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A modified noise assisted EMD to extract low-frequency modes present in a WAMS data of dynamic power system

机译:修改的噪声辅助EMD以提取动态电力系统的WAMS数据中存在的低频模式

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Empirical Mode Decomposition(EMD)is incapable of separating mode frequencies present in a octave because it suffers from mode mixing problem. This paper proposes modification to noise-assisted Empirical Mode Decomposition technique which can effectively improve the mode mixing problem. The exsiting and proposed improvements to these methodologies in this paper are first applied to an artificial test signal to verify the ability in separating mixing modes. Thereafter, the real-time data of Eastern Interconnect Phasor Project (EIPP), U.S.A are analyzed. Further different modal frequency components are extracted by EMD, Ensemble Empirical Mode Decomposition(EEMD), Complete Ensemble Empirical Decomposition with Adaptive Noise (CEEMDAN), and modified CEEMDAN. Hilbert spectrum analysis is carried out to compare instantineous frequency variation of various extracted modes. From the simulation results, it is concluded that EEMD technique works well in fixing mode mixing problem than previously used EMD based techniques but the problem of noise in the extracted modes of EEMD still remains which is overcome by CEEMDAN technique. CEEMDAN suffers from the problem of presences of noise in the extracted modes and existence of spurious mode, which are then overcome by modified CEEMDAN.
机译:经验模式分解(EMD)无法分离在八度音阶中存在的模式频率,因为它遭受了模式混合问题。本文提出了对噪声辅助经验模式分解技术的修改,其能够有效地改善模式混合问题。本文中对这些方法的进出和提出的改进首先应用于人工测试信号,以验证分离混合模式的能力。此后,分析了东部互连phasor项目(eipp),U.S.A的实时数据。进一步的不同模态频率分量由EMD,集合经验模式分解(EEMD)提取,完成与自适应噪声(CeeMDAN)和修改的CeeMDAN的集合实证分解。进行HILBERT频谱分析,以比较各种提取模式的鉴定频率变化。从仿真结果中,得出结论,EEMD技术在定影模式混合问题中工作良好,而不是以前使用的基于EMD的技术,但通过CeeMDAN技术仍然仍然仍然仍然存在噪声的噪声问题。 CeeMDAN遭受了提取的模式中噪音存在的问题以及虚假模式的存在,然后通过修改的CeeMDAN克服。

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