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Seepage and dam deformation analyses with statistical models: support vector regression machine and random forest

机译:渗流和坝体变形分析统计模型:支持向量回归机和随机林

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Dam monitoring and their safety are an important concern of dam engineers. Seepage collected data are indicators of structure behavior, since seepage is influenced by environmental actions, such as air temperature, water temperature, and water level variation, and seepage flow rate is greatly influence by the presence of fractures. Consequently, the analysis of seepage collected data is an important monitoring task, as variations in the seepage can be the alarm for subsequent failures. Seepage data are widely analyzed with statistical models. In this work, we assess the performance of support vector regression machine and random forest models to predict seepage at different points in a case study and identify the most important environmental variables affecting flow rate.
机译:大坝监测及其安全是大坝工程师的重要关注。 渗流收集的数据是结构行为的指标,因为渗水受环境动作的影响,例如空气温度,水温和水位变化,并且渗流流速受到裂缝的存在影响。 因此,收集数据的分析是一个重要的监控任务,因为渗流的变化可以是随后失败的警报。 渗流数据被广泛分析统计模型。 在这项工作中,我们评估支持向量回归机器和随机林模型的性能,以预测案例研究中不同点的渗流,并确定影响流速的最重要的环境变量。

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