基于并排 SPT-CPT 数据库的贝叶斯网络对地震诱发的液化进行概率评估

Han Xiao, W. Gong, C. H. Juang
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引用次数: 0

摘要

为了评估地震引发液化的概率,通常会进行现场测试,如标准贯入试验(SPT)和锥体贯入试验(CPT)。然而,所采用的模型很少尝试同时利用 SPT 和 CPT 数据。在本研究中,首先建立了历史地震遗址的 SPT-CPT 并排数据库,然后构建了贝叶斯网络模型,在此数据库的基础上同时利用 SPT 和 CPT 数据预测土壤液化的概率。接下来,将对文献中基于 SPT 和 CPT 的六种传统液化模型和基于贝叶斯网络的两种模型进行比较研究,以说明所开发的基于贝叶斯网络的土壤液化概率模型优于其他模型。需要指出的是,具有两个现场测试的液化场地很少,而且并排的 SPT-CPT 数据可能不完整,这给应用所开发的贝叶斯网络模型带来了挑战。为解决这一问题,分析了 SPT 和 CPT 数据之间的相关性,并将这些相关性进一步纳入贝叶斯网络模型,从而得出了修正的贝叶斯网络模型。最后,讨论了不完整的 SPT-CPT 数据中缺失数据比例对液化预测精度的影响。
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Probabilistic Evaluation of Earthquake-Induced Liquefaction Using Bayesian Network Based on A Side-by-Side SPT-CPT Database
In situ tests such as standard penetration test (SPT) and cone penetration test (CPT) are often conducted to evaluate the probability of earthquake-induced liquefaction. However, the models adopted have seldom attempted to utilize SPT and CPT data simultaneously. In this study, a side-by-side SPT-CPT database at historical earthquake sites is established; then, a Bayesian network model is constructed to predict the probability of soil liquefaction based on this database, with which the SPT and CPT data are utilized simultaneously. Next, comparative studies are undertaken to illustrate the superiority of the Bayesian network-based probabilistic soil liquefaction model developed over other models, in terms of six SPT- and CPT-based conventional liquefaction models in the literature and two Bayesian network-based models. It should be noted that the liquefaction sites with two in situ tests are scarce and side-by-side SPT-CPT data can be incomplete, which leads to challenges in applying the Bayesian network model developed. To address this problem, correlations between SPT and CPT data are analyzed, and these correlations are further included in the Bayesian network model; as a result, a modified Bayesian network model is reached. Finally, the influence of the proportion of missing data in the incomplete SPT-CPT data on the liquefaction prediction accuracy is discussed.
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