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A state tendency measurement for a hydro-turbine generating unit based on aggregated EEMD and SVR

机译:基于集合EEMD和SVR的水轮发电机组状态趋势测量

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摘要

The reliable measurement of state tendency for a hydro-turbine generating unit (HGU) is significant in guaranteeing the security of the unit and promoting stability of the power system. For this purpose, an aggregated ensemble empirical mode decomposition (AEEMD) and optimized support vector regression (SVR)-based hybrid model is developed in this paper in order to enhance the measuring accuracy of state tendency for a HGU. First of all, the non-stationary time series of the state signal are decomposed into a collection of intrinsic mode functions (IMFs) by EEMD. Subsequently, to obtain the refactored intrinsic mode functions (RIMFs), the IMFs with different scales are aggregated with the proposed reconstruction strategy in consideration of the frequency and energy conditions. Later, the phase-space matrix in accordance with each RIMF is deduced by phase-space reconstruction and all the RIMFs are predicted through establishing homologous optimal SVR forecasting models with a grid search. Finally, the ultimate measuring values of state tendency can be determined through the accumulation of all the RIMF forecasting values. Furthermore, the effectiveness of the proposed method is validated in engineering experiments and comparative analyses.
机译:水轮发电机组(HGU)状态趋势的可靠测量对于保证机组的安全性和提高电力系统的稳定性至关重要。为此,本文开发了基于集合集成的经验模式分解(AEEMD)和基于支持向量回归(SVR)的优化混合模型,以提高HGU状态趋势的测量精度。首先,EEMD将状态信号的非平稳时间序列分解为固有模式函数(IMF)的集合。随后,为了获得重构的固有模式函数(RIMF),考虑到频率和能量条件,将具有不同比例的IMF与所提出的重构策略进行聚合。随后,通过相空间重构推导每个RIMF的相空间矩阵,并通过建立具有网格搜索的同源最优SVR预测模型来预测所有RIMF。最后,可以通过累加所有RIMF预测值来确定状态趋势的最终测量值。此外,该方法的有效性在工程实验和比较分析中得到了验证。

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