使用可再生能源的放松管制电力系统中的负载频率控制:混合 GOA-SNN 技术

C. Srisailam, M. Manjula, K. Muralidhar Goud
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引用次数: 0

摘要

本文提出了一种在相互连接的放松管制的电力系统中进行负载频率控制(LFC)的混合技术。该方法结合了甘网优化算法(GOA)和尖峰神经网络(SNN),因此被命名为 GOA-SNN 技术。拟议方法的目标是最大限度地减少电力系统(PS)内的频率偏差。通过减少频率偏差和连接线功率变化,该方法可确保在负载干扰影响下的系统频率控制。利用 GOA 方法生成控制器的控制信号集。SNN 方法用于预测控制器的最佳增益参数。然后,在 MATLAB 软件中运行所提出的方法,并评估其与现有各种方法的性能。与蚁狮优化(ALO)、粒子群优化(PSO)和萨尔普群算法(SSA)等其他现有方法相比,所提出的方法显示出更好的效果。与其他现有方法相比,GOA-SNN 方法的区域控制误差低至 0.48%,效率高达 96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Load frequency control in deregulated power system with renewable energy sources: Hybrid GOA-SNN technique

Load frequency control in deregulated power system with renewable energy sources: Hybrid GOA-SNN technique
This paper proposes a hybrid technique for load frequency control (LFC) in an inter-connected deregulated power-system. The proposed method is the combination of a gannet optimization algorithm (GOA) and spiking neural network (SNN), hence, it is named as GOA-SNN technique. The objective of the proposed method is to minimize frequency deviations within the power system (PS). By lessening the frequency-deviation and tie-line power variation, this approach ensures system frequency-control under the effect of load disturbances. The GOA method is utilized to generate the set of control signals of the controller. The SNN method is used to predict the optimum gain parameter of the controller. By then the proposed method is run in MATLAB software and evaluated their performance with various existing approaches. The proposed method shows better results than other existing methods, such as Ant Lion Optimization (ALO), particle swarm optimization (PSO), and Salp Swarm Algorithm (SSA). The GOA-SNN approach shows a low Area control error is 0.48% and a high efficiency is 96% compared with other existing approaches.
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