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首页> 外文期刊>Journal of Petroleum Science & Engineering >Surrogate modeling-based optimization for the integration of static and dynamic data into a reservoir description
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Surrogate modeling-based optimization for the integration of static and dynamic data into a reservoir description

机译:基于替代模型的优化,用于将静态和动态数据集成到储层描述中

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This paper presents a solution methodology for the inverse problem of estimating the distributions of permeability and porosity in heterogeneous and multiphase petroleum reservoirs by matching the static and dynamic data available.The solution methodology includes,the construction of a "fast surrogate" of an objective function whose evaluation involves the execution of a time-consuming mathematical model(i.e.,reservoir numerical simulator0 based on neural networks.DACE (design and analysis of computer experiment)modeling,and adaptive sampling.Using adaptive sampling,promising areas are searched considering the information provided by the surrogate model and the expected value of the errors.The proposed methodology provides a global optimization method,hence avoiding the potential problem of convergence to a local minimum in the objective function exhibited by the commonly Gauss-Newton methods.Furthermore,it exhibits an affordable computational cost,is amenable to parallel processing,and is expected to outperform other general-purpose global optimization methods such as,simulated annealing,and genetic algorithms.The methodology is evaluated using two case studies of increasing complexity (from 6 to 23 independent parameters).Fromthe results,it is concluded that the methodology can be used effectively and efficiently for reservoir characterization purposes.In addition,the optimization approach holds promise to be useful in the optimization of objective functins involving the execution of computationally expensive reservoir numerical simulators,such as those found,not only in reservoir characterization,but also in other areas of petroleum engineering(e.g.,EOR optimization).
机译:本文提出了一种反方法的解决方法,该方法通过匹配可用的静态和动态数据来估算非均质和多相石油储层的渗透率和孔隙率分布。该解决方法包括构造目标函数的“快速替代”其评估涉及执行耗时的数学模型(即基于神经网络的储层数值模拟器0.DACE(计算机实验的设计和分析)建模和自适应采样。使用自适应采样,在考虑到所提供信息的情况下搜索有希望的区域所提出的方法提供了一种全局优化方法,从而避免了通常的Gauss-Newton方法所表现出的目标函数收敛到局部极小值的潜在问题。负担得起的计算成本,适合并行处理预计d的性能将优于其他通用的全局优化方法,例如模拟退火和遗传算法。该方法是使用两个复杂度不断增加的案例研究(从6到23个独立参数)进行评估的。该方法可有效地用于储层表征。此外,优化方法有望用于目标函数的优化,包括执行计算上昂贵的储层数值仿真器,例如发现的那些,不仅用于储层表征,而且在石油工程的其他领域(例如,EOR优化)。

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