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Reservoir geomechanical parameters identification based on ground surface movements

机译:基于地表运动的储层地质力学参数识别

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Determination of geomechanical parameters of petroleum reservoir and surrounding rock is important for coupled reservoir-geomechanical modeling, borehole stability analysis and hydraulic fracturing design. A displacement back analysis technique based on artificial neural network (ANN) and genetic algorithm (GA) combination is investigated in this paper to identify reservoir geomechanical parameters based on ground surface displacements. An ANN is used to map the nonlinear relationship between Young's modulus, E, Poisson's ratio, v, internal friction angle, Φ, cohesion, c and ground surface displacements. The necessary training and testing samples for ANN are created by using numerical analysis. GA is used to search the set of unknown reservoir geomechanical parameters. Results of the numerical experiment show that the displacement back analysis technique based on ANN-GA combination can effectively identify reservoir geomechanical parameters based on ground surface movements as a result of oil and gas production.
机译:确定油藏和围岩的地质力学参数对于耦合油藏-地质力学建模,井眼稳定性分析和水力压裂设计非常重要。本文研究了一种基于人工神经网络(ANN)和遗传算法(GA)相结合的位移反分析技术,以基于地表位移识别储层岩土力学参数。 ANN用于绘制杨氏模量,E,泊松比,v,内摩擦角,Φ,内聚力,c和地面位移之间的非线性关系。通过数值分析为神经网络创建必要的训练和测试样本。遗传算法用于搜索未知的储层地质力学参数集。数值实验结果表明,基于ANN-GA组合的位移反分析技术可以有效地根据油气产生的地表运动识别储层地质力学参数。

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