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Hydro-frac Source Estimation by Time Reversal Mirrors Weiping Cao and Chaiwoot Boonyasiriwat Feb 7, 2008.

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Presentation on theme: "Hydro-frac Source Estimation by Time Reversal Mirrors Weiping Cao and Chaiwoot Boonyasiriwat Feb 7, 2008."— Presentation transcript:

1 Hydro-frac Source Estimation by Time Reversal Mirrors Weiping Cao and Chaiwoot Boonyasiriwat Feb 7, 2008

2 Outline ■ Motivation ■ Methodology ■ Numerical Examples ■ Conclusions

3 Outline ■ Motivation ■ Methodology ■ Numerical Examples ■ Conclusions

4 Motivation Hydro-frac is important for oil recovery operations Only a local velocity model near the well is needed to locate hydro-fracs by TRM Potential for super-resolution and super-stacking properties from TRM

5 Outline ■ ■ Motivation ■ Methodology ■ Numerical Examples ■ Conclusions

6 Methodology TRM imaging Apply TRM to locate hydro-fracs by wavefield extrapolation Detailed implementation

7 TRM Imaging Time Reversal Mirror Time Primary Multiples Image source location with natural Green’s functions (GF) No velocity model needed

8 Apply TRM to Locating Hydro-fracs : passive data generated by hydro-fracs Problem: to find Solution: to extrapolate VSP or seismic while drilling (SWD) data. TRM imaging s g

9 Obtain by Wavefield Extrapolation g gogo x gogo g x Forward extrapolation: : convolution Backward extrapolation: : crosscorrelation Semi-natural GFs obtained with a local velocity model

10 Summary for the implementation ■ Record VSP or SWD data ■ Extrapolate VSP or SWD data to obtain semi-natural GFs between surface and image points using the local velocity model near the well ■ Crosscorrelate these semi-natural GFs to the passive seismic data generated by hydro-fracs

11 Outline ■ Motivation ■ Methodology Numerical Examples ■ Conclusions

12 Numerical Examples Synthetic Tests with SEG/EAGE Salt Model: TRM locating hydro-fracs with correct source excitation times TRM locating hydro-fracs in the presence of strong background noise Sensitivity of TRM image to source excitation times

13 Synthetic Data Generation 0 3.5 016 Z (km) X (km) SEG/EAGE Salt Model 4 (km/s) 2 (km/s) Synthetic data: RVSP or SWD data, passive seismic gathers

14 3.2 3.7 Z (km) 812 X (km) 3.5 2.5 km/s Image with Correct Source Excitation Times TRM imaging with forward extrapolation Actual hydro-frac location: (10 km, 3.4 km)

15 2.7 3.2 Z (km) 812 X (km) 3.1 2.3 km/s Image with Correct Source Excitation Times TRM imaging with backward extrapolation Actual hydro-frac location: (10 km, 3.01 km)

16 Strong Background Noise Synthetic Passive Gather 0 6 015Receiver X (km) Time (s) Noisy Gather: S/N = 1/10,495 0 6 015Receiver X (km) Time (s) Actual hydro-frac source location: (10 km, 3.01 km)

17 Strong Background Noise 2.7 3.2 Z (km) 812 X (km) 1 -0.5 TRM Image from the Noise-free Gather

18 Strong Background Noise TRM Image from the Noisy Gather: S / N =1 / 10496 2.7 3.2 Z (km) 812 X (km) 1 -0.5

19 Incorrect Source Excitation Times 20 ms advance 3.2 3.7 Z (km) 8 12 X (km) Exact source excitation time 3.2 3.7 Z (km) 8 12 X (km) 20 ms delay 3.2 3.7 Z (km) 8 12 X (km)

20 Outline ■ Motivation ■ Methodology ■ Numerical Examples Conclusions

21 ■ TRM accurately locates hydro-fracs from VSP or SWD data using correct source excitation times. Only a local velocity model is needed. ■ TRM images show strong resilience to white noise. ■ TRM images are sensitive to source excitation times. ■ 2-D media assumption.

22 Acknowledgments We thank the 2007 UTAM sponsors for their support


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