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Preliminary Discussion Regarding SVM Kernel Function Selection in the Twofold Rock Slope Prediction Model

机译:关于双重岩质边坡预测模型中SVM核函数选择的初步探讨。

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The kernel function, which is an important component of support vector machine (SVM) theory, directly affects the results of a prediction model. When establishing an effective prediction slope model, analysis factors such as slope angle, slope height, potential sliding body height and inclination, and cohesion and friction angle of each potential sliding surface need to be considered. As the results of an example design show, there is an appropriate regularity between analysis factors and kernel functions. For example, the radial basis function (RBF) kernel function is suitable for the geometry factors of a rock slope analysis, whereas the Sigmoid kernel function is better than RBF for analyzing the cohesion and friction angle of the back potential sliding surface; likewise, the linear kernel function is suitable for the material factors of a bottom sliding surface analysis. For these reasons, a combination of kernel functions is necessary for an overall analysis of complex rock slope problems. A comprehensive kernel function based on the analysis of different factors is proposed in this paper. Notably, the maximum absolute error of the test results using this comprehensive kernel function is only 0.1698, meaning that a comprehensive kernel function better embodies the failure mechanism of the rock slope when building a support vector machine (SVM) prediction model. Furthermore, the application results for the right bank slope of Dagang Mountain show that the comprehensive kernel function can reflect actual instability. (C) 2015 American Society of Civil Engineers.
机译:核函数是支持向量机(SVM)理论的重要组成部分,它直接影响预测模型的结果。在建立有效的预测坡度模型时,需要考虑诸如坡度角,坡度高度,潜在滑动体高度和倾角以及每个潜在滑动面的内聚力和摩擦角等分析因素。如示例设计的结果所示,分析因素与内核函数之间存在适当的规律性。例如,径向基函数(RBF)核函数适用于岩石边坡分析的几何因子,而Sigmoid核函数比RBF更好,可以分析背电滑动面的内聚力和摩擦角。同样,线性核函数适用于底部滑动表面分析的材料因子。由于这些原因,对于复杂的岩石边坡问题的整体分析,必须结合内核函数。提出了一种基于不同因素分析的综合核函数。值得注意的是,使用该综合核函数的测试结果的最大绝对误差仅为0.1698,这意味着在构建支持向量机(SVM)预测模型时,综合核函数可以更好地体现岩石边坡的破坏机理。此外,大港山右岸边坡的应用结果表明,综合核函数可以反映实际的不稳定性。 (C)2015年美国土木工程师学会。

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