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A Novel Method for Multiple Power Quality Disturbance Classification using Dynamic Mode Decomposition

机译:动态模式分解的电能质量多扰动分类新方法

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The quality supply of power plays a major role in power systems. Ensuring the quality supply of power has become a prominent issue in modern days due to the introduction of microgrids (MG) with distributed generation systems (DGS) and renewable energy sources (RES) such as solar, wind etc. A novel method based on dynamic mode decomposition (DMD) features are used for multiple power quality disturbance classification. The algorithms’s intelligence to extract elemental dynamic patterns over time of the power quality data is used for accurate classification. The different features such as eigenvalues, eigen-vectors and dynamic mode frequencies extracted through DMD are classified using multi-class classifiers such as random forest, support vector machines and decision tree. The advantage of the proposed method is evaluated under different noise and noiseless power quality events and variations. The promising results obtained using the proposed method highlight the potential usage of DMD based features for time-series identification of power quality disturbances (PQD) in power systems.
机译:优质的电源供应在电力系统中起着重要的作用。由于引入了带有分布式发电系统(DGS)和可再生能源(RES)的微型电网(MG)和太阳能,风能等可再生能源(RES),确保电能的质量供应已成为当今的一个重要问题。模式分解(DMD)功能用于多种电能质量扰动分类。该算法的智能功能可提取电能质量数据随时间变化的基本动态模式,以进行准确的分类。使用多类分类器(例如随机森林,支持向量机和决策树)对通过DMD提取的不同特征(例如特征值,特征向量和动态模式频率)进行分类。在不同的噪声和无噪声的电能质量事件和变化下评估了所提出方法的优势。使用提出的方法获得的有希望的结果突出了基于DMD的功能在电力系统中电能质量扰动(PQD)的时间序列识别中的潜在用途。

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