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Probabilistic analysis of consolidation that considers spatial variability using the stochastic response surface method

机译:使用随机响应面法的考虑空间变异性的固结概率分析

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To obtain more accurate and reasonable results in the analyses of soil consolidation, the spatial variability of the soil properties should be considered. In this study, we analyzed the consolidation by vertical drains for soil improvement considering the spatial variability of the coefficients of consolidation. The coefficients for the variation in the vertical and horizontal coefficients of consolidation in Yeonjongdo, South Korea were evaluated, and the probability density function (PDF) was assumed by the Anderson-Darling goodness-of-fit test. Standard Gaussian random fields were generated based on a Karhunen-Loeve expansion, and then transformed using Hermite polynomials in the random field with the log-Gaussian PDF of the coefficient of consolidation. The average degree of consolidation was subsequently calculated using the finite difference method coupled with log-Gaussian random fields. In addition, the stochastic response surface method (SRSM) was applied for the efficient probabilistic uncertainty propagation. A sensitivity analysis was performed for the input parameters of the random field, and the spatial variability was considered using random variables from the Karhunen-Loeve expansion as the input data for the SRSM. The results indicated that when considering the spatial variability of soil properties, the probability of failure for the target degree of consolidation was smaller when the correlation distance was taken into account than when it was not. Additionally, the probability of failure decreased when the correlation distance decreased. Compared with the Monte Carlo simulation (MCS) results, the SRSM analysis can achieve results of similar accuracy to those obtained using the MCS analysis with a sample size of 100,000 (numerical runs), and a third-order SRSM expansion with only 333 numerical runs is sufficient for obtaining the probability with errors less than 0.01.
机译:为了在土壤固结分析中获得更准确和合理的结果,应考虑土壤特性的空间变异性。在这项研究中,我们考虑了固结系数的空间变异性,分析了垂直排水沟对土壤改良的固结。评估了韩国延壤岛的垂直和水平固结系数变化的系数,并通过安德森-达林拟合优度检验假设了概率密度函数(PDF)。基于Karhunen-Loeve展开生成标准高斯随机场,然后使用合并系数的log-Gaussian PDF在随机场中使用Hermite多项式进行变换。随后,使用有限差分法结合对数-高斯随机场来计算平均固结度。此外,随机响应面法(SRSM)被用于有效的概率不确定性传播。对随机场的输入参数进行了敏感性分析,并使用Karhunen-Loeve展开中的随机变量作为SRSM的输入数据,考虑了空间变异性。结果表明,当考虑土壤特性的空间变异性时,考虑相关距离比不考虑相关距离时,目标固结度的破坏概率较小。另外,当相关距离减小时,故障的可能性减小。与蒙特卡洛模拟(MCS)结果相比,SRSM分析可获得的结果与使用MCS分析获得的结果具有相似的准确性,其中样本量为100,000(数字运行),而三阶SRSM扩展仅包含333个数字运行足以获得误差小于0.01的概率。

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