Automatic microseismic event detection by band-limited phase-only correlation

Automatic microseismic event detection by band-limited phase-only correlation

Accepted Manuscript Automatic Microseismic Event Detection by Band-Limited Phase-Only Correlation Shaojiang Wu, Yibo Wang, Yi Zhan, Xu Chang PII: DOI:...

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Accepted Manuscript Automatic Microseismic Event Detection by Band-Limited Phase-Only Correlation Shaojiang Wu, Yibo Wang, Yi Zhan, Xu Chang PII: DOI: Reference:

S0031-9201(16)30214-X http://dx.doi.org/10.1016/j.pepi.2016.09.005 PEPI 5965

To appear in:

Physics of the Earth and Planetary Interiors

Received Date: Revised Date: Accepted Date:

2 October 2015 20 September 2016 21 September 2016

Please cite this article as: Wu, S., Wang, Y., Zhan, Y., Chang, X., Automatic Microseismic Event Detection by Band-Limited Phase-Only Correlation, Physics of the Earth and Planetary Interiors (2016), doi: http://dx.doi.org/ 10.1016/j.pepi.2016.09.005

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1

Automatic Microseismic Event Detection by Band-Limited Phase-Only Correlation

2 3 4

Shaojiang Wu 1, 2, Yibo Wang1,*, Yi Zhan3, Xu Chang 1

5 6

1. Key Laboratory of Shale Gas and Geoengineering, Institute of Geology and

7

Geophysics, Chinese Academy of Sciences, Beijing 100029, China

8

2. University of Chinese Academy of Sciences, Beijing 100049, China

9

3. Geophysical Research Institute, Bureau of Oil Geophysical Prospecting, CNPC,

10

Zhuozhou, Hebei Province 072750, China

11

* Corresponding author. Tel. /fax: +86 1082998624.

12

E-mail address: [email protected] (Y. Wang).

13 14

15

ABSTRACT

16

Identification and detection of microseismic events is a significant issue in source

17

locations and source mechanism analysis. The number of the records is notably large,

18

especially in the case of some real-time monitoring, and while the majority of

19

microseismic events are highly weak and sparse, automatic algorithms are

20

indispensable. In this study, we introduce an effective method for the identification

21

and detection of microseismic events by judging whether the P-wave phase exists in a

22

local segment from a single three-component microseismic records. The new judging

23

algorithm consists primarily of the following key steps: 1) transform the waveform

24

time series into time-varying spectral representations using the S-transform; 2)

25

calculate the similarity of the frequency content in the time-frequency domain using

26

the phase-only correlation function; and 3) identify the P-phase by the combination

27

analysis between any two components. The proposed algorithm is compared to a

28

similar approach using the cross-correlation in the time domain between any two

29

components and later tested with synthetic microseismic datasets and real

30

field-recorded datasets. The results indicate that the proposed algorithm is able to

31

distinguish similar and dissimilar waveforms, even for low signal noise ratio and

32

emergent events, which is important for accurate and rapid selection of microseismic

33

events from a large number of records. This method can be applied to other

34

geophysical analyses based on the waveform data.

35 36

INTRODUCTION

37

Generally, the microseismic activity is induced by small magnitude hydraulic

38

fracturing (Maxwell and Urbancic, 2001) and acquired in low signal to noise (SNR)

39

environments. Meanwhile, the number of raw records is very large, especially from

40

real-time monitoring, while the majority of microseismic events seldom occur. Prior

41

to the localization and mechanism analysis of the source, the identification and

42

detection of events become an important challenge. Normally, the existing

43

event-detecting processes can be split into two steps: first, detection of the segment of

44

the records containing the seismic events, and then accurately identifying and picking

45

the target phase. The first stage of detection for a microseismic event is

46

time-consuming, as it requires examination of a large number of raw records; however,

47

all subsequent steps require less resources, as they are based on the previous

48

selections.

49 50

The correlation-type and energy analysis are two principal methods for event

51

detection. The energy analysis is a broadly applicable method due to few assumptions

52

about the data. The most-used approach is defined as the energy ratio of the

53

short-time-average to the long-time-average (STA/LTA) (Earle and Shearer 1994)

54

within moving time windows, which can detect the appearance of seismic events

55

when the ratio exceeds the given thresholds. However, this method is not sensitive to

56

the weak low-magnitude events that have loud background noise, similar to those

57

which occur during hydraulic fracturing. The correlation-type methods, such as

58

cross-correlation within the time domain, detect similar events to a referenced event,

59

known as the master event, by a calculated correlation coefficient to it (Gibbons and

60

Ringdal, 2006; Song et al. 2010). However, the referenced master template waveform

61

is difficult to make when the majority of seismic events occur from unknown and

62

dissimilar sources, and the calculated similarity coefficient is inaccurate without

63

sufficient data, meaning that a long data collection window is required for accuracy.

64 65

Both of the described methods are amplitude-biased, due to the strong dependence on

66

the waveforms and relative amplitudes (Schimmel and Paulssen, 1997). Therefore,

67

results may be ambiguous due to the waveform distortion or weak signals. Some

68

amplitude-normalized cross-correlation (Neidell & Taner 1971) and semblance-based

69

stacks (Taner and Koehler, 1969) are widely used. These methods can remove the

70

disturbing influence of energetic features by some additional pre-processing or

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post-processing steps, such as normalization, but the waveform coherence may

72

deteriorate. Therefore, several instantaneous phase-based measurements are

73

introduced, which are amplitude-unbiased. The phase-weighted cross-correlations

74

(Schimmel, 1999) and phase-weighted stacks (Schimmel, 1997) are designed for

75

noise attenuation or signal extraction. They are weighted by the coherency of the

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instantaneous phase, which implicitly contains the waveform information through the

77

Hilbert Transform.

78 79

Normally, when the seismic waveform is resolved into the time-varying frequency

80

components, the time-frequency spectrum can reveal some underlying periodicities

81

and express more abundant characteristics of the seismic waveform. In practice, the

82

useful seismic signals concentrate on some limited frequency band, which is

83

meaningful for noise attenuation and signal extraction. The phase-only correlation

84

(POC) is a simple and robust technique to evaluate the similarity of two images. The

85

technique has been successfully applied to electronics and communication

86

engineering, such as in fingerprint matching (Ito et al., 2004) and subpixel image

87

registration (Takita et al., 2004). The technique has also been expanded into the

88

geophysical exploration field, where POC is used to identify similar waveforms, such

89

as the events among the aftershocks of an earthquake (Moriya, 2011, Zhang et al,

90

2015).

91 92

In this study, we apply the POC for automatic event detection within a single

93

three-component microseismic record. The process workflow is similar to the

94

well-known polarization filtering approach (Jurkevics, 1988), except for identifying

95

similar waveforms with POC based on the transformed time-frequency spectrum. The

96

method first splits the raw records into some contiguous segments, and then it detects

97

the segment containing the event by judging whether the P-wave phase exists. For the

98

improved judging process of the proposed method, the following key steps are

99

necessary: decompose the seismic waveform into the time-varying frequency

100

components with the S-transform, which can retain the absolute phase of each

101

frequency and offer a high resolution, calculate the similarity of the frequency content

102

in the time-frequency domain using the POC function, and identify the P-phase by the

103

combination analysis between any two components. The proposed algorithm, together

104

with the polarization filtering approach using the cross-correlation in the time domain,

105

is tested with synthetic microseismic datasets and real field-recorded datasets.

106 107

METHODOLOGY

108 109

S-Transform

110

The S-transform enables a better resolution of low frequency components and time

111

resolution of high frequency signals by employing frequency-dependent windows,

112

similar to the wavelet transform. Meanwhile, it retains the absolute phase of each

113

frequency (Pinnegar and Mansinha, 2003) for multiresolution analysis and detection

114

of events in time series.

115 116

In normal signal processing, we need to determine the frequency spectrum,  , of

117

the time series, , of any component of the raw records, by using the following

118

Fourier transform:

119

 =    . (1)



120 121

With the additional frequency dependence of the analyzing window, the S-transform

122

of the time series, , can be defined

123

,  =    − ,   ,  ≠ 0, (2)

124

,  = 0 = → !  , (3) 







!

125 126

where  − ,  is a Gaussian function, which maintains the center at time, τ, of

127

the selected Gaussian window and a standard deviation proportional to ## for the

128

localized spectrum.

129

 − ,  =



||

% √ 



'(! )'*! !+!

, , > 0, (4)

130 131

where k is the scaling factor, which controls the time-frequency resolution by the

132

number of oscillations in each Gaussian window.

133 134

Aimed to simplify the implementation by computers, equation (3) can also expressed

135

as a multiplication of spectrum:

136

,  =

  /

+

!1!

2!  +! (! 23

/,  ≠ 0, (5)

137 138

where / +  is the shifted spectrum of the Fourier transform. The Gaussian

139

function in the above integrand equation has a frequency-dependent bandwidth. More

140

specifically, the phase-shifted time signal, , is bandpassed at the center frequency

141

 with the deviation 4 =

%||



by the Gaussian window function.

142 143

The time-frequency representation of the S-transform is unique and invertible

144

(Schimmel and Gallart, 2005). The local time-frequency spectra, , , can be

145

transformed back to the time domain, since the Gaussian window for the S-transform

146

must satisfy the condition

147



  − ,   = 1, (6)

148 149

and the time series, u789 t, is easily reconstructed as:

150

;<=  =  ,   . (7)



151 152

Band-limited POC

153

Next, we considered the transformed time-frequency spectra ,  and  , 

154

of any two of the components of the raw records as two images, > , >  and

155

 > , > , respectively. Because the only similarity of the frequency content in the

156

time-frequency domain is needed, the two axes of time, , and frequency, , were

157

equal, familiar with the general 2-D pictures, and rewritten as > and > ,

158

respectively. Conveniently, the size of each of the images was defined as ? × ? ,

159

where the index ranges were > = −A , ⋯ , A and > = −A , ⋯ , A , and

160

therefore, ? = 2A + 1 and ? = 2A + 1 . Then, the 2-D discrete Fourier

161

transform of the images,  >, >  and  > , > , were described as the following

162

equations (Ito et al., 2004):

163 F

F

% G

% G!

= L , , ,  MNI %I ,%! , (8)

F

F

% G

% G!

= L , , ,  MN! %I ,%!  , (9)

164

D , , ,  = ∑GIIH FI ∑G!!H F!  >, >  JKII I JK!!

165

D ,, ,  = ∑GIIH FI ∑G!!H F!  > , >  JKII I JK!!

166 M

!1 OI

, and JK! =

M

!1 O!

167

where , = −A , ⋯ , A , , = −A , ⋯ , A , JKI =

168

L, , ,  and L , , ,  are the amplitude components of the two images,

.

169

respectively, and P ,, ,  and P , , ,  are the relative phase components.

170

Normally, the cross-spectrum, QR, , , , between D, , ,  and D ,, ,  can be

171

defined as:

172

RRR% ,%  S % ,% S QR,, ,  = |SI %I ,%! SRRR!%I ,%! | = MN%I ,%!  , (10) I

I

!

!

I

!

173 174

where DR , , ,  represents the complex conjugate of D, , , , and P, , ,  is

175

the difference of the phases P , , ,  and P , , ,  . The POC correlation

176

function is denoted as the 2-D inverse discrete Fourier transform of the

177

cross-spectrum, QR , , , , which can be expressed as

178

T̅ > , >  =



KI K!

F! %IGI % G I R ∑F JK! ! ! , (11) GI H FI ∑G! H F! Q ,, ,  JKI

179 180

where T̅ > , >  is the value of the POC function, which offers a range from 0 to 1.

181

The peak value of the function can indicate the similarity of the two images and the

182

position provides the translational displacement ∆> , ∆>  between the two images:

183

∆>, ∆>  = −> , −> . (12)

184 185

Additionally, the function gives a distinct sharp peak of value for two similar images,

186

and it decreases significantly when they are not similar, which demonstrates higher

187

discrimination capabilities than the traditional correlation. Meanwhile, as a phase

188

indication of two images, it works well against the images shifts and brightness

189

changes (Ito et al., 2004).

190

191

In practice, the significant information in the 2-D DFT of the given image is usually

192

clustered in a limited frequency band. Hence, some phase components in the higher or

193

lower frequency domain are meaningless or not reliable. The basic idea of the

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band-limited POC is to improve the matching performance by eliminating

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meaningless frequency components before the calculation of the cross-phase

196

spectrum, QR, , , . So, the band-limited POC function can be defined as

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T̅W XYZ > , >  = W



I W!

[! %I GI % G I R ∑[ JW! ! ! , (13) GI H [I ∑G! H [! Q , , ,  JWI

198 199

ehere k and k are the given inherent frequency bands with the ranges of

200

, = −\, ⋯ , \ and , = −\ , ⋯ , \ , and 0 ≤ \ ≤ A and 0 ≤ \ ≤ A . In

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the processing, the parameters \ and \ can be selected with an effective coverage

202

range of the meaningful phase components.

203 204

Combination analysis

205

Theoretically, the three-component seismogram can represent the motion in three

206

orthogonal directions of a ground detector, containing two in the horizontal plane and

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one in the vertical. The observed seismogram is often represented as the convolution

208

of the source function, the transmission response of subsurface media, or the receiver

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function. The source refers to a series of vibrations in the Earth due to an earthquake

210

or explosion. The subsurface media are assumed to be heterogeneous, where some

211

reflection and transmission takes place and make wave encounters discontinuous.

212

Some experiments (Morlet et al., 1982) have demonstrated that the above

213

phenomena of wave propagation can considered as some "scattering." The distortion

214

waveforms due to the scattering are frequency-dependent and thus isolated in certain

215

scales (Anant and Dowla, 1997). Therefore, the arrival waves are normally fairly

216

similar, with possible differences in the very high frequencies (very low scales)

217

(Anant and Dowla, 1997). Based on the frequency-dependent nature of the scattering,

218

the arrivals can be viewed in terms of the type of decomposition, and they are only

219

present in some scales, not consistently across all scales.

220 221

By definition, the P-phase is represented by the longitudinal or compressional motion,

222

while the S phase is represented by the transverse motion. The compressional body

223

wave is often linearly polarized. Therefore, it would be more accurate to detect P

224

arrivals based on the linear polarization and the frequency dependence. In our method,

225

the P-wave phase can be identified under the condition of simultaneous high

226

correlation values between any two components within the raw three-component

227

seismograms records.

228 229

EXAMPLES

230

As described above, the proposed workflow is much the same as the well-known

231

polarization filtering approach (Jurkevics, 1988), or other similar methods, except that

232

it identifies the similar waveforms using the POC based on the transformed

233

time-frequency spectrum, replacing the cross-correlation in the time domain or other

234

amplitude-based methods. As shown in Figure 1, the method first splits the raw

235

records into some contiguous segments, and then it detects the segment containing the

236

event by judging whether the P-wave phase exists. For improved judging processes,

237

the examples with similar and dissimilar waveforms were tested as the two

238

possibilities in each loop. The proposed algorithm-based band-limited POC and the

239

1-D cross-correlation in time domain of the raw records were compared mainly for

240

distinguishing capabilities between the similar and dissimilar waveforms. The

241

window length and the threshold were two important parameters in the proposed

242

method. In the proposed method, the lag of any two P-phase arrival times within the

243

three-component geophone was almost small. Meanwhile, the longer window may

244

contain the target data of the P-phase, together with other phases, such as the coda

245

wave, which may affect the accuracy of judgment. Therefore, in order to improve

246

the accuracy and robustness, the window length of the time series is recommended to

247

be between one-half and one waveform length. The window moves from left to right

248

with an overlapped length of window in each loop. For some batch processing, such

249

as real-time monitoring, the threshold can be obtained by pre-processing experiments,

250

which mainly depend on the performance of the hydraulic fracturing, and also by

251

measuring the background noise in the acquired environment.

252 253

(The position of Figure 1)

254 255

Synthetic microseismic datasets

256

A two-layer model was used for the synthetic microseismic datasets modeling. The

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P-wave velocity of the model was set to 1500, 3000 m/s, the S-wave velocities to

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1500, and 3000 m/s , and the density to 11, 2.5 kg/mh . Approximately 10-level

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three-component geophones were placed in the vertical observation well, which were

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spaced at intervals of 25 m within the array. The microseismic source was located

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atx, y, z = 500, 300, 4000, with a dominant frequency of 400 Hz. The data were

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recorded at 280 ms with a sampling rate of 4 samples per millisecond.

263 264

(The position of Figure 2)

265 266

The recorded three-component seismograms within an array are displayed in Figure

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2(a). In practice, the microseismic events within real field records were weak and had

268

superimposing noise from background noise, such as vibrations from machinery. To

269

better simulate real data acquisition, Gaussian noise (approximately 50% of the

270

maximum signal amplitude) was added to the synthetic records. Figure 2(b)

271

demonstrates that the noise affected the microseismic records, which would present a

272

challenge to detect the events reliably using some automatic processes. The window

273

length of any selected segments was set to 32 ms.

274 275

(The position of Figure 3-5)

276 277

The first example demonstrates the segment from the black box in Figure 2(b), which

278

contains the major events from 60 to 92 ms. Figure 3(b)-(d) demonstrates the

279

time-varying spectral representation of the components x, y, and z, respectively. The

280

transformed spectral representation captures the features of seismic phase arrivals,

281

especially the predominant frequency distribution. Then, the frequency contents from

282

300Hz to 600Hz were selected as the significant information for the following steps,

283

which means that both the very low and high frequency noise were the most excluded.

284

Figure 4(a)-(c) demonstrates the POC coefficients of the coupled components x-y, x-z,

285

and y-z, respectively. The high values were mostly distributed at the center of the

286

images, which had a high correlation value with a frequency lag of 0 and a time lag of

287

0. The peak of amplitude was very sharp, which makes it easy to detect with given

288

threshold. Then, we calculated the similarity using the cross-correlation function in

289

time domain with the same window length as the records. Figure 5 demonstrates the

290

POC coefficient (red curve) at the frequency lag 0 and the cross-correlation

291

coefficient in time domain (blue curve) corresponding to Figure 4(a)-(c). Both

292

methods can indicate the high correlation values at the time lag 0. However, the

293

cross-correlation coefficient in the time domain demonstrated a lower resolution

294

compared to the POC with the short window length of the selected time series because

295

the calculated similarity coefficient of the cross-correlation in the time domain would

296

be more accurate with sufficient data, meaning a longer window size.

297

(The position of Figure 6-8)

298 299

The second example demonstrates the segment from 0 to 32 ms, from the red box in

300

Figure 2(b), which mainly contains random noise without appreciable signals. Figure

301

6(b)-(d) are the time-varying spectral representation of the components x, y, and z,

302

respectively. Different from the previous example, the transformed spectral

303

representations have a large difference in the frequency distribution. Then, the same

304

parameters were set for the calculation of the POC. Figure 7(a)-(c) demonstrates the

305

POC coefficients of the coupled components x-y, x-z, and y-z. The highest

306

correlations were not at the center of the image with the frequency lag 0 and the time

307

lag 0, and the values were reduced considerably. The values of the dissimilar images

308

were relatively small compared the peak value of the similar images, which was easy

309

to distinguish. In the next comparison with the cross-correlation coefficient in the

310

time domain, both methods were stable and demonstrated small coefficient values,

311

indicating the dissimilar waveforms of the pair of segments. However, the normalized

312

cross-correlation coefficient in the time domain distributes in a relatively wider range.

313 314

Real field-recorded datasets

315

Figure 9(a) demonstrates the continuous microseismic records for approximately 3000

316

ms with a sampling rate of 4 samples per millisecond. The 4th level of records

317

demonstrated in Figure 9(b) was used to show an actual process based the proposed

318

method. And the window length was also set to 32 ms . A large-magnitude

319

microseismic event (the black arrow B) was noticeable, which could be easily

320

selected by certain correlation-based methods. However, some potential small

321

magnitude events in the background noise are difficult to detect correctly.

322

323

(The position of Figure 9-10)

324 325

As a result of above processing algorithm, three segments with potential events were

326

detected in Figure 10(a) with red traces and magnified to more detail in Figure

327

10(b)-(d), separately. The segment from 2240 to 2272 ms in Figure 10(c) contains the

328

large-magnitude microseismic event mentioned before. But, the other two segments

329

containing potential events from 1400 to 1432 ms in Figure 10(b) and from 2930 to

330

2962 ms in Figure 10(d) were very weak, which still needs investigation. The

331

following example demonstrated the segment from 2240 to 2272 ms in Figure 10(c)

332

in more detail. Figure 11(a)-(c) were the time-varying spectral representations of

333

components x, y, and z, respectively. Figure 12(a)-(c) demonstrates the POC

334

coefficients of the coupled component x-y, x-z, and y-z. Figure 13 demonstrates the

335

normalized cross-correlation coefficient in the time domain (blue curve) and the POC

336

function coefficient (red curve) at the frequency lag 0. The cross-correlation

337

coefficient had multiple blunt peaks, which were close to the max value of the POC

338

coefficient. However, it is difficult to indicate the relative difference of the arrival

339

times of the compared waveforms in the selected segments with the constant

340

threshold.

341 342

(The position of Figure 11-13)

343 344

DISCUSSIONS

345

This study introduced an effective method for the identification and detection of the

346

microseismic events by judging whether the P-wave phase exists in a local segment

347

from single three-component microseismic records. The improved judging process

348

contained the following key steps: first, the waveform time series was correctly

349

transformed into time-varying spectral representations using the S-transform. Next,

350

the similarity of the frequency content in the time-frequency domain was calculated

351

using the POC function, and the P-phase was identified by the combination analysis

352

between any two components. The proposed algorithm was compared to similar

353

approaches using the cross-correlation in time domain between any two components,

354

and it was capable of distinguishing between the similar and dissimilar waveforms.

355 356

The proposed workflow is similar to the well-known polarization filtering approach,

357

except that it identifies the similar waveforms using the POC based on the

358

transformed time-frequency spectrum, replacing the cross-correlation in the time

359

domain, or other amplitude-based methods. For the proposed workflow, the lag of any

360

two P-phase arrival times within the three-component geophone is almost small.

361

Meanwhile, the longer window may contain the target data of the P-phase, which,

362

together with other phases, such as coda wave, may affect the accuracy of judgment.

363

So, the window length of the time series is recommended to be between one-half and

364

one waveform length for improved accuracy and robustness. However, the calculated

365

similarity coefficient by the cross-correlation coefficient in the time domain would be

366

more accurate with sufficient data, meaning a longer window size. Therefore, the

367

short window size or short data may result in lower resolution coefficients with the

368

cross-correlation in the time domain, where it is difficult to indicate the relative lag of

369

the arrival times of the compared waveforms in the selected segments. Therefore, the

370

POC-based workflow with high resolution lag cross-correlation coefficient is

371

a great choice for the proposed workflow, which is meaningful for accurate

372

identification and detection of the microseismic events. In addition, distinguishing

373

between the similar and dissimilar waveforms with high resolution was easily

374

achieved with some constant thresholds, which is ideal for automating a process.

375 376

However, processing with POC has a low probability of providing false indications,

377

mainly because the calculated coefficient in the time-frequency domain is sensitive

378

for some unreasonable frequency content. In consideration of the computation

379

efficiency and stability, it is suggested that the practical process should recombine and

380

combine the bright side of the traditional correlation-type and energy analysis

381

methods and the POC method, especially for rapid field analysis and hydro-fracture

382

monitoring.

383 384

CONCLUSIONS

385

This work presents an effective method for the detection of the microseismic events

386

by judging if the P-wave phase exists in a local segment using the POC function. The

387

results of the synthetic data and the real hydraulic-fracture case show that the

388

proposed method is sufficiently stable to distinguish the similar and dissimilar

389

waveforms, even for low SNR, which means that it can reliably handle the two

390

possibilities during the judging algorithm. It is important to identify and detect the

391

microseismic events within a large number of records accurately and rapidly, and this

392

method can be applied to other geophysical analyses based on the waveform data.

393 394

ACKNOWLEDGMENTS

395

This research was funded by the National Natural Science Foundation of China (Grant

396

no. 41230317) and the National Basic Research Program of China (Grant no.

397

2015CB258500).

398

399

REFERENCES

400

Anant K S, Dowla F U. Wavelet Transform Methods for Phase Identification in

401

Three-Component Seismograms [J]. Bulletin of the Seismological Society of America,

402

1997, 87(6):1598-1612.

403 404

Earle P S, Shearer P M. Characterization of global seismograms using an

405

automatic-picking algorithm [J]. Bulletin of the Seismological Society of America,

406

1994, 84(2): 366-376.

407 408

Gibbons S J, Ringdal F. The detection of low magnitude seismic events using

409

array-based waveform correlation [J]. Geophysical Journal International, 2006, 165(1):

410

149-166.

411 412

Ito K, Nakajima H, Kobayashi K, et al. A Fingerprint Matching Algorithm Using

413

Phase-Only Correlation [J]. Ieice Transactions, 2004: 682-691.

414 415

Jurkevics A. POLARIZATION ANALYSIS OF THREE-COMPONENT ARRAY

416

DATA[J]. Bulletin of the Seismological Society of America, 1988, 78(5): 1725-1743

417 418

Maxwell S C, Urbancic T I. The role of passive microseismic monitoring in the

419

instrumented oil field [J]. Geophysics, 2012, 20(6): 636-639.

420

Morlet J, Arens G, Fourgeau E, et al. Wave propagation and sampling theory—Part I:

421

Complex signal and scattering in multilayered media [J]. Geophysics, 2012, 47,

422

203-221.

423 424

Moriya H. Phase-only correlation of time-varying spectral representations of

425

microseismic data for identification of similar seismic events [J]. Geophysics, 2011,

426

76(6).

427 428

Neidell N S, Taner M T. Semblance and other coherency measures for multichannel

429

data [J]. Geophysics, 1971, 36(3): 482-497.

430 431

Pinnegar C R, Mansinha L. The S-transform with windows of arbitrary and varying

432

shape [J]. Geophysics, 2003, 68(1):381.

433 434

Schimmel M, Gallart J. The inverse S-transform in filters with time-frequency

435

localization [J]. IEEE Transactions on Signal Processing, 2005, 53(11): 4417-4422.

436 437

Song F, Kuleli H S, Toksoz M N, et al. An improved method for

438

hydrofracture-induced microseismic event detection and phase picking [J].

439

Geophysics, 2010, 75, A47–A52.

440 441

Stockwell R G, Mansinha L, Lowe R P, et al. Localization of the complex spectrum:

442

the S transform [J]. IEEE Transactions on Signal Processing, 1996, 44(4): 998-1001.

443 444

Takita K, Aoki T, Sasaki Y, et al. High-accuracy subpixel image registration based on

445

phase-only correlation [J]. Ieice Transactions, 2003: 1925-1934.

446 447

Zhang L, Wang Y, Chang X, et al. Wigner distribution based phase-only correlation[J].

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Journal of Applied Geophysics, 2015: 277-282.

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Figure 1. The workflow of the proposed algorithm of identification and detection of

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the microseismic events

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(a)

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(b)

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Figure 2. (a) Synthetic microseismograms produced by 3D elastic wave equation

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modeling. Every triplet of x (red), y (blue), and z (green) components is plotted for

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the 3-component seismograms of each geophone. (b) Gaussian noise was added with

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a given SNR of approximately 3. The segments in the red and black boxes are used

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for the following tests of identification capability.

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(a)

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(b)

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(c)

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(d)

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Figure 3. (a) The selected segment contains the major events with three components

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from the black box in Figure 2(b); (b)-(d) time-varying spectral representation of

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components x, y, and z, respectively.

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(a)

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(b)

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(c)

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Figure 4. (a) - (c) The POC function of the couple components x-y, x-z, and y-z,

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respectively. The sharp peaks of amplitude are significant, which are easy to be

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detected with some given threshold.

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Figure 5. The comparison of the POC function coefficient (red curve) at the frequency

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lag 0 and the normalized cross-correlation coefficient in time domain (blue curve)

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corresponding to Figure 4(a)-(c). Both methods can indicate the max correlation

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coefficients at the same point. However, the cross-correlation coefficient in the time

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domain is less resolved.

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(a)

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(b)

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(c)

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(d)

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Figure 6. (a) The selected segment contains the major events with three components,

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from the red box in Figure 2(b); (b)-(d) time-varying spectral representation of

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components x, y, and z, respectively.

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(a)

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(b)

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(c)

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Figure 7. (a) - (c) The phase-only correlation function of the couple components x-y,

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x-z, and y-z, respectively. The high values show a scattered distribution, which is

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treated as a weak correlation.

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Figure 8. The comparison of the phase-only correlation function coefficient (red curve)

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at the frequency lag 0 and the normalized cross-correlation coefficient in the time

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domain (blue curve) corresponding to the Figure 7(a)-(c). Both methods show stable

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results with small values in a tight distribution.

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(a)

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(b)

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Figure 9. (a) The 7-level seismograms of the downhole geophone array with some

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triplets of x (red), y (blue), and z (green) components. (b) The 4th level of the records

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in Figure 9 is selected for the following testing. The red box demonstrates a split

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segment, which moves from left to right with an overlapped half length.

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A

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(a)

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(b)

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(c)

B

C

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(d)

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Figure 10. (a) Three detected segments with potential events extracted in Figure 10(a)

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with red traces; (b)-(d) the extracted and magnified traces in more details. The

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segments containing the large-magnitude microseismic event (arrow B) and some

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potential weak events (arrow A and C) are detected, though they will be identified by

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some additional information.

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(a)

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(b)

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(c)

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Figure 11. The analysis of the selected segment from 2240 to 2272 ms from the 4th

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level in Figure 10 (b); (a)-(c) time-varying spectral representation of components x, y,

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and z, respectively.

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(a)

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(b)

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(c)

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Figure 12. (a) - (c) The phase-only correlation function of the couple components x-y,

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x-z, and y-z, respectively, which indicate the maximum correlation coefficients with

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the relative peak values.

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Figure 13. The comparison of the phase-only correlation function coefficient (red

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curve) at the frequency lag 0 and the normalized cross-correlation coefficient in the

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time domain (blue curve) corresponding to Figure 11(a)-(c). The cross-correlation

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coefficient in the time domain has multiple blunt peaks, which make it difficult to

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indicate the relative difference of the arrival times of the compared waveforms in the

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selected segments.