Moreno Ziv, Paster Amir
School of Mechanical Engineering, Faculty of Engineering, Tel Aviv University, Tel Aviv, 69978, Israel.
Ground Water. 2019 Sep;57(5):704-717. doi: 10.1111/gwat.12863. Epub 2019 Feb 19.
Identifying the spatial distribution of hydrological properties of aquifers is a key problem in subsurface hydrology. The aquifer structure plays an important role in contaminant transport. Identifying the properties (primarily the hydraulic conductivity) is essentially an inversion problem that is ill-posed, non-unique and computationally intensive by definition. In this work, the non-uniqueness of the inverse problem is tackled via a novel Genetic Algorithm approach combined with a geostatistical method (Sequential Indicator Simulations) for construction of realizations of properties spatial distributions, which are modeled as random. The Genetic Algorithm cross-over operator is based on a novel concept of pilot-planes: daughter realizations adopt pilot-planes from one of their parents. In addition, each aquifer realization is conditioned on the geological hard data and is constructed by sampling the facies distribution, evaluated by indicator variograms. The approach is illustrated in two test cases: a synthetic two-dimensional (2D) case and an actual three-dimensional (3D) case. The results have shown the ability of the proposed approach to generate a set of realizations, where each individual exhibits minor deviations from the measurements. Further, a comparison between the proposed approach and direct (Monte Carlo) approach shows that the Genetic Algorithm was able to generate an ensemble of solutions with a better fitting of the measurements than the direct approach by a significantly reduced computational effort.
识别含水层水文性质的空间分布是地下水文学中的一个关键问题。含水层结构在污染物运移中起着重要作用。识别这些性质(主要是水力传导率)本质上是一个反演问题,从定义上讲,它是不适定的、非唯一的且计算量很大。在这项工作中,通过一种新颖的遗传算法方法结合一种地质统计学方法(顺序指示模拟)来解决反问题的非唯一性,用于构建性质空间分布的实现,这些实现被建模为随机的。遗传算法的交叉算子基于一种新颖的导频平面概念:子代实现从其父母之一采用导频平面。此外,每个含水层实现都以地质硬数据为条件,并通过对相分布进行采样来构建,相分布由指示变差函数评估。该方法在两个测试案例中得到了说明:一个合成的二维(2D)案例和一个实际的三维(3D)案例。结果表明了所提出的方法生成一组实现的能力,其中每个个体与测量值的偏差较小。此外,所提出的方法与直接(蒙特卡罗)方法之间的比较表明,遗传算法能够通过显著减少的计算量生成一组比直接方法更能拟合测量值的解。