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Artificial Intelligence Method for Shear Wave Travel Time Prediction considering Reservoir Geological Continuity

机译:考虑水库地质连续性的剪力波行程时间预测人工智能方法

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The existing artificial intelligence model uses single-point logging data as the eigenvalue to predict shear wave travel times (DTS), which does not consider the longitudinal continuity of logging data along the reservoir and lacks the multiwell data processing method. Low prediction accuracy of shear wave travel time affects the accuracy of elastic parameters and results in inaccurate sand production prediction. This paper establishes the shear wave prediction model based on the standardization, normalization, and depth correction of conventional logging data with five artificial intelligence methods (linear regression, random forest, support vector regression, XGBoost, and ANN). The adjacent data points in depth are used as machine learning eigenvalues to improve the practicability of interwell and the accuracy of single-well prediction. The results show that the model built with XGBoost using five points outperforms other models in predicting. The R 2 of 0.994 and 0.964 are obtained for the training set and testing set, respectively. Every model considering reservoir vertical geological continuity predicts test set DTS with higher accuracy than single-point prediction. The developed model provides a tool to determine geomechanical parameters and give a preliminary suggestion on the possibility of sand production where shear wave travel times are not available. The implementation of the model provides an economic and reliable alternative for the oil and gas industry.
机译:现有的人工智能模型使用单点日志记录数据作为特征值来预测剪切波行驶时间(DTS),这不考虑沿储存器的测井数据的纵向连续性,并且缺少多个数据处理方法。剪力波行程的低预测精度影响弹性参数的准确性,并导致砂生产预测不准确。本文基于具有五个人工智能方法的传统测井数据的标准化,标准化和深度校正来建立剪切波预测模型(线性回归,随机森林,支持向量回归,XGBoost和Ann)。在深度相邻的数据点被用作机器学习的特征值,以提高井的实用性和单井预测的精度。结果表明,使用五点使用XGBoost构建的模型优于预测中的其他模型。为训练集和测试集获得0.994和0.964的R 2。考虑储层的地质垂直连续性每模型预测测试集DTS具有比单点预测精度更高。开发的模型提供了一种用于确定地质力学参数的工具,并对剪切波行驶时间不可用的砂生产的可能性进行初步建议。该模型的实施为石油和天然气行业提供了经济可靠的替代品。

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