论文标题
基于数据的线性化:基于最小二乘的近似
Data Based Linearization: Least-Squares Based Approximation
论文作者
论文摘要
电力流的线性化是电力系统分析中的重要主题。在线性功率流模型下,计算负担可以大大减轻,而模型误差是主要问题。因此,在文献中提出了各种线性功率流模型,并致力于寻求最佳近似。大多数线性功率流模型基于某种转换/简化/泰勒的AC功率流程扩展,并且在冷启动模式下无法准确。令人惊讶的是,基于数据的线性化方法尚未得到充分研究。在本文中,研究了基于数据的最小二乘近似方法的性能。所得的冷启动敏感因子被称为最小二乘分布因子(LSDF)。与传统的电力传输分配因子(PTDF)相比,发现LSDF可以很好地工作对于具有较大载荷变化的系统,而LSDF的平均误差仅占PTDF平均误差的1%。进行了全面的数值测试,结果表明,LSDF在所有研究的情况下均具有吸引人的性能,并且在仅需要冷启动线性功率流模型的情况下具有巨大的应用潜力。
Linearization of power flow is an important topic in power system analysis. The computational burden can be greatly reduced under the linear power flow model while the model error is the main concern. Therefore, various linear power flow models have been proposed in literature and dedicated to seek the optimal approximation. Most linear power flow models are based on some kind of transformation/simplification/Taylor expansion of AC power flow equations and fail to be accurate under cold-start mode. It is surprising that data-based linearization methods have not yet been fully investigated. In this paper, the performance of a data-based least-squares approximation method is investigated. The resulted cold-start sensitive factors are named as least-squares distribution factors (LSDF). Compared with the traditional power transfer distribution factors (PTDF), it is found that the LSDF can work very well for systems with large load variation, and the average error of LSDF is only about 1% of the average error of PTDF. Comprehensive numerical testing is performed and the results show that LSDF has attractive performance in all studied cases and has great application potential in occasions requiring only cold-start linear power flow models.