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Direct simulation of two-dimensional isotropic or anisotropic random field from sparse measurement using Bayesian compressive sampling

机译:使用贝叶斯压缩采样从稀疏测量直接模拟二维各向同性或各向异性随机场

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摘要

Random field theory has been increasingly adopted to simulate spatially varying environmental properties and hydrogeological data in recent years. In a two-dimensional (2D) stochastic analysis, variation of the environmental properties or hydrogeological data along different directions can be similar (i.e., isotropic) or quite different (i.e., anisotropic). To model the spatially isotropic or anisotropic variability in a stochastic analysis, conventional random field generators generally require a vast amount of measurement data to identify the random field parameters (e.g., mean, variance, and correlation structure and correlation length in different directions). However, measurement data available in practice are usually sparse and limited. The random field parameters estimated from sparse measurements might be unreliable, and the subsequent random field modeling or stochastic analysis might be misleading. This underscores the significance and challenge of generating 2D isotropic or anisotropic random fields from sparse measurements. This paper develops a novel 2D random field generator, which does not require a parametric form of correlation function or estimation of correlation length and other random field parameters, and directly generates 2D isotropic or anisotropic random field samples from sparse measurements. The proposed generator is highly efficient because simulation of a 2D random field is achieved by generation of a short 1D random vector. The effectiveness and applicability of the proposed generator are illustrated using isotropic and anisotropic numerical examples.
机译:近年来,越来越多地采用随机场理论来模拟空间变化的环境特性和水文地质数据。在二维(2D)随机分析中,沿不同方向的环境特性或水文地质数据的变化可能相似(即各向同性)或完全不同(即各向异性)。为了在随机分析中对空间各向同性或各向异性的变化进行建模,常规随机场发生器通常需要大量的测量数据来识别随机场参数(例如平均值,方差,相关结构以及不同方向上的相关长度)。但是,实践中可用的测量数据通常很少且有限。从稀疏测量估计的随机场参数可能不可靠,并且随后的随机场建模或随机分析可能会产生误导。这强调了从稀疏测量中生成二维各向同性或各向异性随机场的重要性和挑战。本文开发了一种新颖的二维随机场发生器,它不需要参数函数形式的相关函数或相关长度和其他随机场参数的估计,并且可以从稀疏测量中直接生成二维各向同性或各向异性的随机场样本。所提出的生成器是高效的,因为通过生成短的一维随机矢量来实现二维随机场的仿真。提出的发电机的有效性和适用性通过各向同性和各向异性数值示例进行了说明。

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    City Univ Hong Kong Dept Architecture & Civil Engn Kowloon Tat Chee Ave Hong Kong Peoples R China;

    Xi An Jiao Tong Univ Sch Human Settlements & Civil Engn Xian Shaanxi Peoples R China;

    Univ Hong Kong Dept Civil Engn Pokfulam Hong Kong Peoples R China;

    Hong Kong Univ Sci & Technol Dept Civil & Environm Engn Kowloon Clear Water Bay Hong Kong Peoples R China;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    Spatial data; Anisotropy; Karhunen-Loeve expansion; Compressive sensing;

    机译:空间数据;各向异性Karhunen-Loeve扩张;压缩感测;

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