Analysis of Evolutionary Algorithm and Discrete Cosine Transformation Components Influence on Assisted History Matching Performance

F. Al-Jenaibi, Konstantin Shelepov, Maksim Kuzevanov, E. Gusarov, K. Bogachev
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Abstract

The application of intelligent algorithms that use clever simplifications and methods to solve computationallycomplex problems are rapidly displacing traditional methods in the petroleum industry. The latest forward-thinking approaches inhistory matching and uncertainty quantification were applied on a dynamic model that has unknown permeability model. The original perm-poro profile was constructed based on synthetic data to compare Assisted History Matching (AHM)approach to the exact solution. It is assumed that relative permeabilities, endpoints, or any parameter other than absolute permeability to match oil/water/gas rates, gas-oil ratio, water injection rate, watercut and bottomhole pressure cannot be modified. The standard approach is to match a model via permeability variation is to split the grid into several regions. However, this process is a complete guess as it is unclear in advance how to select regions. The geological prerequisites for such splitting usually do not exist. Moreover, the values of permeability and porosity in different grid blocks are correlated. Independent change of these values for each region distortscorrelations or make the model unphysical. The proposed alternative involves the decomposition of permeability model into spectrum amplitudes using Discrete Cosine Transformation (DCT), which is a form of Fourier Transform. The sum of all amplitudes in DCT is equal to the original property distribution. Uncertain permeability model typically involves subjective judgment, and several optimization runs to construct uncertainty matrix. However, the proposed multi-objective Particle Swarm Optimization (PSO) helps to reduce randomness and find optimal undominated by any other objective solution with fewer runs. Further optimization of Flexi-PSO algorithm is performed on its constituting components such as swarm size, inertia, nostalgia, sociality, damping factor, neighbor count, neighborliness, the proportion of explorers, egoism, community and relative critical distance to increase the speed of convergence. Additionally, the clustering technique, such as Principal Component Analysis (PCA), is suggested as a mean to reduce the space dimensionality of resulted solutions while ensuring the diversity of selected cluster centers. The presentedset of methodshelps to achieve a qualitative and quantitative match with respect to any property, reduce the number of uncertainty parameters, setup ageneric and efficient approach towards assisted history matching.
演化算法和离散余弦变换分量对辅助历史匹配性能的影响分析
智能算法的应用,使用巧妙的简化和方法来解决计算复杂的问题,正在迅速取代石油工业中的传统方法。将历史拟合和不确定性量化的最新前瞻性方法应用于具有未知渗透率模型的动态模型。在合成数据的基础上构建了原始的perm-poro剖面,并将AHM方法与精确解进行了比较。假设相对渗透率、端点或除绝对渗透率以外的任何参数都不能修改,以匹配油/水/气速率、气/油比、注水速率、含水率和井底压力。标准的方法是通过渗透率变化来匹配模型,将网格划分为几个区域。但是,这一过程完全是猜测,因为事先不知道如何选择地区。这种分裂的地质条件通常不存在。此外,不同网格块的渗透率和孔隙度值具有相关性。每个区域的这些值的独立变化会扭曲相关性或使模型非物理化。提出的替代方案涉及使用离散余弦变换(DCT)将渗透率模型分解为频谱振幅,这是傅里叶变换的一种形式。DCT中所有振幅的和等于原始的性质分布。不确定渗透率模型通常涉及主观判断,需要多次优化运行来构建不确定性矩阵。然而,提出的多目标粒子群优化(PSO)有助于减少随机性,并以更少的运行次数找到不受其他目标解影响的最优解。对柔性粒子群优化算法的构成要素如群体规模、惯性、怀旧、社会性、阻尼因子、邻居数、邻居关系、探索者比例、利己主义、社区和相对临界距离等进行进一步优化,以提高收敛速度。此外,建议采用主成分分析(PCA)等聚类技术来降低结果解的空间维数,同时保证所选聚类中心的多样性。本文提出的方法可以实现对任意属性的定性和定量匹配,减少不确定参数的数量,为辅助历史匹配建立通用和有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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