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Determination of in situ stresses and elastic parameters from hydraulic fracturing tests by geomechanics modeling and soft computing

机译:通过水力压裂试验,通过地质力学建模和软计算确定现场应力和弹性参数

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Hydraulic fracturing is the most effective technology for determination of the minimum horizontal in situ stress, sigma(h), in a rock formation. The maximum horizontal in situ stress, sigma(H), is often determined by the minimum horizontal in situ stress, breakdown pressure, Young's modulus E and Poisson's ratio nu with elastic rock behavior assumed. In this paper, a pressure back-analysis method is proposed for determination of these parameters (e.g., sigma(H), sigma(h), E, nu) based on borehole pressures monitored in a hydraulic fracturing test. In the proposed method, an artificial neural network (ANN) is used to represent the relationship between maximum and minimum horizontal in situ stresses, elastic parameters and borehole pressure values; a forward model is applied to perform 2-D numerical simulation of a hydraulic fracturing process to create necessary training and testing samples for the ANN model; the genetic algorithm (GA) is employed to search the set of unknown in situ stresses and elastic parameters in a global space based on appropriate fitness function. A hypothetical numerical experiment is conducted in detail to validate the new method. Results show that the proposed pressure back-analysis method using ANN-GA can effectively determine maximum and minimum horizontal in situ stresses and elastic parameters from borehole pressure values in hydraulic fracturing tests. (C) 2014 Elsevier B.V. All rights reserved.
机译:水力压裂是确定岩层中最小水平原位应力sigma(h)的最有效技术。最大水平原位应力sigma(H)通常由最小水平原位应力,击穿压力,杨氏模量E和泊松比nu(假设弹性岩石行为)决定。本文提出了一种基于水力压裂测试中监测的井眼压力来确定这些参数(例如sigma(H),sigma(h),E,nu)的压力反分析方法。在该方法中,使用人工神经网络(ANN)来表示最大和最小水平原位应力,弹性参数和井眼压力值之间的关系。应用正向模型对水力压裂过程进行二维数值模拟,以为ANN模型创建必要的训练和测试样本;遗传算法(GA)用于根据适当的适应度函数在全局空间中搜索未知的原位应力和弹性参数集。详细地进行了假设的数值实验以验证该新方法。结果表明,所提出的基于ANN-GA的压力反分析方法可以有效地根据水力压裂测试中的井眼压力值确定最大和最小水平原位应力以及弹性参数。 (C)2014 Elsevier B.V.保留所有权利。

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