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A practical guide to performing multiple-point statistical simulations with the Direct Sampling algorithm

机译:使用直接采样算法执行多点统计模拟的实用指南

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摘要

The Direct Sampling (DS) algorithm is a recently developed multiple-point statistical simulation technique. It directly scans the training image (TI) for a given data event instead of storing the training probability values in a catalogue prior to simulation. By using distances between the given data events and the TI patterns, DS allows to simulate categorical, continuous and multivariate problems. Benefiting from the wide spectrum of potential applications of DS, requires understanding of the user-defined input parameters. Therefore, we list the most important parameters and assess their impact on the generated simulations. Real case TIs are used, including an image of ice-wedge polygons, a marble slice and snow crystals, all three as continuous and categorical images. We also use a 3D categorical TI representing a block of concrete to demonstrate the capacity of DS to generate 3D simulations. First, a quantitative sensitivity analysis is conducted on the three parameters balancing simulation quality and CPU time: the acceptance threshold t, the fraction of TI to scan f and the number of neighbors n. Next to a visual inspection of the generated simulations, the performance is analyzed in terms of speed of calculation and quality of pattern reproduction. Whereas decreasing the CPU time by influencing f and n is at the expense of simulation quality, reducing the scanned fraction of the TI allows substantial computational gains without degrading the quality as long as the TI contains enough reproducible patterns. We also illustrate the quality improvement resulting from post-processing and the potential of DS to simulate bivariate problems and to honor conditioning data. We report a comprehensive guide to performing multiple-point statistical simulations with the DS algorithm and provide recommendations on how to set the input parameters appropriately.
机译:直接采样(DS)算法是最近开发的多点统计仿真技术。它直接扫描给定数据事件的训练图像(TI),而不是在模拟之前将训练概率值存储在目录中。通过使用给定数据事件和TI模式之间的距离,DS可以模拟分类,连续和多元问题。受益于DS潜在的广泛应用,需要了解用户定义的输入参数。因此,我们列出了最重要的参数,并评估它们对生成的模拟的影响。使用了真实案例的TI,包括冰楔多边形,大理石切片和雪晶的图像,所有这三个图像都是连续的和分类的图像。我们还使用3D分类TI表示一块混凝土,以演示DS生成3D仿真的能力。首先,对平衡仿真质量和CPU时间的三个参数进行了定量敏感性分析:接受阈值t,TI扫描的分数f和邻居数n。在目视检查生成的模拟之后,将根据计算速度和图案再现质量来分析性能。尽管通过影响f和n来减少CPU时间是以牺牲仿真质量为代价的,但是只要TI包含足够的可复制模式,减少TI的扫描部分就可以在不降低质量的情况下获得可观的计算增益。我们还说明了后处理带来的质量改进以及DS可能模拟双变量问题并遵守条件数据的潜力。我们报告了使用DS算法执行多点统计模拟的综合指南,并提供有关如何正确设置输入参数的建议。

著录项

  • 来源
    《Computers & geosciences》 |2013年第3期|307-324|共18页
  • 作者单位

    Research Group Soil Spatial Inventory Techniques, Department of Soil Management, Faculty of Bioscience Engineering, Ghent University, Coupure 653, Gent 9000, Belgium;

    Centre of Hydrogeology and Geothermics, University of Neuchdtel, Rue Emile Argand 11, CH-2000 Neuchatet, Switzerland;

    National Centre for Groundwater Research and Training, School of Civil and Environmental Engineering, The University of New South Wales, Sydney, NSW 2052, Australia;

    Centre of Hydrogeology and Geothermics, University of Neuchdtel, Rue Emile Argand 11, CH-2000 Neuchatet, Switzerland;

    Research Group Soil Spatial Inventory Techniques, Department of Soil Management, Faculty of Bioscience Engineering, Ghent University, Coupure 653, Gent 9000, Belgium;

    Centre of Hydrogeology and Geothermics, University of Neuchdtel, Rue Emile Argand 11, CH-2000 Neuchatet, Switzerland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    multiple-point statistics; direct sampling algorithm; sensitivity analysis; training image;

    机译:多点统计;直接采样算法;敏感性分析;训练图像;

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