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RESERVOIR FLUID PROPERTY MODELING USING MACHINE LEARNING

机译:水库流体性能建模使用机器学习

摘要

System and methods for tuning equation of state (EOS) characterizations are presented. Pressure-volume-temperature (PVT) data is obtained for downhole fluids within a reservoir formation. A component grouping for an EOS model of the downhole fluids is determined, based on the obtained PVT data. The component grouping is used to estimate properties of the downhole fluids for a current stage of a downhole operation within the formation. A machine learning model is trained to minimize an error between the estimated properties and actual fluid properties measured during the current stage of the operation, where the component grouping for the EOS model is iteratively adjusted by the machine learning model until the error is minimized. The EOS model is tuned using the adjusted component grouping. Fluid properties are estimated for one or more subsequent stages of the downhole operation to be performed along the wellbore, based on the tuned EOS model.
机译:提出了用于调谐状态的系统和方法(EOS)特征。 压力体积温度(PVT)数据用于储层形成内的井下流体。 基于所获得的PVT数据,确定用于井下流体的EOS模型的组分分组。 组分分组用于估计井下流体的特性,用于在地层内的井下操作的电流阶段。 训练机器学习模型,以最小化在操作的当前阶段测量期间测量的估计性质和实际流体特性之间的误差,其中通过机器学习模型迭代地调整EOS模型的组件分组,直到误差最小化。 使用调整后的组件分组进行调整EOS型号。 基于调谐的EOS模型,估计沿井筒进行的井下操作的一个或多个阶段估计流体性质。

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