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Comparison of support vector machines kernel functions for pore-water pressure modeling

机译:孔隙水压建模的支持向量机核函数的比较

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Modeling pore-water pressure (PWP) responses to rainfall is an important part of monitoring hydrological behavior of hill slope. Of recent, soft computing techniques had been used to model these responses. Using support vector regression (SVR) these responses can be modeled with very good accuracy. However, selection of appropriate kernel for such modeling is a necessity. Using PWP and rainfall data from an instrumented slope, four kernel function (linear, sigmoid, polynomial and radial basis function) were used to develop four Models to predict PWP. Input features were selected using a wrapper algorithm, and the SVR meta-parameters were calibrated using k-fold cross validation and grid search. The radial basis function (RBF) was found to be the most suitable for modeling PWP responses, due to its competitive results and less complexity in implementation.
机译:孔隙水压(PWP)响应降雨是监测山坡水文行为的重要组成部分。最近,软计算技术已被用于模拟这些响应。使用支持向量回归(SVR)这些响应可以以非常好的准确度为模拟。然而,为这种建模选择适当的内核是必需的。使用来自仪表斜率的PWP和降雨数据,用于开发四种模型以预测PWP的四个核心功能(线性,秒形,多项式和径向基函数)。使用包装器算法选择输入功能,使用k折叠交叉验证和网格搜索校准SVR元参数。由于其竞争性结果和实施方案不太复杂,发现径向基函数(RBF)是最适合建模PWP响应的最适合。

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