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Identification of ground motion intensity measure and its application for predicting soil liquefaction potential based on the Bayesian network method

机译:基于贝叶斯网络方法预测土壤液化潜力的地面运动强度测量的识别及其应用

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摘要

In an attempt to reduce the parameter and model uncertainties of the Bayesian network model for predicting earthquake-induced soil liquefaction, 31 candidate intensity measures were investigated by the analyses of correlation, efficiency, proficiency, and sufficiency based on a large database of historical ground motion records. Two new Bayesian network models were developed using the identified intensity measures by combining the measured liquefaction-related data and the prior knowledge of soil liquefaction based on a large dataset of standard penetration tests. The results reveal that the root-mean-square acceleration is the optimal intensity measure for assessing soil liquefaction, whereas the peak ground acceleration is second best for liquefaction potential evaluation. The two new Bayesian network models with interpretability both in physical mechanisms and mathematics perform better than both the existing Bayesian network model and the Idriss and Boulanger model. The possible bias in this study is also discussed and pinpoints the importance of quantifying excess pore pressure development in the evaluation of soil liquefaction.
机译:为了减少贝叶斯网络模型的参数和模型不确定性,以预测地震诱导的土壤液化,通过基于历史地面运动的大型数据库来研究31种候选强度措施记录。通过基于标准穿透试验的大型数据集结合测量的液化相关数据和土壤液化的先前知识,使用所识别的强度测量来开发出两个新的贝叶斯网络模型。结果表明,根均方加速是评估土壤液化的最佳强度度量,而峰接地加速是液化潜在评价的第二次。这两个新的贝叶斯网络模型,具有物理机制和数学的解释性,而不是现有贝叶斯网络模型和idriss和Boulanger模型的更好。还讨论了该研究的可能偏见,并确定了定量过量孔隙压力发育在土壤液化评价中的重要性。

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