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Characteristic parameter degradation prediction of hydropower unit based on radial basis function surface and empirical mode decomposition

机译:基于径向基函数面和经验模态分解的水电机组特征参数退化预测

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摘要

A prediction method of characteristic parameter degradation for a hydropower unit is presented based on radial basis function (RBF) interpolation, empirical mode decomposition (EMD), approximate entropy, artificial neural network and grey theory. Considering the effect of active power and working head, the characteristic parameter degradation model of a hydropower unit is built by using RBF interpolation. The EMD method is used to decompose the characteristic parameter degradation time series of the hydropower unit into a number of intrinsic mode function (IMF) components. The approximate entropy of each IMF component is calculated. According to their different properties, the neural network or grey theory is used to predict them, respectively. All the predicted results are added to obtain the final forecasting result of the original characteristic parameter degradation time series. The case study results demonstrate that the proposed method has an extremely high prediction accuracy, and can be applied in the hydropower unit condition prediction effectively.
机译:基于径向基函数(RBF)插值,经验模态分解(EMD),近似熵,人工神经网络和灰色理论,提出了一种水电机组特征参数退化的预测方法。考虑到有功功率和工作头的影响,采用RBF插值法建立了水电机组特征参数退化模型。 EMD方法用于将水力发电机组的特征参数退化时间序列分解为许多本征函数(IMF)分量。计算每个IMF分量的近似熵。根据它们的不同特性,分别使用神经网络或灰色理论对其进行预测。将所有预测结果相加以获得原始特征参数降级时间序列的最终预测结果。实例研究结果表明,该方法具有很高的预测精度,可有效应用于水电机组状态预测。

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