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Monitoring models for base flow effect and daily variation of dam seepage elements considering time lag effect

机译:考虑时滞效应的基流效应和坝体渗流要素日变化的监测模型

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摘要

Affected by external environmental factors and evolution of dam performance, dam seepage behavior shows nonlinear time-varying characteristics. In this study, to predict and evaluate the long-term development trend and short-term fluctuation of the dam seepage behavior, two monitoring models were developed, one for the base flow effect and one for daily variation of dam seepage elements. In the first model, to avoid the influence of the time lag effect on the evaluation of seepage variation with the time effect component of seepage elements, the base values of the seepage element and the reservoir water level were extracted using the wavelet multi-resolution analysis method, and the time effect component was separated by the established base flow effect monitoring model. For the development of the daily variation monitoring model for dam seepage elements, all the previous factors, of which the measured time series prior to the dam seepage element monitoring time may have certain influence on the monitored results, were considered. Those factors that were positively correlated with the analyzed seepage element were initially considered to be the support vector machine (SVM) model input factors, and then the SVM kernel function-based sensitivity analysis was performed to optimize the input factor set and establish the optimized daily variation SVM model. The efficiency and rationality of the two models were verified by case studies of the water level of two piezometric tubes buried under the slope of a concrete gravity dam. Sensitivity analysis of the optimized SVM model shows that the influences of the daily variation of the upstream reservoir water level and rainfall on the daily variation of piezometric tube water level are processes subject to normal distribution.
机译:受外部环境因素和大坝性能演变的影响,大坝的渗流行为表现出非线性的时变特征。在这项研究中,为预测和评估大坝渗流行为的长期发展趋势和短期波动,开发了两种监测模型,一种用于基流效应,一种用于大坝渗流元素日变化的监测模型。在第一个模型中,为避免时滞效应对具有渗流元素时间效应分量的渗流变化评估的影响,使用小波多分辨率分析提取渗流元素的基值和水库水位。方法,并通过已建立的基础流效应监测模型将时间效应分量分离。为了建立大坝渗流要素日变化监测模型,考虑了所有先前的因素,其中在大坝渗流要素监测时间之前的测量时间序列可能会对监测结果产生一定的影响。与分析的渗流元素呈正相关的那些因素最初被认为是支持向量机(SVM)模型输入因素,然后执行基于SVM核函数的敏感性分析以优化输入因素集并建立优化的每日变体SVM模型。通过对埋在混凝土重力坝边坡下的两个测压管的水位进行案例研究,验证了这两个模型的有效性和合理性。优化后的SVM模型的敏感性分析表明,上游水库水位和降水日变化对测压管水位日变化的影响属于正态分布。

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