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A novel real-time based phasor and frequency estimator capable of measurements under transient conditions

机译:一种新颖的基于实时的相量和频率估计器,能够在瞬态条件下进行测量

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In frequency and phasor estimation algorithms, the undesired components are required to be filtered out from the original signals. In power systems, the undesired components are the decaying dc offset and harmonics. These components could cause delay in algorithm convergence time and deviation from the desired results to a great extent. This paper proposes a new recursive algorithm for accurate and fast estimation of the instantaneous electrical variables such as frequency, amplitude and phase angle. The new algorithm provides an improvement over the existing recursive wavelet transform and, therefore, it is called IRWT. The IRWT performance is compared with the commonly used full-cycle discrete Fourier transform (DFT) and the recursive wavelet transform (RWT) methods. Since it uses a special mother wavelet function, it reduces computational complexity compared to the conventional DFT based method. Compared to the recursive wavelet transform (RWT) method, it has a faster response time. It is shown that IRWT possesses an improvement over a wide range of decaying dc component, harmonic distortions, frequency deviation and sampling frequency compared to the previously proposed methods. This characteristic of IRWT makes it a good candidate for the real-time applications in any power systems.
机译:在频率和相量估计算法中,需要从原始信号中滤除不需要的分量。在电力系统中,不需要的成分是衰减的直流偏移和谐波。这些组件可能会导致算法收敛时间延迟,并在很大程度上偏离预期结果。本文提出了一种新的递归算法,可以准确,快速地估算瞬时电变量,例如频率,幅度和相位角。新算法提供了对现有递归小波变换的改进,因此被称为IRWT。将IRWT性能与常用的全周期离散傅里叶变换(DFT)和递归小波变换(RWT)方法进行了比较。由于它使用特殊的母小波函数,因此与传统的基于DFT的方法相比,它降低了计算复杂度。与递归小波变换(RWT)方法相比,它具有更快的响应时间。结果表明,与先前提出的方法相比,IRWT在衰减的直流分量,谐波失真,频率偏差和采样频率的宽范围内都有改进。 IRWT的这一特性使其非常适合任何电力系统中的实时应用。

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