Frequency domain self-adaptive non-linear earthquake imaging filtering method

An adaptive, frequency-domain technology, applied in seismology, seismic signal processing, geophysical measurement, etc., can solve problems such as poor effect and failure to consider the actual frequency domain information of seismic data, so as to maintain effective signals and maintain detailed features Effect

Inactive Publication Date: 2017-05-31
SOUTHWEST PETROLEUM UNIV
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Problems solved by technology

The disadvantage of this method is that in the case of complex formations, when the noise is large, the processing effect on high-frequency noise signals is often not good for low-frequency component noise.
The disadvantage of this method is that the seismic image processing in the scale domain does not consider the actual frequency domain information of the seismic data, and the PM diffusion equation is directly used. The small texture changes caused by the detailed geological conditions are likely to cause the boundary of the geological structure obtained after processing to differ from A sick image of real error

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  • Frequency domain self-adaptive non-linear earthquake imaging filtering method
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  • Frequency domain self-adaptive non-linear earthquake imaging filtering method

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[0041] The frequency domain adaptive nonlinear seismic imaging filtering method of the present invention comprises the following steps:

[0042] Step 1: Input seismic data, perform frequency-amplitude spectrum calculation and analysis, and determine the distribution frequency range of effective signal and noise of seismic data;

[0043] Step 2: Use the wavelet base to decompose the scale components of the original seismic data by wavelet transform to obtain different scale components of the seismic data. The main adjustment parameter in this step is the scale factor, and the number of scales to be decomposed is selected according to the spectral characteristics of the seismic data obtained in step 1 in each frequency band.

[0044] Step 3: According to the corresponding relationship between scale and frequency, the frequency domain transformation of seismic data is carried out. The relationship between scale and frequency of wavelet transform is:

[0045] f a,b =(f 0 / a)×T ...

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Abstract

A frequency domain self-adaptive non-linear earthquake imaging filtering method comprises the steps as follows: firstly, earthquake data are input for calculation and analysis of frequency amplitude spectrum, original earthquake data are subjected to wavelet transformation scale component decomposition with a wavelet basis, components of the earthquake data on different scales are obtained, frequency domain transformation of the earthquake data is performed according to the corresponding relation between the scales and the frequency, single-frequency component earthquake data are extracted from the frequency domain earthquake data subjected to wavelet transformation, the single-frequency component earthquake data in which noise are mainly distributed are subjected to edge function solution of an improved self-adaptive non-linear diffusion equation, finally, all frequency component data can meet the requirement of the maximum signal-to-noise ratio, signal-to-noise ratio quality monitoring is performed on the iterative process of repeated self-adaptive non-linear diffusion filtering, so that the optimal iteration times of filtering is determined, all frequency component earthquake data after repeated iteration filtering are subjected to wavelet reconstruction synthesis, and the final earthquake data after imaging filtering are obtained.

Description

technical field [0001] The invention belongs to the technical field of seismic data processing, and in particular relates to a frequency domain self-adaptive nonlinear seismic imaging filtering method. Background technique [0002] In the process of seismic imaging, faults, cracks, pinch-outs, geological anomalies, etc. will cause changes in the details of seismic image edges, textures, etc. At the same time, due to imaging reasons in the process of seismic wave acquisition and processing, these anomalies will inevitably carry strong noise . The difficulty in dealing with such anomalies lies in maintaining the authenticity of seismic image details and effectively removing noise. [0003] At present, wavelet transform or anisotropic diffusion filtering are mainly used alone. The wavelet threshold method is fast in calculation but difficult to select the threshold; the image denoising effect obtained by the anisotropic diffusion method is good, but it is easy to cause the ima...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01V1/28
CPCG01V1/28G01V2210/324
Inventor 杨巍廖俊朱仕军郑鸿献
Owner SOUTHWEST PETROLEUM UNIV
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