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Identification of geotechnical dynamical systems and function estimation: Modeling and estimation.

机译:识别岩土动力系统和功能估计:建模和估计。

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摘要

A method to identify mechanical properties of geotechnical dynamical systems is presented herein. The function estimation problem is defined, and two classes of estimators, Bayes-type and minimax-type, are introduced. Special attention is paid to a minimax-type estimator, called the nonlinear thresholding estimator. This estimator is nearly-minimax over every Besov function space due to the nonlinearity and the sparse representation provided by the wavelet bases. Spatially inhomogeneous functions are highlighted since many signals and functions pertaining to geotechnical dynamical systems are of this class. The necessity of a nonlinear estimator and a sparse representation for the function estimation problem of this class of functions is discussed.; Three data sets of geotechnical dynamical systems are studied. They are (1) microseismic data, (2) vertical seismic array data, and (3) seismic slope displacement experiment data, and the purposes of the corresponding identification problems are (1) to identify the microseismic source functions, (2) to identify the soil degradation behaviors, and (3) to identify the failure mechanisms of the soil slopes, respectively.; According to their nature, the above three identification problems are classified into the following three categories: (1) a time-invariant linear system, (2) a slowly time-varying system, and (3) a rapidly time-varying system. Three different models and estimators are proposed to solve the problems using the function estimation approach, i.e. the three identification problems are first converted into function estimation problems, and a Bayes-type or minimax-type estimator is applied to estimate the target functions.; The results of the microseismic case study indicate that a nonparametric Besov-space model with the nonlinear thresholding estimator outperforms Bayes-type estimators. The thresholding estimator can eliminate high-frequency noise without destroying spatially inhomogeneous features in the microseismic source functions, while no Bayes-type estimator can achieve this.; The results of the vertical-array case study indicate that a time-varying infinite-impulse-response filter model and an enhanced Bayes-type estimator with a random-walk function model are appropriate for non-liquefied cases. The conclusions of the identification agree with the common understanding about soil degradation behaviors and results of previous research. Moreover, non-instantaneously recoverable soil degradation is found for several vertical array data sets.; An approach based on a semi-parametric model and the nonlinear thresholding estimator is proposed to study the liquefaction case in the vertical-array data set and the seismic slope displacement experiments. The identification results are consistent with the results of previous research and experimental observations.
机译:本文提出了一种识别岩土动力系统机械性能的方法。定义了函数估计问题,并介绍了两类估计器:贝叶斯型和极小极大型。特别注意最小极大型估计器,称为非线性阈值估计器。由于非线性和小波基提供的稀疏表示,该估计器在每个Besov函数空间上几乎都是极小值。空间不均匀的功能被突出显示,因为与岩土动力系统有关的许多信号和功能都属于此类。讨论了这类函数的函数估计问题的非线性估计器和稀疏表示的必要性。研究了岩土动力系统的三个数据集。它们是(1)微震数据,(2)垂直地震阵列数据和(3)地震边坡位移实验数据,并且相应的识别问题的目的是(1)识别微震源函数,(2)识别(3)分别识别土质边坡的破坏机理;根据其性质,将上述三个识别问题分为以下三类:(1)时不变线性系统,(2)时变缓慢的系统和(3)时变快速的系统。提出了三种不同的模型和估计器来解决使用函数估计方法的问题,即首先将三个识别问题转换为函数估计问题,然后使用贝叶斯型或极小极大型估计器来估计目标函数。微震案例研究的结果表明,具有非线性阈值估计量的非参数Besov空间模型的性能优于贝叶斯类型的估计量。阈值估计器可以消除高频噪声,而不会破坏微震源函数中空间上不均匀的特征,而贝叶斯型估计器则无法做到这一点。垂直阵列案例研究的结果表明,时变的无限冲激响应滤波器模型和带有随机游走函数模型的增强型贝叶斯估计器适用于非液化案例。鉴定的结论与对土壤退化行为和先前研究结果的共识一致。此外,对于几个垂直阵列数据集,发现了非即时可恢复的土壤退化。提出了一种基于半参数模型和非线性阈值估计器的方法来研究垂直阵列数据集中的液化情况和地震边坡位移实验。鉴定结果与以前的研究结果和实验观察结果一致。

著录项

  • 作者

    Ching, Jian-Ye.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Engineering Civil.; Applied Mechanics.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;应用力学;
  • 关键词

  • 入库时间 2022-08-17 11:46:22

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