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Prediction of Bearing Capacity of Stone Columns Placed in Soft Clay Using SVR Model

机译:用SVR模型预测软土中石柱的承载力。

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It is well known that the construction on soft clayey soil is always a great challenge to the geotechnical engineers. The soft clay poses high compressibility and low bearing capacity. It is a common practice to improve the properties of the soft clay prior to any construction on it. In this respect, ground improvement by stone columns is a usual choice of the geotechnical engineers. The stone columns increase the bearing capacity and reduce the settlement of the soft clay. Many theories are developed to determine the bearing capacity of the soft soil reinforced with stone columns. However, most of the theories are site-specific and do not show a very good match with the field observations. In this study, a large numbers of data were collected from previously reported studies from various parts of the globe and an empirical formula based on support vector regression (SVR) technique for the determination of the ultimate bearing capacity of the stone columns is achieved. Two different techniques, namely tenfold cross-validation (q(TFCV)) and non-cross-validation (q(NCV)), are presented for the construction of the SVR model. It is observed that the SVR method gives a better prediction than artificial neural network method. Laboratory experiments were conducted to validate the SVR-ERBF empirical approach. The formula is also validated with two field observations by two other investigators.
机译:众所周知,在软质黏土上施工始终是对岩土工程师的巨大挑战。软粘土具有高可压缩性和低承载能力。在软粘土上进行任何施工之前,通常先改善其性能。在这方面,通过石柱进行地面改良是岩土工程师的通常选择。石柱增加了承载能力并减少了软土的沉降。发展了许多理论来确定用石柱加固的软土的承载力。但是,大多数理论是针对特定地点的,与现场观察结果并不十分吻合。在这项研究中,从全球各地先前报道的研究中收集了大量数据,并获得了基于支持向量回归(SVR)技术确定石柱极限承载力的经验公式。为构建SVR模型,提出了两种不同的技术,即十重交叉验证(q(TFCV))和非交叉验证(q(NCV))。可以看出,SVR方法比人工神经网络方法能提供更好的预测。进行了实验室实验以验证SVR-ERBF的经验方法。该公式还通过其他两位研究人员的两次现场观察得到了验证。

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