中东地区生物碎屑灰岩储层渗透率预测方法研究
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作者: 郭海峰:中石油长城钻探工程有限公司解释研究中心, 北京
关键词: 生物碎屑灰岩;渗透率预测;孔隙结构;储层分类;常规测井;模型选择
摘要: 中东地区生物碎屑灰岩储层由于孔隙结构复杂、非均质性强,造成同等孔隙度下渗透率相差多个数量级,准确预测渗透率一直是一个难点。以伊拉克H油田M层为例,提出一种基于岩心数据和常规测井资料渗透率精细预测方法。在储层分类的基础上,以“分层分类”原则作为指导建立多个渗透率模型,将孔隙结构评价转换为模型选择问题。分析发现,常规测井的孔隙度、电阻率和自然伽马对孔隙结构较为敏感,可用于渗透率计算时的模型选择。该方法的计算结果与岩心数据一致,提高了常规测井渗透率的预测精度。
文章引用:郭海峰. 中东地区生物碎屑灰岩储层渗透率预测方法研究[J]. 石油天然气学报, 2015, 37(11&12): 26-30.

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