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APPLIED GEOPHYSICS  2019, Vol. 16 Issue (4): 415-429    DOI: 10.1007/s11770-019-0782-1
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Ultrasonic attenuation estimation based on time-frequency analysis*
Gao Feng, Wei Jian-Xin, and Di Bang-Rang
1. Key Laboratory of Seismic Observation and Geophysical Imaging, Institute of Geophysics, CEA, Beijing 100081, China.
2. State Key Laboratory of Petroleum Resources and Prospecting, CUPB, Beijing 102249, China.
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Abstract The quality factor (or Q value) is an important parameter for characterizing the inelastic properties of rock. Achieving a Q value estimation with high accuracy and stability is still challenging. In this study, a new method for estimating ultrasonic attenuation using a spectral ratio based on an S transform (SR-ST) is presented to improve the stability and accuracy of Q estimation. The variable window of ST is used to solve the time window problem. We add two window factors to the Gaussian window function in the ST. The window factors can adjust the scale of the Gaussian window function to the ultrasonic signal, which reduces the calculation error attributed to the conventional Gaussian window function. Meanwhile, the frequency bandwidth selection rules for the linear regression of the amplitude ratio are given to further improve stability and accuracy. First, the feasibility and influencing factors of the SR-ST method are studied through numerical testing and standard sample experiments. Second, artifi cial samples with different Q values are used to study the adaptability and stability of the SR-ST method. Finally, a further comparison between the new method and the conventional spectral ratio method (SR) is conducted using rock fi eld samples, again addressing stability and accuracy. The experimental results show that this method will yield an error of approximately 36% using the conventional Gaussian window function. This problem can be solved by adding the time window factors to the Gaussian window function. The frequency bandwidth selection rules and mean slope value of the amplitude ratio used in the SR-ST method can ensure that the maximum error of different Q values estimation (Q > 15) is less than 10%.
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Key wordsQ value estimation   Time-frequency spectrum   ST   Window factor   Ultrasonic attenuation     
Received: 2019-06-22;
Fund:

The work is supported by the Special Fund of the Institute of Geophysics, China Earthquake Administration (Nos.DQJB19B02 and DQJB17T04).

Corresponding Authors: Gao Feng (gaofengcup@126.com).   
 E-mail: gaofengcup@126.com
About author: Gao Feng received his MS in exploration geophysics from China University of Mining & Technology- Beijing (2014). He received his Ph.D. in the College of Geophysics and Information Engineering, China University of Petroleum-Beijing (2018). Currently he is studying in Key Laboratory of Seismic Observation and Geophysical Imaging, Institute of Geophysics, China Earthquake Administration. His main research interests are seismic attenuation, rock physics and physical modelling. Email: gaofengcup@126.com
Cite this article:   
. Ultrasonic attenuation estimation based on time-frequency analysis*[J]. APPLIED GEOPHYSICS, 2019, 16(4): 415-429.
 
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[2] CAI Han-Peng, HE Zhen-Hua, HUANG De-Ji. Seismic data denoising based on mixed time-frequency methods[J]. APPLIED GEOPHYSICS, 2011, 8(4): 319-327.
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