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A novel approach for sand liquefaction prediction via local mean-based pseudo nearest neighbor algorithm and its engineering application

机译:基于局部均值的拟最近邻算法的砂土液化预测新方法及其工程应用

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摘要

The prediction method plays crucial roles in accurate prediction of sand liquefaction. Recently, machine learning has been widely used for prediction of sand liquefaction, and the Local Mean-based Pseudo Nearest Neighbor (LMPNN) algorithm, one of machine learning techniques, showed good performance in pattern recognition. In this study, we propose a sand liquefaction prediction model based on the LMPNN algorithm, which is the first work of applying the LMPNN algorithm to sand liquefaction prediction. Then, our proposed prediction model is used for evaluation of site liquefaction grade in Tongzhou District of China. And the comparison between our proposed prediction model with the liquefaction evaluation method in the Chinese code is made, which will provide an important approach to predicting the sand liquefaction grades for the major construction project sites. Extensive experiments on grade prediction demonstrate that the effectiveness of our proposed prediction model based on the LMPNN algorithm. In addition, shaking table test of an engineering site model is conducted for evaluating whether this engineering site model is liquefaction and non-liquefaction or not. And the experiment result of the shaking table test is the same as that of our proposed prediction model based on LMPNN algorithm, which further demonstrates the effectiveness of our proposed prediction model. Consequently, our proposed prediction model is proved to have a good prospect of engineering application in the liquefaction prediction.
机译:该预测方法在砂土液化的准确预测中起着至关重要的作用。近年来,机器学习已广泛用于预测砂土的液化,基于机器学习技术之一的基于局部均值的伪近邻算法(LMPNN)在模式识别方面表现出良好的性能。在这项研究中,我们提出了一种基于LMPNN算法的砂土液化预测模型,这是将LMPNN算法应用于砂土液化预测的第一项工作。然后,将本文提出的预测模型用于评价中国通州地区的场地液化等级。并将本文提出的预测模型与液化评价方法进行了中文代码的比较,这将为重要建设项目场地的砂土液化等级的预测提供重要方法。等级预测的大量实验表明,我们提出的基于LMPNN算法的预测模型的有效性。另外,进行了工程现场模型的振动台试验,以评估该工程现场模型是否为液化和非液化。振动台试验的实验结果与基于LMPNN算法的预测模型的结果相同,进一步证明了所提出的预测模型的有效性。因此,我们提出的预测模型被证明在液化预测中具有良好的工程应用前景。

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