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Multiple-point statistical simulation for hydrogeological models: 3-D training image development and conditioning strategies

机译:水文地质模型多点统计模拟:3-D培训图像开发和调理策略

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Most studies on the application of geostatistical simulations based on multiple-point statistics (MPS) to hydrogeological modelling focus on relatively fine-scale models and concentrate on the estimation of facies-level structural uncertainty. Much less attention is paid to the use of input data and optimal construction of training images. For instance, even though the training image should capture a set of spatial geological characteristics to guide the simulations, the majority of the research still relies on 2-D or quasi-3-D training images. In the present study, we demonstrate a novel strategy for 3-D MPS modelling characterized by (i) realistic 3-D training images and (ii) an effective workflow for incorporating a diverse group of geological and geophysical data sets. The study covers an area of 2810 km(2) in the southern part of Denmark. MPS simulations are performed on a subset of the geological succession (the lower to middle Miocene sediments) which is characterized by relatively uniform structures and dominated by sand and clay. The simulated domain is large and each of the geostatistical realizations contains approximately 45 million voxels with size 100m x 100m x 5 m. Data used for the modelling include water well logs, high-resolution seismic data, and a previously published 3-D geological model. We apply a series of different strategies for the simulations based on data quality, and develop a novel method to effectively create observed spatial trends. The training image is constructed as a relatively small 3-D voxel model covering an area of 90 km(2). We use an iterative training image development strategy and find that even slight modifications in the training image create significant changes in simulations. Thus, this study shows how to include both the geological environment and the type and quality of input information in order to achieve optimal results from MPS modelling. We present a practical workflow to build the training image and effectively
机译:基于多点统计(MPS)对地质统计模拟在水中模型上专注于相对微尺度模型的研究,专注于相对微量模型的研究大多数研究。对使用输入数据和培训图像的最佳结构进行了重视的重视得多。例如,即使训练图像应该捕获一组空间地质特征以指导模拟,大多数研究仍然依赖于2-D或准3-3-D训练图像。在本研究中,我们展示了一种新的三维MPS建模策略,其特征在于(i)现实的3-D训练图像和(ii)用于结合多样的地质和地球物理数据集的有效工作流程。该研究涵盖了丹麦南部的2810公里(2)米(2)。在地质成功的子集(下部到中间内海绵沉积物的沉积物的子集上进行MPS模拟,其特征在于相对均匀的结构并由沙子和粘土构成。模拟域大,每个地质统计学的实现都包含大约4500万个尺寸为100m x 100m x 5米的体素。用于建模的数据包括水井日志,高分辨率地震数据和先前公布的3-D地质模型。我们根据数据质量应用了一系列不同的模拟策略,并开发了一种有效创造观察到的空间趋势的新方法。训练图像被构造为覆盖90km(2)的相对小的3-D体素模型。我们使用迭代培训图像开发策略,发现甚至在训练图像中的微小修改会产生显着的模拟变化。因此,本研究显示了如何包括地质环境和输入信息的类型和质量,以便实现MPS建模的最佳结果。我们展示了一个实用的工作流程来建立培训图像和有效

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