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Voltage stability evaluation of power system with FACTS devices using fuzzy neural network

机译:基于模糊神经网络的FACTS装置电力系统电压稳定性评估

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Voltage stability has been a major concern for power system utilities because of several events of voltage collapses in the recent past. With the developments of flexible ac transmission system (FACTS) devices, power system performance has improved. This paper proposes an approach based on fuzzy neural network to calculate loadability margin of the power system with static synchronous compensator (STATCOM). A multi-input, single output fuzzy neural network is developed. Kohonen self-organizing map is employed to cluster the real and reactive loads at all the buses to reduce the input features, thus limiting the size of the network and reducing computational burden. Uncertainties of real and reactive loads, real and reactive generations, bus voltages and STATCOM parameters are taken into account by transforming them into fuzzy domains using combination of different nonlinear membership functions. A three-layered feed-forward neural network with fuzzy input variables is developed to evaluate the loadability margin. All ac limits are considered. The proposed methodology is applied to IEEE-30 bus and IEEE-118 bus systems. The proposed methodology is fast and accurate as compared to the conventional techniques. This method can also be used for online calculation of the voltage stability of the large power systems.
机译:电压稳定性已成为电力系统公用事业的主要关注点,因为最近发生了几次电压崩溃事件。随着柔性交流传输系统(FACTS)设备的发展,电力系统性能得到了提高。提出了一种基于模糊神经网络的静态同步补偿器(STATCOM)计算电力系统负荷容限的方法。建立了多输入单输出模糊神经网络。 Kohonen自组织映射用于对所有总线上的有功和无功负载进行聚类,以减少输入功能,从而限制了网络的规模并减轻了计算负担。通过使用不同的非线性隶属度函数将它们转换为模糊域,可以考虑有功和无功负载,有功和无功发电,母线电压和STATCOM参数的不确定性。建立了具有模糊输入变量的三层前馈神经网络,以评估其负载裕度。考虑所有交流限值。所提出的方法应用于IEEE-30总线和IEEE-118总线系统。与常规技术相比,所提出的方法是快速且准确的。该方法也可以用于在线计算大型电力系统的电压稳定性。

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