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地质力学参数智能预测技术进展与发展方向

马天寿 张东洋 陆灯云 谢祥锋 刘阳

石油科学通报2024,Vol.9Issue(3):365-382,18.
石油科学通报2024,Vol.9Issue(3):365-382,18.DOI:10.3969/j.issn.2096-1693.2024.03.027

地质力学参数智能预测技术进展与发展方向

Progress and development direction of intelligent prediction technology of geomechanical parameters

马天寿 1张东洋 1陆灯云 2谢祥锋 2刘阳3

作者信息

  • 1. 西南石油大学油气藏地质及开发工程全国重点实验室,成都 610500
  • 2. 中国石油川庆钻探工程有限公司,成都 610501
  • 3. 西南石油大学石油天然气装备教育部重点实验室,成都 610500
  • 折叠

摘要

Abstract

The progressive application of artificial intelligence technology within oil and gas exploration has resulted in an inevitable shift towards the transformation of geomechanical parameter prediction from a traditional to an intelligent approach.This paper presents a comprehensive review and critical analysis of machine learning algorithms in the direct and indirect pre-diction of rock mechanics parameters,pre-drilling prediction,monitoring while drilling and post-drilling evaluation of formation pore pressure,1D in-situ stresses and 3D in-situ stresses field prediction.Furthermore,the paper compared machine learning models,input parameters,sample data volume,output parameters,and model prediction performance under different tasks.It has been demonstrated that machine learning algorithms exhibit superior performance in terms of accuracy,timeliness,and applicability in geomechanical parameter prediction compared to laboratory tests,field tests,and empirical model calculations.The current research emphasis is on hybrid models,deep learning models,and physical-constrained neural network models,which have been validated as highly accurate,robust,capable of generalization,and easily interpretable.However,the existing research primarily concerns the prediction of 1D geomechanical parameters post-drilling.Consequently,it is not possible to effectively predict 3D geomechanical parameters prior to drilling or during the drilling process.In order to facilitate the digital and intelligent transformation of geomechanical parameters,an intelligent prediction framework for geomechanical parameters is proposed in this paper.This framework considers the influence of multi-source data,including seismic,logging,and mud log data on the prediction of geomechanical parameters.The machine learning model,which is driven by data and physics,enables the prediction of 3D geomechanical parameters.This model is updated in real-time through the most recent drilling data,thus allowing for the pre-drilling prediction,monitoring while drilling and post-drilling evaluation of regional 3D geomechanical parameters.In addition,the key technical problems facing the intelligent prediction of geomechanical parameters are identified:(1)The transformation of unstructured data types should be minimized,the complexity of the data set should be reduced,and the consistency and comparability of the data should be ensured.(2)Multi-source data fusion should be conducted,and multi-source data sets,including seismic,logging,mud log,laboratory tests,and field test data,should be constructed.Subsequently,data processing and feature selection should be performed.(3)Machine learning models should be enhanced to improve performance,integrated models should be adopted to improve prediction accuracy,and mechanism models and domain knowledge should be integrated to enhance model robustness and explainability.

关键词

地质力学/智能预测/机器学习/岩石力学/地层压力/地应力

Key words

geomechanics/intelligent prediction/machine learning/rock mechanics/formation pressure/in-situ stress

分类

天文与地球科学

引用本文复制引用

马天寿,张东洋,陆灯云,谢祥锋,刘阳..地质力学参数智能预测技术进展与发展方向[J].石油科学通报,2024,9(3):365-382,18.

基金项目

四川省杰出青年科技人才项目(2020JDJQ0055)、四川省自然科学基金重点项目(2024NSFC0023)联合资助 (2020JDJQ0055)

石油科学通报

OACSTPCD

2096-1693

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