首页> 外文期刊>Arabian journal of geosciences >Tenfold cross validation artificial neural network modeling of the settlement behavior of a stone column under a highway embankment
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Tenfold cross validation artificial neural network modeling of the settlement behavior of a stone column under a highway embankment

机译:公路路堤下石柱沉降行为的十倍交叉验证人工神经网络建模

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摘要

Construction of embankments in engineering structures on soft clay soils normally encounters problems related to excessive settlement issues. The conventional methods are inadequate to analyze and predict the surface settlement when the necessary parameters are difficult to determine in the field and in the laboratory. In this study, artificial neural network systems (ANNs) were used to predict settlement under embankment load using soft soil properties together with various geometric parameters as input for each stone column (SC) arrangement and embankment condition. Data from a highway project called Lebuhraya Pantai Timur2 in Terengganu, Malaysia, were investigated. The FEM package of Plaxis v8 program analysis was utilized. The actual angle of internal friction, spacing between SC, diameter of SC, length of SC, and height of embankment were used as the input parameters, and the settlement was used as the main output. Non cross validation (NCV) and tenfold cross validation (TFCV) were used to build the ANN model. The results of the TFCV model were more accurate than those of the NCV model. Comparisons made with the predictions of the Priebe model showed that the proposed TFCV model could provide better predictions than conventional methods.
机译:在软黏土上的工程结构中筑堤通常会遇到与过度沉降问题有关的问题。当在野外和实验室中难以确定必要的参数时,常规方法不足以分析和预测表面沉降。在这项研究中,人工神经网络系统(ANN)用于预测路堤荷载下的沉降,使用软土属性以及各种几何参数作为每个石柱(SC)布置和路堤条件的输入。调查了马来西亚登嘉楼市一个名为Lebuhraya Pantai Timur2的公路项目的数据。利用了Plaxis v8程序分析的FEM软件包。内摩擦的实际角度,SC的间距,SC的直径,SC的长度和路堤的高度被用作输入参数,沉降被用作主要输出。非交叉验证(NCV)和十倍交叉验证(TFCV)用于构建ANN模型。 TFCV模型的结果比NCV模型的结果更准确。与Priebe模型的预测结果进行的比较表明,所提出的TFCV模型比常规方法可以提供更好的预测结果。

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