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An approach using ensemble empirical mode decomposition to remove noise from prototypical observations on dam safety

机译:使用整体经验模式分解从大坝安全性原型观测中消除噪声的方法

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摘要

It is very important for dam safety control to identify reasonably dam behavior according to the prototypical observations on deformation, seepage, stress, etc. However, there are many cases in which the noise corrupts the prototypical observations, and it must be removed from the data. Considering the nonlinear and non-stationary characteristics of data series with signal intermittency, an ensemble empirical mode decomposition (EEMD)-based method is presented to remove noise from prototypical observations on dam safety. Its basic principle and implementation process are discussed. The key parameters and rules, which can adapt the noise removal requirements of prototypical observations on dam safety, are given. The displacement of one actual dam is taken as an example. The noise removal capability of EEMD-based method is assessed. It is indicated that the dam displacement feature can be reflected more clearly by removing noise from prototypical observations on dam displacement. The statistical model, which is built according to noise-removed data series, can provide the more precise forecast for structural behavior.
机译:对于大坝安全控制而言,根据变形,渗流,应力等的原型观测结果合理识别大坝行为非常重要。但是,在许多情况下,噪声会破坏原型观测值,因此必须从数据中删除噪声。 。考虑到具有信号间歇性的数据序列的非线性和非平稳特性,提出了一种基于整体经验模态分解(EEMD)的方法,以从大坝安全性的原型观测中消除噪声。讨论了其基本原理和实现过程。给出了可以适应大坝安全原型观测的噪声消除要求的关键参数和规则。以一个实际大坝的位移为例。评估了基于EEMD的方法的噪声消除能力。结果表明,通过从典型的大坝位移观测中去除噪声,可以更清楚地反映大坝位移特征。根据去除噪声的数据序列建立的统计模型可以为结构行为提供更精确的预测。

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