Rapid identification of high-quality marine shale gas reservoirs based on the oversampling method and random forest algorithm

Linqi Zhu , Xueqing Zhou , Chaomo Zhang
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引用次数: 12

Abstract

The identification of high-quality marine shale gas reservoirs has always been a key task in the exploration and development stage. However, due to the serious nonlinear relationship between the logging curve response and high-quality reservoirs, the rapid identification of high-quality reservoirs has always been a problem of low accuracy. This study proposes a combination of the oversampling method and random forest algorithm to improve the identification accuracy of high-quality reservoirs based on logging data. The oversampling method is used to balance the number of samples of different types and the random forest algorithm is used to establish a high-precision and high-quality reservoir identification model. From the perspective of the prediction effect, the reservoir identification method that combines the oversampling method and the random forest algorithm has increased the accuracy of reservoir identification from the 44% seen in other machine learning algorithms to 78%, and the effect is significant. This research can improve the identifiability of high-quality marine shale gas reservoirs, guide the drilling of horizontal wells, and provide tangible help for the precise formulation of marine shale gas development plans.

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基于过采样和随机森林算法的海相优质页岩气储层快速识别
海相优质页岩气储层识别一直是勘探开发阶段的重点任务。然而,由于测井曲线响应与优质储层之间存在严重的非线性关系,优质储层的快速识别一直是一个精度不高的问题。为了提高基于测井资料的优质储层识别精度,提出了过采样方法与随机森林算法相结合的方法。利用过采样方法平衡不同类型样本的数量,利用随机森林算法建立高精度、高质量的储层识别模型。从预测效果来看,将过采样法与随机森林算法相结合的储层识别方法将储层识别的准确率从其他机器学习算法的44%提高到78%,效果显著。该研究可以提高海相优质页岩气储层的可识别性,指导水平井钻井,为海相页岩气开发方案的精确制定提供切实帮助。
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