Standard well screening visual analysis method based on discrete selection model

A technology of discrete selection and analysis method, which is applied in the field of visual analysis of standard well screening, can solve the problems that the multi-attribute correlation of well logging spatial distribution cannot be considered, it is difficult to improve the efficiency and accuracy of standard well selection, and the screening process is complicated, etc., to meet the requirements of Real-time application requirements, simple and easy parameter adjustment process, and the effect of improving analysis efficiency

Inactive Publication Date: 2019-11-26
ZHEJIANG UNIV OF FINANCE & ECONOMICS
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Problems solved by technology

However, the screening of standard wells relies on the prior knowledge of experts, especially the traditional standard well selection process relies heavily on manual marking. The screening process is not only complicated and time-consuming, but also often fails to consider the spatial distribution of well logs and the correlation of multiple attributes. This brings great uncertainty to subsequent geological structure interpretation, making it difficult to improve the efficiency and accuracy of standard well selection

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  • Standard well screening visual analysis method based on discrete selection model
  • Standard well screening visual analysis method based on discrete selection model
  • Standard well screening visual analysis method based on discrete selection model

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Embodiment Construction

[0032] The method for visual analysis of standard wells based on the discrete choice model of the present invention will be further described below in conjunction with the accompanying drawings.

[0033] Such as figure 1 It is a flowchart of a visual analysis method for standard well screening based on a discrete choice model of the present invention, the method is specifically:

[0034] (1) Based on the multi-dimensional logging data, extract the spatial distribution characteristics of the logging and the stratigraphic correlation of the multi-dimensional logging attributes: on the premise of determining the screening ratio of the standard well, use the adaptive blue noise sampling algorithm to obtain the well that satisfies the local spatial distribution Poisson disk: Based on the actual complex geological conditions, a multi-scale formation matching model based on dynamic programming algorithm is designed to quantify and measure the similarity of logging attributes from the...

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Abstract

The invention discloses a standard well screening visual analysis method based on a discrete selection model. The method comprises the steps that an adaptive blue noise sampling model is used for keeping overall spatial distribution of standard wells; a multi-scale stratum matching model based on a dynamic programming algorithm is designed, and the similarity degree of well logging is measured from the perspectives of different attributes; prior knowledge of expert users is integrated, a standard well screening method is designed based on a discrete selection model, and effectiveness betweenattribute similarity and a standard well is maximized; an iterative interactive standard well screening method is designed, a user is supported to change the standard well according to priori knowledge, a discrete selection model is updated iteratively, and the standard well screening process and result are optimized. On the basis of comprehensively considering logging space distribution and multi-dimensional attribute information, visual analysis driven supervised standard well screening is achieved, the obtained standard well can represent surrounding logging to the maximum extent, and improvement of subsequent stratum intelligent matching precision and efficiency is facilitated.

Description

technical field [0001] The invention relates to a visual analysis method for standard well screening based on a discrete selection model, and belongs to the technical fields of petroleum exploration, graphics and visualization. Background technique [0002] Three-dimensional seismic wave data and one-dimensional well logging data are two common data types in the field of geological structure interpretation, and a large number of research works have been carried out on geological structure interpretation around the above two data types. Seismic wave data is obtained after recording underground waveform signals with the help of proprietary equipment and performing a series of preprocessing on them, and helps users realize geological structure interpretation through time slice, volume extraction, and other analysis methods. For example, scholars such as Patel designed a seismic wave data analysis method based on two-dimensional slices (Patel D, Giertsen C, Thurmond J, et al. Th...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F16/26G06F16/29G06Q50/02
CPCG06Q50/02G06F16/26G06F16/29
Inventor 周志光石晨胡淼鑫冯馨瑶刘玉华黄朝耿
Owner ZHEJIANG UNIV OF FINANCE & ECONOMICS
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