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首页> 外文期刊>Intelligent Control and Automation >Cluster Analysis Assisted Float-Encoded Genetic Algorithm for a More Automated Characterization of Hydrocarbon Reservoirs
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Cluster Analysis Assisted Float-Encoded Genetic Algorithm for a More Automated Characterization of Hydrocarbon Reservoirs

机译:聚类分析辅助浮点编码遗传算法可更自动化地表征油气藏

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摘要

A genetic algorithm-based joint inversion method is presented for evaluating hydrocarbon-bearing geological formations. Conventional inversion procedures routinely used in the oil industry perform the inversion processing of borehole geophysical data locally. As having barely more types of data than unknowns in a depth, a set of marginally over-determined inverse problems has to be solved along a borehole, which is a rather noise sensitive procedure. For the reduction of noise effect, the amount of overdetermination must be increased. To fulfill this requirement, we suggest the use of our interval inversion method, which inverts simultaneously all data from a greater depth interval to estimate petrophysical parameters of reservoirs to the same interval. A series expansion based discretization scheme ensures much more data against unknowns that significantly reduces the estimation error of model parameters. The knowledge of reservoir boundaries is also required for reserve calculation. Well logs contain information about layer-thicknesses, but they cannot be extracted by the local inversion approach. We showed earlier that the depth coordinates of layerboundaries can be determined within the interval inversion procedure. The weakness of method is that the output of inversion is highly influenced by arbitrary assumptions made for layer-thicknesses when creating a starting model (i.e. number of layers, search domain of thicknesses). In this study, we apply an automated procedure for the determination of rock interfaces. We perform multidimensional hierarchical cluster analysis on well-logging data before inversion that separates the measuring points of different layers on a lithological basis. As a result, the vertical distribution of clusters furnishes the coordinates of layer-boundaries, which are then used as initial model parameters for the interval inversion procedure. The improved inversion method gives a fast, automatic and objective estimation to layer-boundaries and petrophysical parameters, which is demonstrated by a hydrocarbon field example.
机译:提出了一种基于遗传算法的联合反演方法,用于评价含烃地质构造。石油工业中常规使用的常规反演程序在本地执行钻孔地球物理数据的反演处理。由于在深度上仅具有比未知数更多的数据类型,因此必须沿着井眼解决一组边缘超定的反问题,这是一个对噪声非常敏感的过程。为了减少噪声影响,必须增加超确定量。为了满足这一要求,我们建议使用区间反演方法,该方法可以同时将来自较大深度区间的所有数据反演,以将储层的岩石物理参数估计为相同的区间。基于序列展开的离散化方案可确保针对未知数提供更多数据,从而显着减少模型参数的估计误差。储量计算也需要了解储层边界。测井记录包含有关层厚度的信息,但无法通过局部反演方法提取。前面我们表明,可以在间隔反演过程中确定层边界的深度坐标。该方法的弱点在于,在创建初始模型时(即层数,厚度搜索域),反演的输出会受到对层厚度的任意假设的高度影响。在这项研究中,我们应用自动程序确定岩石界面。在反演之前,我们对测井数据进行多维层次聚类分析,从而在岩性基础上分离不同层的测量点。结果,簇的垂直分布提供了层边界的坐标,然后将其用作间隔反演程序的初始模型参数。改进的反演方法可以快速,自动,客观地估算层边界和岩石物理参数,这可以通过烃田实例得到证明。

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