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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Efficient global optimization of reservoir geomechanical parameters based on synthetic aperture radar-derived ground displacements
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Efficient global optimization of reservoir geomechanical parameters based on synthetic aperture radar-derived ground displacements

机译:基于合成孔径雷达推导的地面位移的储层地质力学参数高效全局优化

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When large volumes of fluids are removed from or injected into underground formations for, e.g., hydrocarbon and water production, CO2 storage, gas storage, and geothermal energy exploitation, monitoring of surface deformations coupled to numerical modeling improves our understanding of reservoir behavior. The ability to accurately simulate surface displacements, however, is often impaired by limited information on reservoir geometry, waterdrive strength, and fluid-geomechanical parameters characterizing the geologic formations of interest. We have investigated the ability of efficient global optimization (EGO) to reduce the parameter uncertainties usually affecting geomechanical modeling. EGO is used to identify the parameter set that minimizes the difference in land displacements obtained from synthetic aperture radar (SAR)-derived measurements and 3D geomechanical modeling. We have tested the approach on the Tengiz giant oil field, Kazakhstan, where large uncertainties affect our knowledge of geomechanical parameters and pore pressure evolution. SqueeSAR on ENVISAT and RADARSAT-1 images acquired between 2004 and 2007 provided a set of high-precision, high-areal-density subsidence measurements of the test site. Based on the available information, a 3D geomechanical model of the reservoir has been developed using the elastoplastic finite-element code GEPS3D. Our results indicated that EGO efficiently identifies the global optimum in the parameter space, yielding a significant reduction in the difference between modeled and measured land subsidence. The match between simulated and SAR-measured horizontal displacements was developed as validation of the EGO calibration, which thus proved an effective and rather inexpensive method for the simultaneous management of several uncertainties and the reliable quantification of the rock properties.
机译:当从地下地层中抽出大量流体或将其注入地下时,例如,碳氢化合物和水的生产,CO2的存储,气体的存储以及地热能的开采,对地表变形的监测与数值模拟相结合,可以提高我们对储层行为的理解。然而,关于储层几何形状,水驱强度和表征感兴趣的地质构造的流体-地质力学参数的有限信息通常会削弱精确模拟表面位移的能力。我们已经研究了有效的全局优化(EGO)的能力,以减少通常影响地质力学建模的参数不确定性。 EGO用于识别参数集,该参数集将从合成孔径雷达(SAR)得出的测量结果和3D地质力学建模中获得的陆地位移差异最小化。我们已经在哈萨克斯坦的腾吉兹巨型油田测试了该方法,该地区存在很大的不确定性,影响了我们对地质力学参数和孔隙压力演化的认识。在2004年至2007年期间获取的ENVISAT和RADARSAT-1图像上的SqueeSAR提供了一组测试地点的高精度,高面积密度沉降测量。基于现有信息,已使用弹塑性有限元代码GEPS3D开发了储层的3D地质力学模型。我们的结果表明,EGO有效地确定了参数空间中的全局最优值,从而极大地减少了模型沉降与实测沉降之间的差异。开发了模拟和SAR测量的水平位移之间的匹配作为EGO校准的验证,因此证明了同时管理多个不确定性和可靠地量化岩石特性的一种有效且价格便宜的方法。

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