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Tensor based geology preserving reservoir parameterization with Higher Order Singular Value Decomposition (HOSVD)

机译:使用高阶奇异值分解(HOSVD)的基于Tensor的地质特征保存储层参数

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Parameter estimation through robust parameterization techniques has been addressed in many works associated with history matching and inverse problems. Reservoir models are in general complex, nonlinear, and large-scale with respect to the large number of states and unknown parameters. Thus, having a practical approach to replace the original set of highly correlated unknown parameters with non-correlated set of lower dimensionality, that captures the most significant features comparing to the original set, is of high importance. Furthermore, de-correlating system's parameters while keeping the geological description intact is critical to control the ill-posedness nature of such problems. We introduce the advantages of a new low dimensional parameterization approach for reservoir characterization applications utilizing multilinear algebra based techniques like higher order singular value decomposition (HOSVD). In tensor based approaches like HOSVD, 2D permeability images are treated as they are, i.e., the data structure is kept as it is, whereas in conventional dimensionality reduction algorithms like SVD data has to be vectorized. Hence, compared to classical methods, higher redundancy reduction with less information loss can be achieved through decreasing present redundancies in all dimensions. In other words, HOSVD approximation results in a better compact data representation with respect to least square sense and geological consistency in comparison with classical algorithms. We examined the performance of the proposed parameterization technique against SVD approach on the SPE10 benchmark reservoir model as well as synthetic channelized permeability maps to demonstrate the capability of the proposed method. Moreover, to acquire statistical consistency, we repeat all experiments for a set of 1000 unknown geological samples and provide comparison using RMSE analysis. Results prove that, for a fixed compression ratio, the performance of the proposed approach outperforms that of conventional methods perceptually and in terms of least square measure. (C) 2016 Elsevier Ltd. All rights reserved.
机译:通过鲁棒的参数化技术进行参数估计已在许多与历史匹配和逆问题相关的工作中得到解决。就大量状态和未知参数而言,储层模型通常是复杂的,非线性的和大规模的。因此,具有实用的方法来用低维的非相关的低维度集来替换高相关性未知参数的原始集,与原始集相比,它具有最重要的特征。此外,在保持地质描述完好无损的同时对系统参数进行解相关对于控制此类问题的不适定性至关重要。我们介绍了一种新的低维参数化方法的优势,该方法利用基于多线性代数的技术(例如高阶奇异值分解(HOSVD))进行储层表征应用。在诸如HOSVD的基于张量的方法中,按原样处理2D渗透率图像,即,按原样保留数据结构,而在诸如SVD数据的常规降维算法中,必须进行矢量化处理。因此,与经典方法相比,可以通过减少所有维度上的现有冗余来实现更高的冗余减少和更少的信息丢失。换句话说,与经典算法相比,HOSVD逼近在最小平方感和地质一致性方面具有更好的紧凑数据表示。我们在SPE10基准油藏模型上检查了针对SVD方法的参数化技术的性能,以及合成的通道化渗透率图,以证明该方法的功能。此外,为了获得统计一致性,我们对一组1000个未知地质样品重复所有实验,并使用RMSE分析进行比较。结果证明,在固定压缩比的情况下,在最小二乘方方面,该方法的性能优于常规方法。 (C)2016 Elsevier Ltd.保留所有权利。

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