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Reactive power distribution network optimization neural network based on particle swarm optimization

机译:基于粒子群算法的无功配电网优化神经网络

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Particle swarm optimization algorithm instead of back-propagation algorithm to train the neural network weights and threshold training results from the two algorithms can be seen that PSO-based neural network has a faster convergence rate, and can be used to overcome the single particle swarm optimization algorithm is difficult to achieve the desired results and the single use of the phenomenon of BP algorithm is easy to fall into local optimal solution of the defect phenomenon. Using particle swarm optimization trained neural network to optimize the reactive power compensation devices, the experimental results show that the optimization effect is obvious, is an effective and practical method for reactive power optimization.
机译:粒子群优化算法代替反向传播算法来训练神经网络权重和阈值训练结果,从这两种算法可以看出,基于PSO的神经网络具有更快的收敛速度,可以用来克服单粒子群优化BP算法很难达到预期的效果,而BP算法现象的单次使用很容易陷入缺陷现象的局部最优解。利用粒子群优化训练神经网络对无功补偿装置进行优化,实验结果表明,优化效果明显,是一种有效而实用的无功优化方法。

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