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Data-driven simulation of two-dimensional cross-correlated random fields from limited measurements using joint sparse representation

机译:使用联合稀疏表示对有限测量的二维交叉相关随机场进行数据驱动模拟

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? 2023Cross-correlated random fields are an essential tool for simultaneously modeling both auto- and cross-correlation structures of spatial or temporal quantities in stochastic analysis of structures or systems. Existing cross-correlated random field simulation methods often require explicit information about random field parameters as inputs. However, in engineering practice, site-specific measurements of different quantities are often limited, non-co-located and irregularly distributed within a given site because of time, budget, or space constraints as well as missing data. It is notoriously difficult to properly estimate reliable random field parameters from limited non-co-located measurements with an irregular spatial pattern, particularly the auto-correlation and cross-correlation structures of a two-dimensional (2D) cross-correlated random field. To deal with this issue, this study proposes a novel 2D cross-correlated random field generator for simulating 2D cross-correlated random field samples (RFSs) directly from sparsely measured non-co-located data points with unequal measurement intervals. Using a joint sparse representation, auto- and cross-correlation structures of different spatial/temporal quantities are exploited simultaneously from sparse measurements, followed by the generation of cross-correlated RFSs using Bayesian compressive sampling (BCS) and Markov chain Monte Carlo (MCMC) simulation in a data-driven manner. The proposed generator is demonstrated using 2D data of two correlated geotechnical properties. The results indicate that the RFSs generated using the proposed method from sparse measurements can properly characterize the spatial auto- and cross-correlation structures of different geotechnical properties.
机译:?2023交叉相关随机场是在结构或系统的随机分析中同时对空间或时间量的自相关结构和互相关结构进行建模的重要工具。现有的交叉关联随机场仿真方法通常需要有关随机场参数的显式信息作为输入。然而,在工程实践中,由于时间、预算或空间限制以及数据缺失,不同数量的特定地点测量通常是有限的、非共址的和不规则分布在给定的地点内。众所周知,从具有不规则空间模式的有限非共定位测量中正确估计可靠的随机场参数是很困难的,特别是二维 (2D) 交叉相关随机场的自相关和互相关结构。针对这一问题,该文提出一种新型的二维交叉相关随机场发生器,用于模拟二维交叉相关随机场样本(RFS),该样本直接来自测量间隔不等的稀疏测量非共址数据点。使用联合稀疏表示,从稀疏测量中同时利用不同空间/时间量的自相关和互相关结构,然后使用贝叶斯压缩采样(BCS)和马尔可夫链蒙特卡罗(MCMC)模拟以数据驱动的方式生成交叉相关的RFS。使用两个相关岩土工程特性的二维数据演示了所提出的生成器。结果表明,利用所提方法从稀疏测量中生成的RFS能够正确表征不同岩土性质的空间自相关结构和互相关结构。

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