基于变分模态分解的深挖方膨胀土渠道边坡变形预测

    DEFORMATION PREDICTION FOR EXPANSIVE SOIL CANAL SLOPES OF DEEP EXCAVATION BASED ON VARIATIONAL MODE DECOMPOSITION

    • 摘要: 膨胀土渠道边坡运行期变形受降水、地下水位以及蒸发等干湿循环作用的影响显著,变形预测可为渠坡稳定性评判提供依据。以某调水工程的一深挖方膨胀土渠段为例开展研究,该段渠坡地下水位较高,开挖完成3 a后渠坡的刚性支护结构出现了损坏,变形超设计警戒值且还在持续发展。基于工程地质、水文地质与现场检查数据,分析渠坡变形特征与影响因素,发展位移统计模型;融合VMD和LSSVM算法,构建深挖方膨胀土渠道边坡垂直位移预测的VMD-LSSVM模型。结果表明,影响因素与垂直位移周期性部分的灰色关联度均大于0.6,呈较好相关性,其中地下水位、有效降水量、气温为负相关;渠道水位为正相关。VMD算法能较好地分解趋势性、周期性和波动性位移,同时能将影响因素分解为周期性和波动性成分,且能识别影响因素的局部波动。以时间作为趋势性位移的输入因子,以影响因素的周期性和波动性成分作为周期性和波动性位移的输入因子,进行训练和预测,叠加得到累计位移输出值。运行初期渠坡垂直位移的时效显著,VMD-LSSVM模型预测精度明显优于统计模型和直接将影响因素作为输入因子的LSSVM模型。

       

      Abstract: The deformation of an expansive soil canal slope is significantly affected by drying-wetting cycles such as precipitation,groundwater level fluctuation,and evaporation. Displacement prediction contributes significantly to the prevention and mitigation of slope failures. One canal section of a well-known water transfer project,which has a typical deep excavated expansive soil canal characteristic,was taken as the studied case. The groundwater level of this canal section was high. The deformation of the canal slope exceeded the design warning value three years after the excavation,and continued to develop. The rigid support structure of the slope had been damaged due to this severe slope deformation. The vertical displacement of the canal slope and its relationship with groundwater level and precipitation were qualitatively analyzed based on the observed time series. The time series analysis and statistical models of the vertical displacement of the canal slope were developed. An integrated approach for the vertical displacement prediction combining variational mode decomposition(VDM)algorithm,least squares support vector machine(LSSVM)algorithm,and k-fold cross-validation was proposed. The accumulated vertical displacement was decomposed into a trend,periodic,and random component by the VDM algorithm. The VDM algorithm also decomposes influencing factors into high-frequency and low-frequency factors,corresponding to the periodic and fluctuating components. The LSSVM algorithm forecasts the trend displacement using the operation time as the input dataset. The periodic and fluctuating components of the influencing factors were selected as the input datasets to forecast the periodic and fluctuating displacement components by the LSSVM algorithm. Four influencing factors including groundwater level,precipitation,canal water level,and air temperature were considered. The total displacement was obtained by superimposing the three predictive components. The grey relation analysis determines the grey relation degrees between the influencing factors and the vertical displacement. All the grey correlation degrees between the influencing factors and the vertical displacement are greater than 0.6. Among them,groundwater level,effective precipitation,and air temperature are negatively correlated with vertical displacement. Canal water level is positively correlated with vertical displacement. The results prove that the VMD algorithm can decompose the trend,periodic and fluctuating displacement components well. The VMD algorithm can also decompose the influencing factors into the periodic and fluctuating components,and can identify local fluctuations. The time-dependent effect of the vertical displacement is significant during the initial operation period. The prediction accuracy of the proposed VMD-LSSVM model is obviously better than those of the statistical model and the S-LSSVM model which directly takes influencing factors as input factors. The proposed model presents satisfactory prediction accuracy,thus,is effective and of considerable practical value in expansive soil slope engineering.

       

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