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Evaluation of the liquefaction potential of soil deposits based on SPT and CPT test results

机译:基于SPT和CPT测试结果的土壤沉积液化潜力评价

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In the literature, predictions for the occurrence of nonlinear soil liquefaction in soil deposits have been investigated through numerous empirical methods. These methods which are also known as 'conventional techniques' were derived from several in-situ tests, laboratory tests and case records. An alternative general regression neural network (GRNN) model that addresses the collective knowledge built in a simplified procedure is proposed. To meet this objective, a total of 3895 case records including twelve soil and seismic parameters driven mostly from the cone penetration test (CPT) results are introduced into the model. The data includes the results of field tests from the two major earthquakes that took place in Turkey and Taiwan in 1999 and some of the desired input parameters are obtained from correlations existing in the literature. The soil liquefaction decision in terms of seismic demand and capacity is determined by recognized simplified approach, namely a stress-based method and a strain-based method. Furthermore, the liquefaction probability of soils with significant fines is tested with the so-called Chinese Criteria. The proposed GRNN model is developed in four phases, mainly: the identification phase, collection phase, implementation phase, and verification phase. An iterative procedure was followed to maximize the accuracy of the proposed model. The case records were divided randomly into testing, training, and validation datasets. The proposed GRNN model effectively explored the complex relationship between the introduced soil and seismic input parameters and validated the liquefaction decision.
机译:在文献中,通过许多经验方法研究了土壤沉积物中非线性土壤液化发生的预测。这些也称为“常规技术”的方法来自几种原位测试,实验室测试和案例记录。提出了一种解决简化过程内置的集体知识的替代一般回归神经网络(GRNN)模型。为满足这一目标,共有3895个案例记录,包括12种土壤和地震参数,主要来自锥形渗透试验(CPT)结果被引入模型中。这些数据包括1999年在土耳其和台湾发生的两大地震的现场测试结果,其中一些所需的输入参数是从文献中存在的相关性获得的。通过公认的简化方法确定地震需求和能力方面的土壤液化决定,即基于应力的方法和基于应变的方法。此外,通过所谓的汉语标准测试具有显着罚款的土壤的液化概率。所提出的GRNN模型在四个阶段开发,主要是:识别阶段,收集阶段,实施阶段和验证阶段。遵循迭代程序,以最大限度地提高所提出的模型的准确性。案例记录随机划分为测试,培训和验证数据集。所提出的GRNN模型有效地探索了引入的土壤和地震输入参数之间的复杂关系,并验证了液化决定。

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