首页> 外文期刊>Soil Dynamics and Earthquake Engineering >An efficient PDE-constrained stochastic inverse algorithm for probabilistic geotechnical site characterization using geophysical measurements
【24h】

An efficient PDE-constrained stochastic inverse algorithm for probabilistic geotechnical site characterization using geophysical measurements

机译:一种利用地球物理测量的概率岩土性站点表征的高效PDE受限的随机逆算法

获取原文
获取原文并翻译 | 示例
           

摘要

This paper develops an efficient, PDE-constrained stochastic inverse analysis methodology to probabilistically estimate site-specific elastic parameters of soil from sparse geophysical test measurements by accounting for the uncertain spatial variability of soil deposits and any measurement uncertainty associated with the geophysical experiment. Hypothesizing the soil parameters at any site to be three-dimensional, heterogeneous, anisotropic random fields, the methodology first probabilistically simulates the geophysical experiment using the finite element method in conjunction with a stochastic collocation approach to compute statistical measures of a quantity of interest such as the soil displacement or acceleration throughout the soil domain. To this end, the random fields are discretized into finite number of random variables by utilizing a Gaussian mixture model that allows for mimicking the soil formation process. The parameters of the random fields are initially assumed based on the generic data available in the literature for the geological soil type. The stochastic collocation approach utilizes a recently developed non-product quadrature method, conjugate unscented transformation, to accurately estimate the statistical moments corresponding to the model response variables in a computationally efficient manner. The methodology, then, employs a minimum variance framework to fuse the finite element model output with sparse real measurements to update the initially assumed soil statistical parameters. The methodology is illustrated through numerical geophysical experiments at a fictitious geotechnical site and is verified with three very different true profiles of the soil modulus. Moreover, a probabilistic sensitivity analysis is carried out by varying the number and locations of sensors. It is observed that by judiciously selecting the sensor locations, following a set of information maps, obtained by exploiting the equations of the minimum variance scheme, more information may be extracted from any geophysical experiments, leading to less uncertain estimates of the soil parameters.
机译:本文通过算用于土壤沉积物的不确定空间可变性以及与地球物理实验相关的任何测量不确定性,从稀疏地球物理测试测量产生高效,PDE受限的随机逆分析方法,从稀疏的地球物理测试测量和与地球物理实验相关的任何测量不确定性的情况下,从稀疏的地球物理试验测量。假设任何部位的土壤参数是三维,异构,各向异性的随机场,方法第一概率地模拟了使用有限元方法与随机搭配方法结合计算的统计测量,例如整个土壤域的土壤位移或加速度。为此,通过利用高斯混合模型,将随机字段分成有限数量的随机变量,该模型允许模仿土壤形成过程。最初基于地质土壤类型的文献中可用的通用数据来初始假设随机字段的参数。随机搭配方法利用最近开发的非产品正交方法,共轭无人的转换,以准确地估计与计算有效的方式对应于模型响应变量的统计矩。然后,该方法采用最小方差框架来熔化具有稀疏实际测量的有限元模型输出,以更新最初假设的土壤统计参数。通过虚拟地理位置的数值地球物理实验说明该方法,并用三种非常不同的土壤模量验证了三种非常不同的真实曲线。此外,通过改变传感器的数量和位置来执行概率敏感性分析。观察到,通过在通过利用最小方差方案的方程获得的一组信息映射之后,可以从明智地选择传感器位置,可以从任何地球物理实验中提取更多信息,导致土壤参数的不确定估计较少。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号