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Generalized Regression Neural Networks with K-Fold Cross-Validation for Displacement of Landslide Forecasting

机译:K折交叉验证的广义回归神经网络在滑坡预测中的应用

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This paper proposes a generalized regression neural networks (GRNNS) with K-fold cross-validation (GRNNSK) for predicting the displacement of landslide. Furthermore, correlation analysis is a fundamental analysis to find the potential input variables for a forecast model. Pearson cross-correlation coefficients (PCC) and mutual information (MI) are applied in the paper. Test on the case study of Liangshuijing (LSJ) landslide in the Three Gorges reservoir in China demonstrate the effectiveness of the proposed approach.
机译:本文提出了一种具有K折交叉验证(GRNNSK)的广义回归神经网络(GRNNS),用于预测滑坡的位移。此外,相关性分析是找到预测模型的潜在输入变量的基础分析。本文应用了Pearson互相关系数(PCC)和互信息(MI)。通过对中国三峡水库凉水井(LSJ)滑坡的案例研究,证明了该方法的有效性。

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