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Load-settlement behavior modeling of single piles using artificial neural networks and CPT data

机译:基于人工神经网络和CPT数据的单桩荷载沉降行为建模

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摘要

Pile foundations are usually used when the conditions of the upper soil layers are weak and unable to support the super-structural loads. Piles carry these super-structural loads deep into the ground. Therefore, the safety and stability of pile-supported structures depends largely on the behavior of the piles. In addition, accurate prediction of pile behavior is necessary to ensure appropriate structural and serviceability performance. In this paper, an ANN model is developed for predicting pile behavior based on the results of cone penetration test (CPT) data. Approximately 500 data sets, obtained from the published literature, are used to develop the ANN model. The paper compares the predictions obtained by the ANN with those given by a number of traditional methods and it is observed that the ANN model significantly outperforms the traditional methods. An important advantage of the ANN model is that the complete load-settlement relationship is captured. Finally, the paper proposes a series of charts for predicting pile behavior that will be useful for pile design. (C) 2017 Published by Elsevier Ltd.
机译:当上部土层条件较弱且无法支撑超结构荷载时,通常使用桩基。桩将这些超结构荷载承载到地下深处。因此,桩支撑结构的安全性和稳定性在很大程度上取决于桩的性能。另外,必须对桩的行为进行准确的预测,以确保适当的结构和使用性能。在本文中,基于圆锥体渗透测试(CPT)数据的结果,开发了一种用于预测桩行为的ANN模型。从已出版的文献中获得大约500个数据集,用于开发ANN模型。本文将ANN获得的预测与许多传统方法给出的预测进行了比较,发现ANN模型明显优于传统方法。 ANN模型的一个重要优点是可以捕获完整的载荷-沉降关系。最后,本文提出了一系列图表,用于预测桩的行为,这将对桩的设计很有用。 (C)2017由Elsevier Ltd.发布

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