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Sampling bias in evaluating the probability of seismically induced soil liquefaction with SPT & CPT case histories.

机译:SPT和CPT案例历史在评估地震引起的土壤液化可能性时的抽样偏差。

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摘要

Several deterministic and probabilistic methods are used to evaluate the probability of seismically induced liquefaction of a soil. The probabilistic models usually possess some uncertainty in that model and uncertainties in the parameters used to develop that model. These model uncertainties vary from one statistical model to another. Most of the model uncertainties are epistemic, and can be addressed through appropriate knowledge of the statistical model. One such epistemic model uncertainty in evaluating liquefaction potential using a probabilistic model such as logistic regression is sampling bias. Sampling bias is the difference between the class distribution in the sample used for developing the statistical model and the true population distribution of liquefaction and non-liquefaction instances. Recent studies have shown that sampling bias can significantly affect the predicted probability using a statistical model. To address this epistemic uncertainty, a new approach was developed for evaluating the probability of seismically-induced soil liquefaction, in which a logistic regression model in combination with Hosmer-Lemeshow statistic was used. This approach was used to estimate the population (true) distribution of liquefaction to non-liquefaction instances of standard penetration test (SPT) and cone penetration test (CPT) based most updated case histories. Apart from this, other model uncertainties such as distribution of explanatory variables and significance of explanatory variables were also addressed using KS test and Wald statistic respectively. Moreover, based on estimated population distribution, logistic regression equations were proposed to calculate the probability of liquefaction for both SPT and CPT based case history. Additionally, the proposed probability curves were compared with existing probability curves based on SPT and CPT case histories.
机译:几种确定性和概率性方法用于评估地震引起的土壤液化的可能性。概率模型通常在该模型中具有一些不确定性,并且在用于开发该模型的参数中具有不确定性。这些模型的不确定性因一种统计模型而异。大多数模型不确定性都是认知的,可以通过适当了解统计模型来解决。使用概率模型(例如逻辑回归)评估液化潜力的这种认知模型不确定性之一是采样偏差。抽样偏差是指用于开发统计模型的样本中的类别分布与液化实例和非液化实例的真实总体分布之间的差异。最近的研究表明,使用统计模型可以使抽样偏差显着影响预测概率。为了解决这种认识上的不确定性,开发了一种新方法来评估地震引起的土壤液化的可能性,其中使用了Logistic回归模型结合Hosmer-Lemeshow统计数据。该方法用于估计基于最新更新案例历史的标准渗透率测试(SPT)和锥形渗透率测试(CPT)的非液化实例的液化总体(真实)分布。除此之外,还分别使用KS检验和Wald统计量解决了其他模型不确定性,例如解释变量的分布和解释变量的重要性。此外,基于估计的人口分布,提出了逻辑回归方程来计算基于SPT和CPT的病例历史的液化概率。另外,将所建议的概率曲线与基于SPT和CPT案例历史的现有概率曲线进行了比较。

著录项

  • 作者

    Jain, Abhishek.;

  • 作者单位

    Michigan Technological University.;

  • 授予单位 Michigan Technological University.;
  • 学科 Engineering Geological.;Engineering Civil.
  • 学位 M.S.
  • 年度 2012
  • 页码 71 p.
  • 总页数 71
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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