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首页> 外文期刊>IEE proceedings. Part C >Parallel self-organising hierarchical neural network-based fast voltage estimation
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Parallel self-organising hierarchical neural network-based fast voltage estimation

机译:基于并行自组织层次神经网络的快速电压估计

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摘要

Fast voltage security monitoring and analysis have assumed importance in the present-day stressed operation of power system networks; and fast prediction of bus voltage is essential for this. An approach based on parallel self-organising hierarchical neural networks is presented to predict bus voltage in an efficient manner. Parallel self-organising hierarchical neural networks (PSHNN) are multistage networks, in which stages operate in parallel rather than in series during testing. The entropy concept has been used to identify the inputs for PSHNN. A revised back propagation algorithm is used for learning input nonlinearities, along with forward-backward training. The proposed method is used to predict bus voltage at different loading conditions and for an outage event in IEEE 30-bus and a practical 75-bus systems.
机译:快速的电压安全监视和分析在当今受压的电力系统网络中已变得至关重要。为此,快速预测总线电压至关重要。提出了一种基于并行自组织分层神经网络的方法,可以有效地预测总线电压。并行自组织分层神经网络(PSHNN)是多阶段网络,在测试过程中,阶段并行运行而不是串联运行。熵概念已被用来识别PSHNN的输入。修订后的反向传播算法用于学习输入非线性,以及向前-向后训练。所提出的方法可用于预测不同负载条件下的总线电压,以及在IEEE 30总线和实际75总线系统中发生停电事件的情况。

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