中国石油勘探 ›› 2025, Vol. 30 ›› Issue (5): 171-184.DOI: 10.3969/j.issn.1672-7703.2025.05.013

• 工程技术 • 上一篇    

鄂尔多斯盆地西缘中段长8油藏低阻成因及人工智能油水识别方法研究与应用

杨晨1,2,时建超1,2,陈小东1,2,景文平3,张宝娟1,2,谢启超1,2,石坚1,2   

  1. 1 中国石油长庆油田公司勘探开发研究院;2 低渗透油气田勘探开发国家工程实验室;3 中国石油长庆油田公司第七采油厂
  • 发布日期:2025-09-14
  • 作者简介:杨晨(1990-),男,山东淄博人,学士,2013年毕业于中国石油大学(华东),高级工程师,现主要从事低渗透油藏开发相关工作。地址:陕西省西安市未央路151 号中国石油长庆油田公司勘探开发研究院油田产建研究所,邮政编码:710018。
  • 基金资助:
    中国石油天然气股份有限公司重大科技专项“长庆油田5000 万吨持续高效稳产关键技术研究与应用”(2016E-0501)。

Genesis of low-resistivity oil reservoir in the eighth member of Yanchang Formation and research and application of artificial intelligence oil–water identification method in the middle section of the western margin of Ordos Basin

Yang Chen1,2,Shi Jianchao1,2,Chen Xiaodong1,2,Jing Wenping3,Zhang Baojuan1,2,Xie Qichao1,2,Shi Jian1,2   

  1. 1 Research Institute of Exploration and Development, PetroChina Changqing Oilfield Company; 2 National Engineering Laboratory for Exploration and Development of Low Permeability Oil & Gas Fields; 3 No.7 Oil Production Plant, PetroChina Changqing Oilfield Company
  • Published:2025-09-14

摘要: 位于鄂尔多斯盆地西缘的环江—洪德—演武地区普遍发育着中生界延长组长8油藏,该油藏储量巨大,是围绕该区域勘探增储较好的后备潜力资源。但该区长8油层电阻率普遍分布在3~15Ω·m之间、油水层电阻率比小于2,对比度低、识别难度较大,常规测井解释方法识别准确度较低,无法满足高效增储建产的需求。本文结合大量钻井、岩心、三维地震和测井曲线对比分析等资料,从构造演化、矿化特征等,对研究区长8油藏低阻成因进行研究。研究认为鄂尔多斯西缘盆地长8 储层低阻成因主要是高地层水矿化度和高束缚水饱和度。通过采用以人工神经网络模型为基础,以6类关键测井参数为变量,构建了QRw和PC1两项敏感参数,建立机器学习模型,绘制QRw与PC1交会图版,油层、油水同层、水层呈现出良好的分区性,储层流体类型识别精度提高至88.9%。

关键词: 鄂尔多斯盆地;低阻油层;高地层水矿化度;人工神经网络

Abstract: In Huanjiang–Hongde–Yanwu area in the western margin of Ordos Basin, oil reservoirs were widely developed in the eighth member of the Mesozoic Yanchang Formation (Chang 8 member), with huge reserve amount, which is a favorable replacement resource for further exploration and increasing reserves in the region. However, the electrical resistivity of Chang 8 member oil reservoir generally ranges in 3.0–15.0 Ω·m, and the resistivity ratio between oil layer and water layer is lower than 2, showing low contrast ratio, and leading to great difficulty in oil layer identification. The conventional logging interpretation method has a low accuracy, which is unable to meet the needs of high-efficiency reserve increase and capacity construction. Based on a large amount of well drilling, core data, 3D seismic data, and comparative analysis of logging curves, the genesis of Chang 8 member low-resistivity oil reservoir has been studied from the perspectives of structural evolution and mineralization characteristics. The study results indicate that Chang 8 member low-resistivity oil reservoir in the western margin of Ordos Basin was mainly due to high salinity of formation water and high saturation of bound water. By using an artificial neural network model and variables of six key logging parameters, two sensitive parameters have been introduced, i.e., QRw and PC1, and a machine learning model has been established to prepare a cross plot between them, obtaining good distinguishment results among oil layer, oil–water layer, and water layer, with an accuracy of reservoir fluid type recognition improved to 88.9%.

Key words: Ordos Basin; low-resistivity oil layer; high salinity of formation water; artificial neural network

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