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A 4D Small Data Solution in a Deepwater Gulf of Mexico Seismic-Driven History Matching Workflow

机译:墨西哥地震驱动历史上匹配工作流程的深水海湾的4D小型数据解决方案

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Time-lapse seismic monitoring is a powerful technique for reservoir management and the optimization of hydrocarbon recovery.In time-lapse seismic datasets,the difference in seismic properties across different vintages enables the detection of spatio-temporal changes in saturated properties and structure induced by production.The main objectives are (1) to identify bypass pay zones in time-lapse seismic data for the deepwater Amberjack field,located in the Gulf of Mexico,(2) confirm the identified bypass pay zones in the results of reservoir simulation,and (3) recommend well planning strategies to exploit these bypassed resources.A high-fidelity seismic-to-simulation 4D workflow that incorporates seismic,petrophysics,petrophysical property modeling,and reservoir simulation was employed,which leveraged cross-discipline interaction,interpretation,and integration to extend asset management capabilities.The workflow addresses geology (well log interpretation and framework development),geophysics (seismic interpretation,velocity modeling,and seismic inversion),and petrophysical property modeling (earth models and co-located cosimulation of petrophysical properties with P-impedance from seismic inversion).An embedded petroelastic model (PEM) in the reservoir simulator is then used to affiliate spatial dry rock properties with saturation properties to compute dynamic elastic properties,which can be related to multi-vintage P-impedance from time-lapse seismic inversion.In the absence of the requisite dry rock properties for the PEM,a small data engine is used to determine these absent properties using metaheuristic optimization techniques.Specifically,two particle swarm optimization (PSO) applications,including an exterior penalty function (EPF),are modified resulting in the development of nested and average methods,respectively.These methods simultaneously calculate the missing rock parameters (dry rock bulk modulus,shear modulus,and density) necessary for dynamic,embedded P-impedance calculation in the history-constrained reservoir simulation results.Afterward,a graphic-enabled method was devised to appropriately classify the threshold to discriminate non-reservoir (including bypassed pay) and reservoir from the P-impedance difference.Its results are compared to unsupervised learning (k-means clustering and hierarchical clustering).From seismic data,one can identify bypassed pay locations,which are confirmed from reservoir simulation after conducting a seismic-driven history match.Finally,infill wells are planned,and then modeled in the reservoir simulator.
机译:延时地震监测是一种强大的储层管理技术和碳氢化合物回收的优化。时间流逝地震数据集,不同葡萄酒上的地震性能的差异使得能够检测生产饱和性质和结构诱导的结构的时空变化。主要目标是(1)识别位于墨西哥湾的深水Amberjack领域的绕道地震数据,(2)证实了储层模拟结果中识别的旁路付费区,( 3)推荐利用这些绕过资源的井规划策略。采用高保真地震仿真4D工作流程,包括地震,岩石物理学,岩石物理建模和水库模拟,杠杆跨学科互动,解释和整合扩展资产管理能力。工作流程地地质(井日志解释和框架开发),Geoph YSICS(地震解释,速度建模和地震反演)和岩石物理学建模(地球模型和岩石物理性质与来自地震反演的P防震的岩石物理性质)。储层模拟器中的嵌入式岩体弹性模型(PEM)是用于将空间干燥岩石性能与饱和度特性联系起来计算动态弹性性质,这可以与延时地震反转的多葡萄酒P防震有关。在没有必要的干燥岩石属性的情况下进行PEM,小数据使用发动机用于使用成群质优化技术来确定这些不存在性能。特殊地,修改了两个粒子群优化(PSO)应用,包括外部惩罚功能(EPF),分别导致嵌套和平均方法的开发。这些方法同时发生计算动态,嵌入式所需的缺失的岩石参数(干式摇滚体积模量,剪切模量和密度)历史限制的储层仿真结果中的P防震计算。设计了一种基于图形的方法,以适当地分类阈值以区分非储存器(包括旁路薪酬)和来自P阻抗差异的储库。测验结果对于无监督的学习(K-Means Clustering和分层聚类)。从地震数据中,可以识别旁路支付位置,在进行地震驱动的历史匹配之后从储库模拟中确认。最后,计划井井,然后建模水库模拟器。

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