Oil reservoir geologic modeling static parameter distribution prediction method based on neighbor neural network

A neural network model and neural network technology, applied in the field of reservoir geological modeling space interpolation, can solve the problems of large uncertainty and low interpolation precision, and achieve the effect of quantifying uncertainty and improving precision

Active Publication Date: 2021-02-23
CHINA UNIV OF PETROLEUM (EAST CHINA) +1
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Problems solved by technology

[0007] Therefore, in view of the problems of low spatial interpolation accuracy and large uncertainty in traditional reservoir geological modeling, it is urgent to propose a method that is suitable for low-dimensional features and small data samples, and can deeply mine the complex nonlinear spatial dependencies of static parameters. Static Parameter Distribution Prediction Method for Quantifying Geostatistical Spatial Interpolation Uncertainty

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  • Oil reservoir geologic modeling static parameter distribution prediction method based on neighbor neural network
  • Oil reservoir geologic modeling static parameter distribution prediction method based on neighbor neural network
  • Oil reservoir geologic modeling static parameter distribution prediction method based on neighbor neural network

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[0039] The present invention will be described in further detail below.

[0040] The present invention firstly selects the oil reservoir area to be predicted, then retrieves the known spatial coordinates and corresponding static parameter values ​​of all wells within the geological prediction range of the oil reservoir, and assumes that there are wells in the middle and late stages of development within the range N wells, and then use the nearest neighbor algorithm to find m adjacent wells for each well. Then a random layer ò is added before any layer after the input layer of the existing neural network to obtain a neural network model. The known spatial coordinates of the i-th well, the known spatial coordinates of the m adjacent wells corresponding to the i-th well, and the known static parameters of the m adjacent wells corresponding to the i-th well are used as the i-th sample, i= 1, 2, 3...N, all samples constitute a data set; 90% of the samples in the data set are rando...

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Abstract

The invention relates to an oil reservoir geologic modeling static parameter distribution prediction method based on a neighbor neural network, and the method comprises the following steps: S100, selecting an oil reservoir geologic prediction range, and calling the known space coordinates and corresponding static parameter values of all wells in the oil reservoir geologic prediction range; s200, finding an adjacent well of each well by adopting a neighbor algorithm; s300, establishing a neural network model and training the neural network model; and S400, predicting static parameter distribution of unknown space points in the selected oil reservoir geological prediction range by utilizing the optimal neural network model obtained by training. The method makes full use of the excellent ability of a neural network to approach a complex nonlinear function, can deeply excavate the nonlinear distribution relationship of static parameters in space, accords with the complex characteristics ofoil reservoir geology, can improve the precision of spatial interpolation, can also quantify the uncertainty of spatial interpolation through multiple random implementation, and the static parameterdistribution prediction precision is improved.

Description

technical field [0001] The invention relates to the technical field of spatial interpolation of reservoir geological modeling, in particular to a method for predicting distribution of static parameters of reservoir geological modeling based on a neighbor neural network. Background technique [0002] Reservoir geological modeling is a necessary link in the understanding and development of underground reservoirs, and it is a high-level summary of the spatial distribution of reservoir size, reservoir parameters, and static parameters such as porosity and permeability. Reservoir geological modeling makes full use of data such as drilling data and logging interpretation, and focuses on the study of the correlation of various geological variables in space to accurately describe the properties of reservoirs or predict the spatial distribution of static parameters. And provide the basis for development plan formulation. Understanding the spatial distribution of reservoir static par...

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Application Information

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IPC IPC(8): G06Q10/04G06Q50/02G06N3/04
CPCG06Q10/04G06Q50/02G06N3/045
Inventor 王宇赫毛强强王九龙孙鑫杨潇余梦琪刘帅辰
Owner CHINA UNIV OF PETROLEUM (EAST CHINA)
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