Seismic velocity spectrum automatic pickup method and device based on unsupervised learning

An unsupervised learning and automatic picking technology, applied in the field of oil and gas exploration, can solve problems such as the inability to accurately set the number of cluster centers and the inability to accurately set the number of cluster centers with spatial changes, and achieve reliable automatic picking results of the velocity spectrum Effect

Pending Publication Date: 2021-03-09
BC P INC CHINA NAT PETROLEUM CORP +1
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Problems solved by technology

[0006] The embodiment of the present invention provides an automatic picking method of seismic velocity spectrum based on unsupervised learning, which is used to solve the problem that the existing automatic picking method of seismic velocity spectrum based on unsupervised learning cannot accurately set the clustering center that changes with space Quantitative technical problems, the method includes: collecting and obtaining the seismic stacking velocity spectrum; according to the maximum reference stacking velocity and the minimum reference stacking velocity of the preset speed scanning corridor, cutting the collected seismic stacking velocity spectrum; The seismic stacking velocity spectrum is normalized and threshold value filtered to obtain the scattered seismic stacking velocity spectrum; along the time direction, sample points one by one, and perform the following steps to automatically stack the velocity spectrum of the scattered seismic stacking velocity spectrum. Picking: Construct the first sub-time-space window and the second sub-time-space window with an overlapping relationship within the main time-space window of each time sampling point; use the weighted K-mean algorithm, respectively Cluster the data in the time-space window to obtain the cluster centers of the first sub-time-space window and the second sub-time-space window; determine the main time-space according to the cluster centers of the first sub-time-space window and the second sub-time-space window window cluster center
[0007] The embodiment of the present invention also provides an automatic seismic velocity spectrum picking device based on unsupervised learning, which is used to solve the problem that the existing automatic picking method of seismic velocity spectrum based on unsupervised learning cannot accurately set the clustering with spatial changes The technical problem of the number of centers, the device includes: a stacking velocity spectrum acquisition module, used to acquire the seismic stacking velocity spectrum; a data removal processing module, used to scan the corridor's maximum reference stacking velocity and minimum reference stacking velocity according to the preset speed, f

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  • Seismic velocity spectrum automatic pickup method and device based on unsupervised learning
  • Seismic velocity spectrum automatic pickup method and device based on unsupervised learning
  • Seismic velocity spectrum automatic pickup method and device based on unsupervised learning

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[0024] In order to make the purpose, technical solutions and advantages of the embodiments of the present invention more clear, the embodiments of the present invention will be further described in detail below in conjunction with the accompanying drawings. Here, the exemplary embodiments and descriptions of the present invention are used to explain the present invention, but not to limit the present invention.

[0025] The embodiment of the present invention provides an automatic picking method of seismic velocity spectrum based on unsupervised learning, which is not only suitable for automatic picking of stacked velocity spectrum of CMP gathers of seismic data before The automatic picking of RMS velocity spectrum of CRP gathers of post-shifted seismic data has a good application prospect.

[0026] figure 1 It is a flowchart of a method for automatically picking up seismic velocity spectrum based on unsupervised learning provided in the embodiment of the present invention, s...

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Abstract

The invention discloses a seismic velocity spectrum automatic pickup method and device based on unsupervised learning. The method comprises the steps: acquiring a seismic stacking velocity spectrum; scanning the maximum reference stacking speed and the minimum reference stacking speed of the corridor according to a preset speed, and cutting off the acquired seismic stacking speed spectrum; carrying out normalization and threshold filtering processing on the seismic stacking velocity spectrum after removal processing to obtain a seismic stacking velocity spectrum after scatter processing; in the time direction, at each time sampling points, executing the following steps to carry out stacking velocity automatic pickup on the scattered seismic stacking velocity spectrum: constructing two subspace-time windows with an overlapping relationship in a main space-time window of each time sampling point; respectively clustering the data in the two sub space-time windows by adopting a weighted K-mean algorithm; and determining the clustering center of the main space-time window according to the clustering centers of the two sub space-time windows in the main space-time window. The method anddevice can determine the center of the velocity spectrum energy group in a self-adaptive manner.

Description

technical field [0001] The invention relates to the technical field of oil and gas exploration, in particular to a method and device for automatically picking up seismic velocity spectrum based on unsupervised learning. Background technique [0002] This section is intended to provide a background or context to embodiments of the invention that are recited in the claims. The descriptions herein are not admitted to be prior art by inclusion in this section. [0003] As we all know, seismic velocity spectrum picking is a very important link in seismic data processing, and the picking results directly affect the quality of seismic imaging. The artificial picking method of seismic velocity spectrum, on the one hand, is affected by the level of processors or human subjectivity, and on the other hand, it is increasingly unable to meet the requirements of users for massive data and high-density velocity spectrum picking and processing cycles. In recent years, it has gradually been...

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Application Information

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IPC IPC(8): G06K9/00G06K9/62G01V1/30G01V1/36
CPCG01V1/303G01V1/364G06F2218/04G06F2218/12G06F18/23213
Inventor 柯本喜耿伟峰杨平杨志昱边策
Owner BC P INC CHINA NAT PETROLEUM CORP
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