油气藏评价与开发 ›› 2023, Vol. 13 ›› Issue (5): 600-607.doi: 10.13809/j.cnki.cn32-1825/te.2023.05.007

• 致密气 • 上一篇    下一篇

机器深度学习技术在致密砂岩储层预测中的应用——以川西坳陷新场须家河组为例

钱玉贵()   

  1. 中国石化西南油气分公司勘探开发研究院,四川 成都 610041
  • 收稿日期:2023-05-24 出版日期:2023-10-26 发布日期:2023-11-01
  • 作者简介:钱玉贵(1979—),男,硕士,高级工程师,主要从事地震解释及反演工作。地址:四川省成都市高新区吉泰路688号中国石化西南科研基地西南油气分公司勘探开发研究院,邮政编码:610041。E-mail: 123266631@qq.com
  • 基金资助:
    中国石化科技部科技攻关项目“川西须二气藏裂缝欠发育区储层综合评价”(P21040-4)

Application of machine deep learning technology in tight sandstones reservoir prediction: A case study of Xujiahe Formation in Xinchang, western Sichuan Depression

QIAN Yugui()   

  1. Research Institute of Exploration and Development, Sinopec Southwest China Oil & Gas Company, Chengdu, Sichuan 610041, China
  • Received:2023-05-24 Online:2023-10-26 Published:2023-11-01

摘要:

川西坳陷新场须家河组二段致密砂岩储层具有非均质性强、储层薄等特点。前期直接通过地震属性和反演技术转换得到的岩性和物性结果受个人认识和解释精度的限制,其解释结果常常无法满足气藏精细开发需求。针对上述问题,以叠前岩性和物性敏感参数作为学习标本,将叠前反演技术与机器深度学习技术相结合,利用机器深度学习算法构建解释模型,最终实现砂岩厚度和储层量化预测。该方法有效提高储层预测分辨率、预测精度,其预测结果为沉积微相研究、成藏分析及井位部署等提供了有效的支撑,在新场须家河组二段气藏开发中取得较好的应用效果,为岩性和储层量化预测提供了新思路,对其他气田气藏开发起到良好的借鉴作用。

关键词: 深度学习, 岩性预测, 叠前反演, 分辨率, 敏感参数, 储层量化预测

Abstract:

The second member of Xujiahe Formation in Xinchang western Sichuan Depression, a tight sandstone reservoir, exhibits strong heterogeneity and thin reservoir characteristics. Previous interpretations of lithology and reservoir properties obtained directly through seismic attributes and inversion techniques were limited by individual understanding and interpretation accuracy. Consequently, the interpretation results often fell short of meeting the requirements for detailed reservoir development in gas fields.To address these challenges, a novel approach was implemented. Sensitivity parameters related to pre-stack lithology and reservoir properties were used as learning samples. Pre-stack inversion techniques were combined with machine deep learning algorithms to construct an interpretation model. This innovative method ultimately achieved quantitative predictions of sandstone thickness and reservoir properties. This method not only improves the resolution of reservoir prediction, but also greatly improves the prediction accuracy. The prediction results provide effective support for sedimentary microfacies research, reservoir formation analysis, and well location deployment, and have achieved good application results in the development of the second member gas reservoir of Xujiahe Formation in Xinchang. This article introduces a new interpretation approach for quantitative prediction of lithology and reservoirs, and serves as a valuable reference for gas field development in other regions.

Key words: machine deep learning, lithologic prediction, pre-stack inversion, resolution ratio, sensitivity parameter, quantitative prediction of reservoirs

中图分类号: 

  • TE122