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Forecasting of landslide displacements using a chaos theory based wavelet analysis-Volterra filter model

机译:基于混沌理论的小波分析 - Volterra滤波器模型预测滑坡位移

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Landslide displacement time series can directly reflects landslide deformation and stability characteristics. Hence, forecasting of the non-linear and non-stationary displacement time series is necessary and significant for early warning of landslide failure. Traditionally, conventional machine learning methods are adopted as forecasting models, these forecasting models mainly determine the input and output variables experientially and does not address the non-stationary characteristics of displacement time series. However, it is difficult for these conventional machine learning methods to obtain appropriate input-output variables, to determine appropriate model parameters and to acquire satisfied prediction performance. To deal with these drawbacks, this study proposes the wavelet analysis (WA) to decompose the displacement time series into low- and high-frequency components to address the non-stationary characteristics; then proposes thee chaos theory to obtain appropriate input-output variables of forecasting models, and finally proposes Volterra filter model to construct the forecasting model. The GPS monitoring cumulative displacement time series, recorded on the Shuping and Baijiabao landslides, distance measuring equipment monitoring displacements on the Xintan landslide in Three Gorges Reservoir area of China, are used as test data of the proposed chaotic WA-Volterra model. The chaotic WA-support vector machine (SVM) model and single chaotic Volterra model without WA method, are used as comparisons. The results show that there are chaos characteristics in the GPS monitoring displacement time series, the non-stationary characteristics of landslide displacements are captured well by the WA method, and the model input-output variables are selected suitably using chaos theory. Furthermore, the chaotic WA-Volterra model has higher prediction accuracy than the chaotic WA-SVM and single chaotic Volterra models.
机译:滑坡位移时间序列可以直接反映滑坡变形和稳定性特性。因此,对山体滑坡失效的预警是必要的,是必要的,对非线性和非平稳位移时间序列的预测。传统上,传统的机器学习方法被采用作为预测模型,这些预测模型主要确定了输入和输出变量,并没有解决位移时间序列的非静止特性。然而,这些传统的机器学习方法难以获得适当的输入 - 输出变量,以确定适当的模型参数并获取满意的预测性能。为了处理这些缺点,本研究提出了小波分析(WA)来将位移时间序列分解成低频和高频分量以解决非静止特性;然后提出了CHAOS理论,以获得预测模型的适当输入输出变量,最后提出了Volterra滤波器模型来构建预测模型。 GPS监测累计位移时间序列序列,记录在Shuping和Baijiabao Landlides上,距离测量设备监测在中国三峡库区的新坦滑坡上的距离,用作拟议的混沌WA-Volterra模型的测试数据。没有WA方法的混沌WA-支持向量机(SVM)模型和单一混沌Volterra模型用作比较。结果表明,GPS监测位移时间序列中存在混沌特性,通过WA方法捕获滑坡位移的非静止特性,并且使用混沌理论适当地选择模型输入输出变量。此外,混沌WA-Volterra模型比混沌WA-SVM和单一混沌Volterra模型具有更高的预测精度。

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