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Landslide displacement prediction based on variational mode decomposition and WA-GWO-BP model

机译:基于变分模式分解的滑坡位移预测和WA-GWO-BP模型

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Many models have been widely used in landslide displacement prediction. However, few studies have proposed quantitative prediction formulas. Thus, the variational mode decomposition (VMD) theory was applied to decompose the "step-like" displacement of landslides into trend displacement, periodic displacement, and random displacement. Then, a novel prediction model based on wavelet analysis (WA) and a back-propagation neural network (BPNN) optimized by the grey wolf optimizer (GWO) algorithm was proposed (the GWO-BP model) to obtain a prediction formula. In this model, a polynomial function was first used to predict the trend displacement. All the hidden periods of periodic displacement were calculated using the WA method, and a trigonometric function was applied to predict the periodic displacement. In addition, based on an analysis of the grey relational degree (GRD), the main triggering factors, which can affect the random displacement, were determined. Then, the mathematical connection between random displacement and triggering factors was obtained with the GWO-BP model. Finally, all the predicted values were superposed to achieve the prediction cumulative displacement based on the time series model. The Outang landslide in the Three Gorges Reservoir area, China, was taken as an example, and the displacement data of monitoring sites MJ01 and MJ02 from December 2010 to December 2016 were selected for analysis. The results indicated that the root mean square errors (RMSE) between the real displacement values and the prediction values obtained using the formula were 14.79 mm and 12.59 mm, respectively. The correlation coefficient R values were 0.99 and 0.93, respectively. This model can be used to obtain the landslide displacement formula and provide a solid basis for developing early warning systems for landslides.
机译:许多型号已广泛用于滑坡位移预测。然而,很少有研究提出了定量预测公式。因此,应用变分模式分解(VMD)理论以将“阶梯状”移位分解为趋势位移,周期性位移和随机位移。然后,提出了一种基于小波分析(WA)和由灰狼优化器(GWO)算法优化的背传播神经网络(BPNN)的新型预测模型(GWO-BP模型)以获得预测公式。在该模型中,首先使用多项式函数来预测趋势位移。使用WA方法计算所有隐藏的周期性位移时段,并且应用了三角函数来预测周期性位移。另外,基于对灰色关系度(GRD)的分析,确定了可能影响随机位移的主要触发因子。然后,利用GWO-BP模型获得随机位移和触发因子之间的数学连接。最后,叠加所有预测值以基于时间序列模型实现预测累积位移。中国三峡库区的Outang Landlide是作为一个例子,并选择了2010年12月至2016年12月到2016年12月的监测网站MJ01和MJ02的位移数据进行分析。结果表明,使用该公式获得的真实位移值和预测值之间的根均方误差(RMSE)分别为14.79mm和12.59mm。相关系数R值分别为0.99和0.93。该模型可用于获得滑坡位移公式,并为开发滑坡的预警系统提供坚实的基础。

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