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Improved ANN Based Tap-Changer Controller Using Modified Cascade-Correlation Algorithm

机译:改进的级联相关算法的改进的基于神经网络的分接开关控制器

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Artificial Neural Network (ANN) based tap changer control of closed primary bus and cross network connected parallel transformers has demonstrated potential use in power distribution system [1-3]. In those research works the proposed ANN for application in this control were developed using various algorithms and concluded that a network trained by Bayesian Regularization (BR) backpropagation algorithm produced the best performance measured in terms of correct tap changing decisions. However, further improvement of ANN based transformer tap changer operation is always desirable. A general rule for obtaining good generalization is to use the smallest network that solves the problem [4]. In this paper, we show that a small sized ANN is obtainable for further improvement of transformer tap changer operation by modifying the standard Cascade-Correlation algorithm. The modification incorporates weight smoothing of output layer weights in Cascade-Correlation learning using Bayesian frame work. Experimental results demonstrate that significant improvement in performance is achieved when an ANN is trained by modified Cascade-Correlation algorithm instead of standard Cascade-Correlation or Bayesian Regularization backpropagation algorithm. A comparison of performances of different algorithms in application to transformer tap changer operation is analyzed and the results are presented.
机译:基于人工神经网络(ANN)的闭合主母线和交叉网络连接的并联变压器的分接开关控制已证明在配电系统中具有潜在的用途[1-3]。在那些研究工作中,使用各种算法开发了用于该控制的拟议人工神经网络,并得出结论,由贝叶斯正则化(BR)反向传播算法训练的网络在正确的抽头变换决策方面产生了最佳性能。但是,始终需要对基于ANN的变压器抽头变换器操作进行进一步的改进。获得良好概括的一般规则是使用最小的网络来解决问题[4]。在本文中,我们表明可以通过修改标准的Cascade-Correlation算法来获得小型的ANN,以进一步改善变压器抽头变换器的运行。该修改在使用贝叶斯框架工作的Cascade-Correlation学习中结合了输出层权重的权重平滑。实验结果表明,通过改进的Cascade-Correlation算法而不是标准Cascade-Correlation或贝叶斯正则反向传播算法训练ANN,可以显着提高性能。分析了不同算法在变压器分接开关操作中的性能比较,并给出了结果。

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