Wang Haiying, Ao Yang, Wang Chenguang, Zhang Yingzhi, Zhang Xiaofeng
School of Construction Machinery, Chang'an University, Xi'an, 710064, China.
Shaanxi Transportation Holding Group Co., Ltd., Xi'an, 710075, China.
Sci Rep. 2024 Apr 22;14(1):9203. doi: 10.1038/s41598-024-59517-2.
Addressing the limitations of existing landslide displacement prediction models in capturing the dynamic characteristics of data changes, this study introduces a novel dynamic displacement prediction model for landslides. The proposed method combines Variational Mode Decomposition (VMD) with Sparrow Search Optimization (SSO) and Long Short-Term Memory (LSTM) techniques to formulate a comprehensive VMD-SSO-LSTM model. Through the application of VMD, the method dissects cumulative displacement and rainfall data, thereby extracting distinct components such as trend, periodicity, and fluctuation components for displacement, as well as low-frequency and high-frequency components for rainfall. Furthermore, leveraging Gray Correlational Analysis, the interrelationships between the periodic component of displacement and the low-frequency component of rainfall, as well as the fluctuation component of displacement and the high-frequency component of rainfall, are established. Building upon this foundation, the SSO-LSTM model dynamically predicts the interrelated displacement components, synthesizing the predicted values of each component to generate real-time dynamic forecasts. Simulation results underscore the effectiveness of the proposed VMD-SSO-LSTM model, indicating root-mean-square error (RMSE) and mean absolute percentage error (MAPE) values of 1.2329 mm and 0.1624%, respectively, along with a goodness of fit (R) of 0.9969. In comparison to both back propagation (BP) prediction model and LSTM prediction model, the VMD-SSO-LSTM model exhibits heightened predictive accuracy.
针对现有滑坡位移预测模型在捕捉数据变化动态特征方面的局限性,本研究引入了一种新型的滑坡动态位移预测模型。所提出的方法将变分模态分解(VMD)与麻雀搜索优化(SSO)以及长短期记忆(LSTM)技术相结合,构建了一个综合的VMD - SSO - LSTM模型。通过应用VMD,该方法对累积位移和降雨数据进行剖析,从而提取出位移的趋势、周期性和波动分量等不同成分,以及降雨的低频和高频成分。此外,利用灰色关联分析,建立了位移的周期性分量与降雨的低频分量之间以及位移的波动分量与降雨的高频分量之间的相互关系。在此基础上,SSO - LSTM模型对相关的位移分量进行动态预测,综合各分量的预测值以生成实时动态预测。模拟结果强调了所提出的VMD - SSO - LSTM模型的有效性,其均方根误差(RMSE)和平均绝对百分比误差(MAPE)值分别为1.2329毫米和0.1624%,拟合优度(R)为0.9969。与反向传播(BP)预测模型和LSTM预测模型相比,VMD - SSO - LSTM模型具有更高的预测精度。