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A Real-Time Power Quality Disturbances Classification Using Hybrid Method Based on S-Transform and Dynamics

机译:基于S变换和动力学的混合方法实时电能质量扰动分类。

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摘要

This paper proposes a real-time power quality disturbances (PQDs) classification by using a hybrid method (HM) based on S-transform (ST) and dynamics (Dyn). Classification accuracy and run time are mainly considered in our work. The HM firstly uses Dyn to identify the location of the signal components in the frequency spectrum yielded by Fourier transform, and uses inverse Fourier transform to only some of the signal components. Then features from Fourier transform, ST, and Dyn are selected, and a decision tree is used to classify the types of PQD. In order to reduce the influence of Heisenberg' s uncertainty, we proposed that different signal components are windowed by different Gaussian windows, which brings better adaption and flexibility. By the HM, run time of the application has been greatly reduced with satisfactory classification accuracy. Finally, a DSP-FPGA based hardware platform is adopted to test the run time and correctness of the proposed method under real standard signals. Field signal tests have also presented. Both simulations and experiments validate the feasibility of the new method.
机译:本文提出了一种基于S变换(ST)和动态(Dyn)的混合方法(HM)进行实时电能质量扰动(PQD)分类。分类准确性和运行时间主要在我们的工作中考虑。 HM首先使用Dyn来识别信号分量在傅立叶变换产生的频谱中的位置,然后仅对某些信号分量使用傅立叶逆变换。然后,从傅立叶变换,ST和Dyn中选择特征,并使用决策树对PQD的类型进行分类。为了减少海森堡不确定性的影响,我们提出通过不同的高斯窗对不同的信号分量进行加窗,从而带来更好的适应性和灵活性。通过HM,应用程序的运行时间已大大减少,具有令人满意的分类精度。最后,采用基于DSP-FPGA的硬件平台测试了该方法在真实标准信号下的运行时间和正确性。还提出了现场信号测试。仿真和实验均验证了该方法的可行性。

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