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Vibration Tendency Prediction of Hydroelectric Generator Unit Based on Fast Ensemble Empirical Mode Decomposition and Kernel Extreme Learning Machine with Parameters Optimization

机译:基于快速集成经验模态分解和参数优化的核极限学习机的水轮发电机组振动趋势预测

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摘要

Since the existence and effect of non-linear and non-stationary characteristics for hydroelectric generator unit (HGU) vibration, an intelligence vibration tendency prediction method based on fast ensemble empirical mode decomposition and kernel extreme learning machine (FEEMD-KELM) is proposed to obtain better prediction results. Firstly, the vibration signal is decomposed into several intrinsic mode functions (IMFs) by FEEMD. Then, the predict models of KELM are constructed. Meanwhile, the salp swarm algorithm (SSA) is used to identify the number of hidden layer nodes of each KELM model. Finally, all KELM predictions are summed to obtain the predicted values of the original vibration signal. A case study of the mixed-flow hydropower unit vibration data in China is carried out, and the experimental results demonstrate that the proposed method can achieve better predictions in practical applications.
机译:鉴于水力发电机组振动非线性和非平稳特性的存在和影响,提出一种基于快速集成经验模态分解和核极限学习机(FEEMD-KELM)的智能振动趋势预测方法更好的预测结果。首先,通过FEEMD将振动信号分解为几个固有模式函数(IMF)。然后,建立了KELM的预测模型。同时,使用蜂群算法(SSA)来识别每个KELM模型的隐藏层节点数。最后,将所有KELM预测值相加以获得原始振动信号的预测值。以中国的混流水电机组振动数据为例,实验结果表明,该方法在实际应用中可以取得较好的预测效果。

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