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首页> 外文期刊>IEEE transactions on industrial informatics >Power Quality Event Classification Under Noisy Conditions Using EMD-Based De-Noising Techniques
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Power Quality Event Classification Under Noisy Conditions Using EMD-Based De-Noising Techniques

机译:使用基于EMD的降噪技术在嘈杂条件下进行电能质量事件分类

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摘要

The paper deals with the application of two empirical mode decomposition (EMD)-based de-noising techniques in power quality assessment. Distinct threshold parameters at a distinct level of decomposition are employed for noise exclusion. Each of the thresholded intrinsic mode functions (IMFs) are then combined together to yield a de-noised version of the signal. For enhanced performance, various noisy versions from the original signal are created and then de-noised using soft thresholds. The resultant de-noised signals are then averaged to obtain the de-noised version of the signal. In other procedures based on EMD, the signal is chopped into smaller portions each having equal length. Each signal portion is then separately subjected to EMD and then de-noised and later combined to obtain noise-free signal. These de-noised signals are then subjected to Hilbert transform for feature extraction. Fuzzy Product Aggregation Reasoning Rule-based intelligent classifier is used here for classification purpose. A comparative study is also made between S-transform-based and wavelet-transform-based de-noising techniques paper. Real-time implementation of the algorithm on a noisy harmonic signal is also given in this paper.
机译:本文讨论了两种基于经验模式分解(EMD)的去噪技术在电能质量评估中的应用。在分解的不同级别使用不同的阈值参数进行噪声排除。然后将每个阈值本征模式函数(IMF)组合在一起以产生信号的降噪版本。为了增强性能,会创建原始信号的各种噪声版本,然后使用软阈值对其进行去噪。然后将所得的去噪信号平均,以获得信号的去噪版本。在其他基于EMD的过程中,信号被切成较小的部分,每个部分的长度相等。然后将每个信号部分分别进行EMD处理,然后进行去噪和组合,以获得无噪声的信号。然后对这些经过消噪的信号进行希尔伯特变换,以进行特征提取。基于模糊产品聚合推理的基于规则的智能分类器用于分类目的。基于S变换和基于小波变换的去噪技术论文也进行了比较研究。本文还给出了该算法在噪声谐波信号上的实时实现。

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