Tight Reservoirs Classification using Random Forest: A Case Study of He 8 Member in Eastern Yan'an Gas Field

Wang Yan, Wang Ruogu, Yang Shengyi, Liu Jianping
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引用次数: 1

Abstract

Tight sandstone reservoir is very important in oil and gas exploration in China. Tight reservoirs classification and evaluation are a frontier research field. There are many indexes involved in reservoirs classification, and it is necessary to judge the reservoir type according to personal experience, which consumes lots of time and manpower. Therefore, a new classification method of tight reservoirs using random forest is proposed. Firstly, the high pressure mercury injection curves of tight sandstone reservoirs of He 8 member of Lower Shihezi Formation in eastern Yan'an Gas Field are selected as the research data. Four characteristics for classification are obtained by principal component analysis. Secondly, the random forest using CART is used to classify and obtain the results of reservoir classification. Finally, classification results are verified and parameters of the random forest are optimized. Experimental results show that the proposed reservoirs classification method has high accuracy and low calculation cost. It can effectively reduce time loss and save manpower, and has good generalization.
随机森林法致密储层分类——以延安东部气田河8段为例
致密砂岩储层在中国油气勘探中占有重要地位。致密储层分类与评价是一个前沿研究领域。储层分类涉及的指标较多,需要根据个人经验判断储层类型,耗费大量的时间和人力。为此,提出了一种利用随机森林进行致密储层分类的新方法。首先选取延安气田东部下石河子组河8段致密砂岩储层高压压汞曲线作为研究资料。通过主成分分析得到了分类的四个特征。其次,利用CART随机森林进行分类,得到储层分类结果。最后对分类结果进行验证,并对随机森林的参数进行优化。实验结果表明,本文提出的储层分类方法精度高,计算成本低。该方法可有效减少时间损失,节省人力,具有良好的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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