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A Novel Hybrid Decomposition—Ensemble Prediction Model for Dam Deformation

机译:大坝变形的新型混合分解集合预测模型

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Accurate and reliable prediction of dam deformation (DD) is of great significance to the safe and stable operation of dams. In order to deal with the fluctuation characteristics in DD for more accurate prediction results, a new hybrid model based on a decomposition-ensemble model named VMD-SE-ER-PACF-ELM is proposed. First, the time series data are decomposed into subsequences with different frequencies and an error sequence (ER) by variational mode decomposition (VMD), and then the secondary decomposition method is introduced into the prediction of ER. In these two decomposition processes, the sample entropy (SE) method is innovatively utilized to determine the decomposition modulus. Then, the input variables of the subsequences are selected by partial autocorrelation analysis (PACF). Finally, the parameter-optimization-based extreme learning machine (ELM) models are used to predict the subsequences, and the outputs are reconstructed to obtain the final prediction results. The case analysis shows that the VMD-SE-ER-PACF-ELM model has strong prediction ability for DD. The model is then compared with other nonlinear and time series models, and its performance under different prediction periods is also analyzed. The results show that the proposed model is able to adequately describe the original DD. It performs well in both training and testing stages. It is a preferred data-driven model for DD prediction and can provide a priori knowledge for health monitoring of dams.
机译:对坝变形(DD)的准确可靠预测对水坝的安全和稳定运行具有重要意义。为了处理DD中的波动特性,提出了一种基于名为VMD-SE-ER-ELM的分解集合模型的新的混合模型。首先,时间序列数据通过变分模式分解(VMD)分解为具有不同频率的子序列和错误序列(ER),然后引入次级分解方法ER的预测。在这两个分解过程中,采样熵(SE)方法是创新的利用来确定分解模量。然后,通过部分自相关分析(PACF)选择子序列的输入变量。最后,基于参数优化的极限学习机(ELM)模型用于预测子序列,并重建输出以获得最终预测结果。案例分析表明,VMD-SE-ER-PACF-ELM模型具有强大的DD预测能力。然后将该模型与其他非线性和时间序列模型进行比较,并且还分析了在不同预测周期下的性能。结果表明,该模型能够充分描述原始DD。它在训练和测试阶段都表现良好。它是DD预测的优选数据驱动模型,可以为水坝的健康监测提供先验的知识。

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