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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Electrical Engineering >Oppositional Krill Herd Algorithm-Based RLNN Controller for Discrete-Mode AGC in Deregulated Hydrothermal Power System Using SMES
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Oppositional Krill Herd Algorithm-Based RLNN Controller for Discrete-Mode AGC in Deregulated Hydrothermal Power System Using SMES

机译:基于对虾磷算法的RLNN离散水热发电系统离散模式AGC的SMES方法

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摘要

This paper presents the application of oppositional krill herd algorithm (OKHA)-based reinforced learning neural network (RLNN) controller to study the discrete-mode automatic generation control (AGC) problems in the deregulated environment considering superconducting magnetic energy storage (SMES) system for three-area hydrothermal power system. The dynamic responses using OKHA-based RLNN controller for various loading conditions are compared with the proportional-integral-derivative (P-I-D) controllers whose gains are also optimized using OKHA. Area control error (ACE) is used as input to both P-I-D and RLNN controllers, and the weights of neural networks have been adjusted online for RLNN controllers. Sensitivity analyses have been performed to investigate the robustness of the controllers that are subject to change in SMES parameters and loading conditions. Investigation reveals that OKHA-based RLNN controllers give better dynamic performances compared to gains of P-I-D controllers obtained using OKHA considering SMES units for different loading conditions.
机译:本文提出了基于反对磷虾群算法(OKHA)的强化学习神经网络(RLNN)控制器的应用,研究了考虑到超导磁能储存(SMES)系统的放松环境下的离散模式自动发电控制(AGC)问题。三区热电联产系统。使用基于OKHA的RLNN控制器在各种负载条件下的动态响应与比例积分微分(P-I-D)控制器进行了比较,其增益也使用OKHA进行了优化。区域控制误差(ACE)用作P-I-D和RLNN控制器的输入,并且已针对RLNN控制器在线调整了神经网络的权重。已经进行了灵敏度分析,以研究受SMES参数和负载条件变化影响的控制器的鲁棒性。调查显示,与使用OKHA考虑不同负载条件的SMES单元获得的P-I-D控制器的增益相比,基于OKHA的RLNN控制器具有更好的动态性能。

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