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Prediction of landslide displacement with step-like behavior based on multialgorithm optimization and a support vector regression model

机译:基于多校准优化和支持向量回归模型的阶梯式行为预测滑坡位移

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摘要

Landslide prediction is important for mitigating geohazards but is very challenging. In landslide evolution, displacement depends on the local geological conditions and variations in the controlling factors. Such factors have led to the "steplike" deformation of landslides in the Three Gorges Reservoir area of China. Based on displacement monitoring data and the deformation characteristics of the Baishuihe Landslide, an additive time series model was established for landslide displacement prediction. In the model, cumulative displacement was divided into three parts: trend, periodic, and random terms. These terms reflect internal factors (geological environmental, gravity, etc.), external factors (rainfall, reservoir water level, etc.), and random factors (uncertainties). After statistically analyzing the displacement data, a cubic polynomial model was proposed to predict the trend term of displacement. Then, multiple algorithms were used to determine the optimal support vector regression (SVR) model and train and predict the periodic term. The results showed that the landslide displacement values predicted based on data time series and the genetic algorithm (GA-SVR) model are better than those based on grid search (GS-SVR) and particle swarm optimization (PSOSVR) models. Finally, the random term was accurately predicted by GA-SVR. Therefore, the coupled model based on temporal data series and GA-SVR can be used to predict landslide displacement. Additionally, the GA-SVR model has broad application potential in the prediction of landslide displacement with "step-like" behavior.
机译:Landslide预测对于减轻地质曲目来说很重要,但非常具有挑战性。在滑坡进化中,位移取决于当地地质条件和控制因素的变化。这些因素导致了中国三峡库区山体滑坡变形。基于位移监测数据和Baishuihe滑坡的变形特性,建立了一种添加时间序列模型,用于滑坡位移预测。在模型中,累积位移分为三个部分:趋势,周期性和随机术语。这些术语反映了内部因素(地质环境,重力等),外部因素(降雨,储层水位等)和随机因素(不确定性)。在统计分析位移数据之后,提出了立方多项式模型来预测位移的趋势期限。然后,使用多种算法来确定最佳支持向量回归(SVR)模型和培训并预测周期性术语。结果表明,基于数据时间序列和遗传算法(GA-SVR)模型预测的滑坡位移值优于基于网格搜索(GS-SVR)和粒子群优化(PSOSVR)模型的旧遗传算法(GA-SVR)模型。最后,通过GA-SVR精确预测随机术语。因此,基于时间数据序列和GA-SVR的耦合模型可用于预测滑坡位移。另外,GA-SVR模型具有广泛的应用潜力,以预测“阶梯状”行为的滑坡位移。

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