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Adaptive Three-phase Estimation of Sequence Components and Frequency Using H∞ Filter Based on Sparse Model

机译:基于稀疏模型的H∞滤波器自适应三相估计和频率

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摘要

The estimation of sequence or symmetrical components and frequency in three-phase unbalanced power system is of great importance for protection and relay. This paper proposes a new H∞ filter based on sparse model to track the sequence components and the frequency of three-phase unbalanced power systems. The inclusion of sparsity improves the error convergence behavior of estimation model and hence short-duration non-stationary PQ events can easily be tracked in the time domain. The proposed model is developed using l1 norm penalty in the cost function of H∞ filter, which is quite suitable for estimation across all the three phases of an unbalanced system. This model uses real state space modeling across three phases to estimate amplitude and phase parameters of sequence components. However, frequency estimation uses complex state space modeling and Clarke transformation generates a complex measurement signal from the unbalanced three-phase voltages. The state vector used for frequency estimation consists of two state variables. The proposed sparse model is tested using distorted three-phase signals from IEEE-1159-PQE database and the data generated from experimental laboratory setup. The analysis of absolute and mean square error is presented to validate the performance of the proposed model.
机译:三相不平衡电力系统中的序列或对称部件和频率的估计非常重要地保护和继电器。本文提出了一种基于稀疏模型的新的H∞过滤器,以跟踪序列组件和三相不平衡电源系统的频率。包含稀疏性改善了估计模型的误差会聚行为,因此在时域中可以容易地跟踪短时持续时间非静止PQ事件。所提出的模型是在H∞滤波器的成本函数中使用L1 NOM罚款开发的,这非常适用于估计在不平衡系统的所有三个阶段。该模型使用三个阶段的真实状态空间建模来估计序列组件的幅度和相位参数。然而,频率估计使用复杂的状态空间建模,并且Clarke转换产生来自不平衡三相电压的复数信号。用于频率估计的状态向量由两个状态变量组成。使用来自IEEE-1159-PQE数据库的扭曲三相信号和从实验实验室设置产生的数据进行测试,测试所提出的稀疏模型。提出了绝对和均方误差的分析以验证所提出的模型的性能。

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