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Gaussian process regression-based forecasting model of dam deformation

机译:基于高斯过程回归的大坝变形预测模型

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The displacement at various measurement points is a critical indicator that can intuitively reflect the operational properties of a dam. It is important to analyse displacement monitoring data in a timely manner and make reliable predictions of dam safety. This paper proposes a GPR-based model for dam displacement forecasting. The input variables of the monitoring model consider hydraulic factors, thermal factors and irreversible factors, and the output variables are the observed displacements of the dam. An example analysis based on the proposed method is performed on a prototype gravity dam, and the performance of different simple/combined covariance functions is investigated to obtain the optimal choice. Compared to multiple linear regression, radial basis function network (RBFN) and support vector machine (SVM) methods, the results indicate that the GPR-based model with a combined covariance function significantly improves the prediction accuracy. The proposed model can effectively overcome the over-learning and poor robustness issues of approaches such as RBFN and SVM. In addition, the GPR-based forecasting model has the advantages of simplicity in the training process and the capacity to provide a probabilistic output.
机译:各种测量点的位移是可以直观地反映大坝的操作特性的关键指示器。很重要的是要及时分析位移监测数据,并进行可靠的大坝安全预测。本文提出了一种基于GPR的大坝位移预测模型。监测模型的输入变量考虑液压因子,热因素和不可逆转因素,输出变量是观察到大坝的位移。基于所提出的方法的示例性分析是对原型重力坝进行的,并研究了不同简单/组合协方差功能的性能以获得最佳选择。与多元线性回归相比,径向基函数网络(RBFN)和支持向量机(SVM)方法,结果表明,具有组合协方差函数的基于GPR的模型显着提高了预测精度。拟议的模型可以有效地克服了RBFN和SVM等方法的过度学习和差的鲁棒性问题。此外,基于GPR的预测模型具有培训过程中简单的优点和提供概率输出的能力。

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