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Optimizing the prediction accuracy of load-settlement behavior of single pile using a self-learning data mining approach

机译:使用自学习数据挖掘方法优化单桩荷载沉降行为的预测精度

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Pile foundations usually are used when the upper soil layers are soft clay and, hence, unable to support the structures’ loads. Piles are needed to carry these loads deep into the hard soil layer. Therefore, the safety and stability of pile-supported structures depends on the behavior of the piles. Additionally, an accurate prediction of the piles’ behavior is very important to ensure satisfactory performance of the structures. Although many methods in the literature estimate the settlement of the piles both theoretically and experimentally, methods for comprehensively predicting the load-settlement of piles are very limited. This study develops a new data mining approach called self-learning support vector machine (SL-SVM) to predict the load-settlement behavior of single piles. SL-SVM performance is investigated using 446 training data points and 53 test data points of cone penetration test (CPT) data obtained from the previous literature. The actual prediction accuracy is then compared to other prediction methods using three statistical measurements, including mean absolute error (MAE), coefficient of correlation (R), and root mean square error (RMSE). The obtained results show that SL-SVM achieves better accuracy than does LS-SVM and BPNN. This confirms the capability of the proposed data mining method to model the accurate load-settlement behavior of single piles through CPT data. The paper proposes beneficial insights for geotechnical engineers involved in estimating pile behavior.
机译:通常在上部土壤层为软粘土时使用桩基,因此无法支撑结构的荷载。需要桩来将这些载荷深深地运送到坚硬的土壤层中。因此,桩支撑结构的安全性和稳定性取决于桩的性能。此外,准确预测桩的行为对于确保结构的令人满意的性能非常重要。尽管文献中有许多方法在理论上和实验上都估计了桩的沉降,但是对桩的荷载沉降进行综合预测的方法却非常有限。这项研究开发了一种称为自学习支持向量机(SL-SVM)的新数据挖掘方法,以预测单桩的荷载沉降行为。使用从先前文献中获得的锥入度测试(CPT)数据的446个训练数据点和53个测试数据点来研究SL-SVM性能。然后,使用三种统计测量将实际的预测精度与其他预测方法进行比较,包括平均绝对误差(MAE),相关系数(R)和均方根误差(RMSE)。所得结果表明,SL-SVM的精度优于LS-SVM和BPNN。这证实了所提出的数据挖掘方法能够通过CPT数据对单桩的精确荷载-沉降行为进行建模的能力。本文为参与估算桩体行为的岩土工程师提出了有益的见解。

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