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首页> 外文期刊>Journal of Electrical & Electronic Systems >Online Tuning of Power System Stabilizers using Fuzzy Logic Network with Fuzzy C-Means Clustering
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Online Tuning of Power System Stabilizers using Fuzzy Logic Network with Fuzzy C-Means Clustering

机译:基于模糊C均值聚类的模糊逻辑网络的电力系统稳定器在线调整

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Power system stabilizers (PSS) have been widely used to enhance damping due to the electromechanical low frequency oscillations occurrence in power systems. In this paper, a new method is used for the online tuning of parameters of conventional power system stabilizers (CPSS) using fuzzy logic. Fuzzy logic enables mathematical modeling and computation of some nonlinear parameters of the system, which are usually, derived empirically by utilization of expert knowledge rules. Various literatures has shown that fuzzy logic controller is one of the most useful methods for expert knowledge utilization. This type of controller is adaptive in nature and can be used successfully as a power system stabilizer. The design of fuzzy logic controllers is mainly based on fuzzy rules and input/output membership functions. Simple and efficient clustering algorithms allow data classification in distinct groups using distance and/or similarity functions. In the present paper, the optimum generation of fuzzy rules base using Fuzzy C-means (FCM) clustering technique is used. In fact, data are classified and the number of fuzzy rules which depends on convergence radius is determined. Finally, the performance of proposed FCM controller is compared with that of conventional controller. The active power, reactive power and bus voltages used as inputs to the fuzzy logic network based power system stabilizer and the parameters of the optimum stabilizer , i.e. gain factor as well as time constants of the lead/lag compensator, are the outputs of the proposed system. The design method has been successfully implemented on a single machine power system connected to an infinite bus over various operating conditions.
机译:由于在电力系统中发生机电低频振荡,因此电力系统稳定器(PSS)已被广泛用于增强阻尼。本文采用一种新方法,利用模糊逻辑在线调整常规电力系统稳定器(CPSS)的参数。模糊逻辑可以对系统的某些非线性参数进行数学建模和计算,这些参数通常是通过利用专家知识规则凭经验得出的。各种文献表明,模糊逻辑控制器是专家知识利用的最有用的方法之一。这种类型的控制器本质上是自适应的,可以成功用作电源系统稳定器。模糊逻辑控制器的设计主要基于模糊规则和输入/输出隶属函数。简单有效的聚类算法允许使用距离和/或相似度函数将数据分类为不同的组。在本文中,使用了基于模糊C均值(FCM)聚类技术的模糊规则库的最佳生成。实际上,对数据进行分类,并确定取决于收敛半径的模糊规则的数量。最后,将所提出的FCM控制器的性能与常规控制器的性能进行了比较。拟议的输出是有功功率,无功功率和总线电压,作为基于模糊逻辑网络的电力系统稳定器的输入,以及最优稳定器的参数(即增益因子以及超前/滞后补偿器的时间常数)。系统。该设计方法已成功地在各种操作条件下连接到无限总线的单机电源系统上实现。

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