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基于CNN-BiLSTM模型的致密砂岩储层孔隙度预测方法

李黎 董政 侯凯 吴成 彭己君

物探与化探2026,Vol.50Issue(2):319-329,11.
物探与化探2026,Vol.50Issue(2):319-329,11.DOI:10.11720/wtyht.2026.1344

基于CNN-BiLSTM模型的致密砂岩储层孔隙度预测方法

A CNN-BiLSTM model-based porosity prediction method for tight sandstone reservoirs

李黎 1董政 1侯凯 1吴成 1彭己君1

作者信息

  • 1. 中海石油(中国)有限公司 深圳分公司,广东 深圳 518000
  • 折叠

摘要

Abstract

Porosity is a critical parameter for characterizing reservoir physical properties.The accuracy of porosity prediction holds sig-nificant implications for hydrocarbon exploration and production,as well as the geological modeling and fine-scale evaluation of hydro-carbon reservoirs.Considering the characteristics of tight sandstone reservoirs,such as low porosity,low permeability,and strong hetero-geneity,this study proposed a reservoir porosity prediction model that integrates the convolutional neural network(CNN)and bidirec-tional long short-term memory(BiLSTM).The CNN-BiLSTM model is used to extract features from log data and establish complex non-linear correlations between these features and porosity parameters.First,using petrophysical models,sensitive elastic parameters,which are significantly correlated with porosity,are selected as input parameters.Second,the spatially dependent features are extracted from the inversion data using the CNN.Third,the temporal dependencies throughout the data sequence are captured by BiLSTM.These processes contribute to effective porosity prediction.The test results of three wells in oilfield A,Kaiping sag,demonstrate that compared to conven-tional deep learning methods,the CNN-BiLSTM model achieved higher accuracy and lateral resolution in porosity prediction,verifying its effectiveness.Furthermore,the CNN-BiLSTM model was applied for the 3D reservoir porosity prediction by calculating the porosity data volume from elastic parameter volumes obtained through reservoir inversion.Overall,this study provides a novel approach for pre-dicting reservoir porosity in the sparse well area of oilfield A,offshore Kaiping sag.

关键词

开平凹陷/CNN-BiLSTM模型/深度学习/孔隙度预测/致密砂岩

Key words

Kaiping sag/CNN-BiLSTM model/deep learning/porosity prediction/tight sandstone

分类

天文与地球科学

引用本文复制引用

李黎,董政,侯凯,吴成,彭己君..基于CNN-BiLSTM模型的致密砂岩储层孔隙度预测方法[J].物探与化探,2026,50(2):319-329,11.

基金项目

中国海洋石油集团有限公司重大科技专项"南海东部油田上产2000万吨关键技术研究"(CNOOC-KJ135-ZDXM37-SZ) (CNOOC-KJ135-ZDXM37-SZ)

物探与化探

1000-8918

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