基于状态空间递推最小二乘的电力系统频率估计

Dai Jing, Wang Jun, Chen Han, Li Da-lu
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引用次数: 5

摘要

本文提出了一种新的电力系统频率估计方法。标准递推最小二乘(RLS)具有收敛速度快、对输入向量相关矩阵特征值扩展变化不敏感的特点,但在非平稳条件下其跟踪性能受到限制。状态空间递推最小二乘(SSRLS)技术允许设计者选择合适的模型来描述系统的信息,从而实现对时变系统的跟踪。针对电力系统中的不平衡故障,采用α -变换形成的复杂电压矢量模型作为频率估计模型。另一方面,指数平滑技术可以降低噪声和振荡带来的误差,因此利用指数平滑技术对SSRLS估计的相位进行调整是很自然的。结果表明,该方法在低信噪比和非平稳条件下仍能准确估计频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating the frequency in power system based on state space recursive least squares
A new technique for estimating the frequency in power system is proposed in this paper. The standard recursive least squares (RLS) has the fast rate of convergence and is not sensitive to variations in the eigenvalue spread of the correlation matrix of the input vector, however, the tracking performance of RLS is limited in nonstationary condition. State space recursive least squares (SSRLS) technique allows the designers to choose an appropriate model to describe the information of system, so it can track the time-varying system. Considering the unbalance faults in power system, the complex voltage vector model formed by alphabeta - transformation is used as the frequency estimation model. On the other hand, the exponent-smoothing technique can reduce the errors caused by noise and oscillatory, so it is natural to use the exponent-smoothing technique to adjust the phase estimated by SSRLS. The results show that the proposed method based on SSRLS and exponent-smoothing technique gives the accurate frequency estimation even under the low signal-to-noise and the nonstationary condition.
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