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Adaptive load frequency control of Nigerian hydrothermal system using unsupervised and supervised learning neural networks

机译:基于无监督和监督学习神经网络的尼日利亚热液系统负荷频率自适应控制

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This work presents a novel load frequency control design approach for a two-area power system that relies on unsupervised and supervised learning neural network structure. Central to this approach is the prediction of the load disturbance of each area at every minute interval that is uniquely assigned to a cluster via unsupervised learning process. The controller feedback gains corresponding to each cluster center are determined using modal control technique. Thereafter, supervised learning neural network (SLNN) is employed to learn the mapping between each cluster center and its feedback gains. A real time load disturbance in either or both areas activates the appropriate SLNN to generate the corresponding feedback gains. The effectiveness of the control framework is evaluated on the Nigerian hydrothermal system. Several far-reaching simulation results obtained from the test system are presented and discussed to highlight the advantages of the proposed approach.
机译:这项工作提出了一种基于无监督和监督学习神经网络结构的两区域电力系统的新型负载频率控制设计方法。这种方法的核心是预测每分钟间隔的每个区域的负载扰动,该负载扰动是通过无监督学习过程唯一地分配给群集的。使用模态控制技术确定与每个群集中心相对应的控制器反馈增益。此后,采用监督学习神经网络(SLNN)来学习每个聚类中心及其反馈增益之间的映射。任一区域或两个区域中的实时负载扰动都会激活适当的SLNN,以生成相应的反馈增益。该控制框架的有效性在尼日利亚的热液系统上进行了评估。提出并讨论了从测试系统获得的一些影响深远的仿真结果,以突出提出的方法的优点。

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