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A sparsity-oriented technique for power system small signal stability analysis with a precondition conjugate residual method

机译:稀疏导向的电力系统小信号稳定性的前提共轭残差法分析

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摘要

An efficient method for small-signal stability assessment in real-size power systems is presented. Eigenvalue-analysis-based approaches have been studied to evaluate the stability problem. The conventional methods require calculating all the eigenvalues in evaluating small-signal stability. Among them, the QR method is widely used due to its robustness and high accuracy. However, the method is not applicable to real-life systems with respect to computational time and storage. Recently, the S-matrix method has been developed to overcome the problem. The method is based on mapping the most critical eigenvalue from the s-plane to the z-plane. As a result, it requires calculating only the most critical eigenvalue rather than all the eigenvalues. Although the method is theoretically elegant, it generates unnecessary fill-in elements which result in increasing computational time since the direct method is used in solving a set of linear equations. That becomes more significant with system size. An efficient indirect method is developed using a precondition technique. The proposed method has been successfully applied to several systems. The simulation results indicated that the proposed method is 30 times and five times faster than the QR and the S-matrix methods, respectively, for a 46-unit, 191-bus system.
机译:提出了一种在大型电力系统中进行小信号稳定性评估的有效方法。已经研究了基于特征值分析的方法来评估稳定性问题。常规方法要求在评估小信号稳定性时计算所有特征值。其中,QR方法由于其鲁棒性和高精度而被广泛使用。但是,就计算时间和存储而言,该方法不适用于现实生活中的系统。近来,已经开发了S矩阵方法来克服该问题。该方法基于将最关键的特征值从s平面映射到z平面。结果,它仅需要计算最关键的特征值,而不是所有特征值。尽管该方法从理论上讲是优雅的,但由于直接方法用于求解一组线性方程组,因此会生成不必要的填充元素,从而导致计算时间增加。随着系统规模的扩大,这一点变得更加重要。使用前提技术开发了一种有效的间接方法。所提出的方法已经成功地应用于几种系统。仿真结果表明,对于46单元191总线系统,该方法分别比QR和S矩阵方法快30倍和5倍。

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