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A comparative study of adaptive load frequency controller designs in a power system with dynamic neural network models

机译:动态神经网络模型在电力系统中自适应负载频率控制器设计的比较研究

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摘要

This paper investigates applications of dynamic neural network (DNN) models for adaptive load frequency controller designs in power systems. The proposed dynamic neural network models have lag dynamics and dynamical elements such as delayers or integrators in their processing units. They only differ in activation functions. The first uses sigmoid functions, the second uses standard fuzzy systems and the third uses non-orthogonal mother wavelets as activation functions. Each DNN model is connected between two area power systems. The input signals of the DNN models are the area control errors (ACE). The outputs are the control signals for two area load frequency control. Adaptation is based on adjusting the parameters of each for load frequency control. This is done by minimizing the cost functional of load frequency deviations. In simulations for each DNN model, comparative results are obtained for damping the frequency due to a load disturbance effect applied to a two area power system.
机译:本文研究了动态神经网络(DNN)模型在电力系统中自适应负载频率控制器设计中的应用。所提出的动态神经网络模型在处理单元中具有滞后动力学和动力学元素,例如延迟器或积分器。它们仅在激活功能上有所不同。第一个使用S型函数,第二个使用标准模糊系统,第三个使用非正交母小波作为激活函数。每个DNN模型都连接在两个区域电力系统之间。 DNN模型的输入信号是区域控制误差(ACE)。输出是用于两个区域负载频率控制的控制信号。调整基于调整每个参数以进行负载频率控制。这是通过最小化负载频率偏差的成本函数来完成的。在针对每个DNN模型的仿真中,获得了比较结果,这些结果用于衰减由于施加到两区域电力系统的负载干扰效应而引起的频率。

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