Miao Fasheng, Xie Xiaoxu, Wu Yiping, Zhao Fancheng
Faculty of Engineering, China University of Geosciences, Wuhan 430074, China.
Engineering Research Center of Rock-Soil Drilling & Excavation and Protection, Ministry of Education, Wuhan 430074, China.
Sensors (Basel). 2022 Jan 9;22(2):481. doi: 10.3390/s22020481.
Landslide displacement prediction is one of the unsolved challenges in the field of geological hazards, especially in reservoir areas. Affected by rainfall and cyclic fluctuations in reservoir water levels, a large number of landslide disasters have developed in the Three Gorges Reservoir Area. In this article, the Baishuihe landslide was taken as the research object. Firstly, based on time series theory, the landslide displacement was decomposed into three parts (trend term, periodic term, and random term) by Variational Mode Decomposition (VMD). Next, the landslide was divided into three deformation states according to the deformation rate. A data mining algorithm was introduced for selecting the triggering factors of periodic displacement, and the Fruit Fly Optimization Algorithm-Back Propagation Neural Network (FOA-BPNN) was applied to the training and prediction of periodic and random displacements. The results show that the displacement monitoring curve of the Baishuihe landslide has a "step-like" trend. Using VMD to decompose the displacement of a landslide can indicate the triggering factors, which has clear physical significance. In the proposed model, the R values between the measured and predicted displacements of ZG118 and XD01 were 0.977 and 0.978 respectively. Compared with previous studies, the prediction model proposed in this article not only ensures the calculation efficiency but also further improves the accuracy of the prediction results, which could provide guidance for the prediction and prevention of geological disasters.
滑坡位移预测是地质灾害领域尚未解决的难题之一,尤其是在库区。受降雨和库水位周期性涨落的影响,三峡库区发生了大量滑坡灾害。本文以白水河滑坡为研究对象。首先,基于时间序列理论,采用变分模态分解(VMD)将滑坡位移分解为趋势项、周期项和随机项三部分。其次,根据变形速率将滑坡划分为三种变形状态。引入数据挖掘算法选取周期位移的触发因素,并将果蝇优化算法-反向传播神经网络(FOA-BPNN)应用于周期位移和随机位移的训练与预测。结果表明,白水河滑坡位移监测曲线呈“阶梯状”趋势。利用VMD分解滑坡位移能揭示触发因素,具有明确的物理意义。在所建模型中,ZG118和XD01实测位移与预测位移之间的R值分别为0.977和0.978。与以往研究相比,本文提出的预测模型不仅保证了计算效率,还进一步提高了预测结果的准确性,可为地质灾害的预测与防治提供指导。