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Electrical tree tests. Probabilistic inference and insulating material evaluation

机译:电气树测试。概率推断和绝缘材料评估

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摘要

In this paper the application of neural network (NN) to the probabilistic inference of partial discharge (PD) phenomena generated from electrical tree growth is presented. On the basis of experimental results of measurements of trees occurring in a needle-plane arrangement, stochastic quantities are derived, which are relevant to PD pulse amplitude and phase. The NN trained by these quantities shows the feasibility of evaluations that connect tree-growth stage, i.e. the amount of damage produced by the tree, with a reduced set of these quantities. This set is, in turn, obtained applying a NN operating for data compression. In this framework, the NN can also recognize a material, among those used for training, associating to it the specific tree-growth feature.
机译:本文介绍了神经网络(NN)在电树生长产生的局部放电(PD)现象的概率推断中的应用。根据针状平面排列中树木的测量实验结果,得出与PD脉冲幅度和相位有关的随机量。通过这些数量训练的NN显示了将树的生长阶段(即树产生的损害数量)与这些数量的减少集联系起来的评估的可行性。依次通过应用用于数据压缩的NN获得该集合。在这种框架下,NN还可以识别用于训练的材料,并将其与特定的树增长功能相关联。

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