otc lunch 050614Statoil in north america   nacc otc lunch 050614
Statoil in north america nacc otc lunch 050614
 
Challenge - Going north
Challenge - Going northChallenge - Going north
Challenge - Going north
 
Ons 2012 peregrino ior (rev2)
Ons 2012   peregrino ior (rev2)Ons 2012   peregrino ior (rev2)
Ons 2012 peregrino ior (rev2)
 
Ons 2012 us onshore torstein hole 4 3
Ons 2012 us onshore torstein hole 4 3Ons 2012 us onshore torstein hole 4 3
Ons 2012 us onshore torstein hole 4 3
 
Ons 2012 us onshore torstein hole
Ons 2012 us onshore torstein holeOns 2012 us onshore torstein hole
Ons 2012 us onshore torstein hole
 
Challenge - Going north
Challenge - Going northChallenge - Going north
Challenge - Going north
 
Ons 2012 sek@ior conference presentation fragrafisk-final_2
Ons 2012   sek@ior conference presentation fragrafisk-final_2Ons 2012   sek@ior conference presentation fragrafisk-final_2
Ons 2012 sek@ior conference presentation fragrafisk-final_2
 
Johan sverdrup ons 2012 speakers corner
Johan sverdrup ons 2012 speakers cornerJohan sverdrup ons 2012 speakers corner
Johan sverdrup ons 2012 speakers corner
 
Ons 2012 bkv@åsgard speakers corner
Ons 2012   bkv@åsgard speakers cornerOns 2012   bkv@åsgard speakers corner
Ons 2012 bkv@åsgard speakers corner
 
Aasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerAasta hansteen ons speakers corner
Aasta hansteen ons speakers corner
 
Aasta hansteen ons speakers corner
Aasta hansteen ons speakers cornerAasta hansteen ons speakers corner
Aasta hansteen ons speakers corner
 
Skrugard for ons speakers corner
Skrugard for ons  speakers cornerSkrugard for ons  speakers corner
Skrugard for ons speakers corner
 
Arctic the final frontier
Arctic the final frontierArctic the final frontier
Arctic the final frontier
 
Technology will unlock the far north
Technology will unlock the far northTechnology will unlock the far north
Technology will unlock the far north
 
Challenge - Going North
Challenge - Going NorthChallenge - Going North
Challenge - Going North
 

Dernier

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxthorishapillay1
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfphamnguyenenglishnb
 
Procuring digital preservation CAN be quick and painless with our new dynamic...
Procuring digital preservation CAN be quick and painless with our new dynamic...Procuring digital preservation CAN be quick and painless with our new dynamic...
Procuring digital preservation CAN be quick and painless with our new dynamic...Jisc
 
Full Stack Web Development Course for Beginners
Full Stack Web Development Course  for BeginnersFull Stack Web Development Course  for Beginners
Full Stack Web Development Course for BeginnersSabitha Banu
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTiammrhaywood
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomnelietumpap1
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxiammrhaywood
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYKayeClaireEstoconing
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptxmary850239
 
ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4MiaBumagat1
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersSabitha Banu
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17Celine George
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...Postal Advocate Inc.
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parentsnavabharathschool99
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfTechSoup
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Celine George
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxCarlos105
 

Dernier (20)

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptx
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
 
Procuring digital preservation CAN be quick and painless with our new dynamic...
Procuring digital preservation CAN be quick and painless with our new dynamic...Procuring digital preservation CAN be quick and painless with our new dynamic...
Procuring digital preservation CAN be quick and painless with our new dynamic...
 
Full Stack Web Development Course for Beginners
Full Stack Web Development Course  for BeginnersFull Stack Web Development Course  for Beginners
Full Stack Web Development Course for Beginners
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choom
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
 
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdfTataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
 
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptxFINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
 
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptxYOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx
 
ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4ANG SEKTOR NG agrikultura.pptx QUARTER 4
ANG SEKTOR NG agrikultura.pptx QUARTER 4
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginners
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parents
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
 

Integrating Seismic Data and Uncertainties in Facies Modeling

  • 1. Integration of Seismic Data and Uncertainties in the Facies Model P. Nivlet*, S. Ng, M.A. Hetle, K. Børset, A.B. Rustad (Statoil ASA), P. Dahle, R. Hauge & O. Kolbjørnsen (Norwegian Computing Center) 1- Classification: Internal 2010-06-10
  • 2. Motivation: 3D reservoir modelling Reservoir simulations Production data 3D reservoir model 2- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 3. The Snorre field • Location: Blocks 34/4 and 34/7 in the Tampen area, in the northern part of the North Sea (191 km2) • Production start: 1992 • Production (2009): ~180,000 bbl/day 3- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 4. Motivations: Data integration seismic amplitudes (angle-stacks) Well log data 3D reservoir model Structure, stratigraphy 4- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 5. Challenges in integrating the data • Multi-scale issue 5- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 6. Challenges in integrating the data Shale 2.0 Vp/Vs Sand 1.7 6,000 10,000 AI (g/cm3.m/s) • Non-unique relationship between seismic amplitudes and geology • A multivariate problem 6- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 7. The data uncertainty challenge • Random noise • Acquisition / Processing footprint • Angle Misalignments • Imperfect physical model 7- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 8. Geological setting 1,000 m •Reservoir depth: 2-2.7 km 8- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 9. Traditional workflow Reservoir grid (depth) geometry Seismic attribute Well facies+extracted (depth) seismic attribute conditioning integration Facies model 9- 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 10. Proposed workflow Reservoir grid (depth) geometry Seismic attribute (depth) Well facies+extracted seismic attribute conditioning integration Facies model 10 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 11. Workflow from inversion to facies prediction Bayesian wavelet extraction Seismic modelling Vp Seismic facies analysis Vs Seismic (partial angle-stacks) Inversion ρ 34/4-1 34/4- m BCU = OWCLunde Increasing probability of shale SN ML SN LL Decreasing probability of shale Lomvi Fm m mBG mS mHF Facies probability 11 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 12. Geostatistical seismic inversion • 1D modelling of seismic amplitudes (Aki&Richards’ model): linear in m=(log(vp), log(vs), log)) d  Gm  n • Normal distribution of elastic properties m mm|d = mBG+mG*(GmG* + e )-1(d - GmBG) m|d = m - mG*(GmG* + e )-1G m • Data (e) stationary uncertainties estimated from analysis of amplitudes • Prior (m) stationary uncertainties estimated from well log analysis 12 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 13. Advantages/limitations of the technique Stationary uncertainty model: Lateral correlations - Global matrix - Different stratigraphy settings - Lateral correlations - Grid built from max. 2 horizons - Vertical correlations 13 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 14. Inversion result: Elastic properties 14 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 15. Impact on elastic parameter uncertainties Seismic bandwidth (Near) 0 10 20 30 AI 0 Vp Rho -50 SI Vs Vp/Vs 0 20 40 60 Frequency (Hz) Prior Posterior uncertainty Prior Posterior uncertainty variation (%) variation AI (%) 15 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 16. Inversion results QC Band-pass filtered AI SI Rhob 100 ms Well Inversion Multivariate correlation (RV) between band- pass well-logs and inversion results  35% of wells RV > 0.8  33% of wells 0.8 > RV > 0.7  32% of wells RV < 0.7 16 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 17. Workflow from inversion to facies prediction Bayesian wavelet extraction Seismic modelling Vp Seismic facies analysis Vs Seismic (partial angle-stacks) Inversion ρ 34/4-1 34/4- m BCU = OWCLunde Increasing probability of shale SN ML SN LL Decreasing probability of shale Lomvi Fm m mBG mS mHF Facies probability 17 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 18. Supervised seismic facies analysis Kernel estimator p(m | Sand) p(Sand | m) 18 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 19. Supervised seismic facies analysis Different resolution scales Raw Well logs Filtered well logs Inversion results at well position Inversion filtered well logs μ m|d = μm+(I- Σm/dΣm-1)(m – μm) + e* 19 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 20. Cross plots: Inversion filtered well logs 1 2.0 2.0 Shale Vp/Vs Vp/Vs Sand 1.7 1.7 0 6,000 10,000 6,000 10,000 AI (g/cm3 m/s) AI (g/cm3 m/s) Inversion frequency filtered Predicted SAND probability 20 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 21. Seismic facies analysis: Sand probability results Sand probability 21 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 22. Inversion results QC: Finding optimal well position Confidence index (khi2): Vertical sand proportion from well 100 ms compared with seismic sand probability Seismic sand probability section 22 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 23. Facies probability QC  31% of wells: Good confidence  61% of wells: Medium  8% of wells: Bad confidence 23 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 24. Inversion results QC Potential factors impacting mismatch Stratigraphic level ++ Position with respect to OWC + Presence of faults + Average shale proportion + 24 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 25. 3D confidence index • Measurement of prediction • Weighting function in facies modelling 1 Well Confidence Inversion result [0,1] 0 25 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 26. Proposed workflow Reservoir grid (depth) geometry Well facies+extracted seismic attribute conditioning integration Facies model 26 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 27. Snorre: Average proportion of channel Average map estimated from 8 realizations 1 1 0 0 27 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 28. Concluding remarks • Integrated workflow from seismic inversion to consistent seismic constrained facies modelling • Fast geostatistical inversion approach and facies prediction • Consistent resolution between inversion results and facies probabilities gives realistic predictions and facies models 28 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 29. Concluding remarks: Further work • How to refine the upscaling of elastic parameters from well log to seismic scales? How to have a more local approach? • Constraining observed 4D signals by using predicted facies sand probability (Ayzenberg and Theune, “Stratigraphically constrained seismic 4D inversion” M017, Room 127/128, Wednesday, 9h30) • Flow simulations of constrained facies models and history matching with 4D for more predictive production prognoses 29 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 30. Acknowledgements Thanks to Statoil, Norwegian Computing Center and the Snorre partners Petoro, ExxonMobil Norge, Idemitsu Petroleum, RWE Dea Norge, Total E&P Norge and Amerada Hess Norge for discussions and permission to publish this work. 30 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010
  • 31. Thank you Integration of Seismic Data and Uncertainties in the Facies Model Philippe Nivlet Principal Geophysicist –Petek Tyrihans pniv@statoil.com, tel: +47 958 16 589 www.statoil.com 31 - 72nd EAGE Conference and Exhibition – Barcelona, June 14th-17th 2010