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Statistical model optimized random forest regression model for concrete dam deformation monitoring

机译:统计模型优化随机森林回归模型用于混凝土坝变形监测

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摘要

The unique structures and foundations of a dam make its safety monitoring a complex task. As the most intuitive effect of dams, deformation contains important information on dam evolution. Actual response has the purpose of diagnosis and early warning compared with model prediction. Given the poor generalization ability of the conventional statistical model, establishing a dam deformation monitoring model is thus essential. The prediction of concrete dam deformation using statistical model and random forest regression (RFR) model is studied. To build an optimized RFR model, the statistical model is used to establish input variables, select the appropriate parameters M-try and N-tree according to out-of-bag error, and extract strong explanatory variables. The model's advantage is that the influence factors can describe concrete dam deformation, and RF can serve as a sensible new data mining tool. The importance of variables for deformation prediction is measured by RF. The RFR method can extract representative influencing factors based on variable importance. The methods are applied to an actual concrete dam. Results indicate that the RFR model can be applied for analysis and prediction of other structural behavior.
机译:大坝的独特结构和基础使其安全监控成为一项复杂的任务。作为水坝最直观的效果,变形包含有关水坝演变的重要信息。与模型预测相比,实际响应具有诊断和预警的目的。鉴于常规统计模型的泛化能力差,因此建立大坝变形监测模型至关重要。研究了使用统计模型和随机森林回归(RFR)模型预测混凝土大坝变形的方法。为了建立优化的RFR模型,使用统计模型建立输入变量,根据袋外误差选择适当的参数M-try和N-tree,并提取强大的解释变量。该模型的优势在于,影响因素可以描述混凝土坝的变形,而RF可以作为明智的新数据挖掘工具。变量对变形预测的重要性由RF衡量。 RFR方法可以根据变量的重要性提取代表性的影响因素。该方法适用于实际的混凝土大坝。结果表明,RFR模型可用于其他结构行为的分析和预测。

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