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Evaluation of low degree polynomial kernel support vector machines for modelling Pore-water pressure responses

机译:评估孔隙水压力响应的低次多项式核支持向量机的评估

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Pore-water pressure (PWP) is influenced by climatic changes, especially rainfall. These changes may affect the stability of, particularly unsaturated slopes. Thus monitoring the changes in PWP resulting from climatic factors has become an important part of effective slope management. However, this monitoring requires field instrumentation program, which is resource and labour expensive. Recently, soft computing modelling has become an alternative. Low degree polynomial kernel support vector machine (SVM) was evaluated in modelling the PWP changes. The developed model used pore-water pressure and rainfall data collected from an instrumented slope. Wrapper technique was used to select input features and k-fold cross validation was used to calibrate the model parameters. The developed model showed great promise in modelling the pore-water pressure changes. High correlation, with coefficient of determination of 0.9694 between the predicted and observed changes was obtained. The one degree polynomial SVM model yielded competitive result, and can be used to provide lead time records of PWP which can aid in better slope management.
机译:孔隙水压力(PWP)受气候变化(尤其是降雨)的影响。这些变化可能会影响尤其是非饱和斜坡的稳定性。因此,监测由气候因素引起的PWP变化已成为有效边坡管理的重要组成部分。然而,这种监视需要现场仪器程序,这是资源和人工上昂贵的。最近,软计算建模已成为一种选择。在对PWP变化进行建模时,评估了低阶多项式内核支持向量机(SVM)。开发的模型使用了从仪器斜坡收集的孔隙水压力和降雨数据。包装技术用于选择输入特征,k倍交叉验证用于校准模型参数。所开发的模型在模拟孔隙水压力变化方面显示出巨大的希望。获得高相关性,预测和观察到的变化之间的确定系数为0.9694。一阶多项式SVM模型产生了竞争结果,可用于提供PWP的提前期记录,从而有助于更好的边坡管理。

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