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Classification of Partial Discharge Signals using Probabilistic Neural Network

机译:基于概率神经网络的局部放电信号分类

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Partial Discharge (PD) classification in power cables and high voltage equipment is essential in evaluating the severity of the damage in the insulation. In this paper, the Probabilistic Neural Network (PNN) method is used to classify the PDs. After the algorithm has been trained it uses the input vector, which contains the features that would be used for classification, to calculate the probability density function (pdf) of each class and together with the assignment of a cost for a misclassification the decision that minimizes the expected risk is taken. The maximum likelihood training is employed here. The success of this particular method for classification is asserted. This method has the advantage over Multilayer Neural Network that it gives rapid training speed, guaranteed convergence to a Bayes classifier if enough training examples are provided (i.e. it approaches Bayes optimality), incremental training which is fast (i.e. additionally provided training examples can be incorporated without difficulties) and robustness to noisy examples. The results obtained here (99.3%, 84.3% and 85.5% for the corona, the floating in oil and the internal discharges respectively) are very encouraging for the use of PNN in PD classification.
机译:电力电缆和高压设备中的局部放电(PD)分类对于评估绝缘损坏的严重程度至关重要。在本文中,使用概率神经网络(PNN)方法来分类PDS。在训练算法之后,它使用包含将用于分类的特征的输入向量,以计算每个类的概率密度函数(PDF),以及分配错误分类最小化的决定采取了预期的风险。这里采用最大似然训练。这种特定方法的分类方法的成功是断言。该方法具有在多层神经网络上具有快速训练速度,如果提供足够的训练示例(即它接近贝叶斯最优性),则快速的增量训练(即另外提供的训练示例,可以合并到贝斯分类器的多层训练速度,保证收敛没有困难)和对嘈杂的例子的鲁棒性。这里获得的结果(电晕的99.3%,84.3%和85.5%,分别浮动油和内部排放)非常令人鼓舞,用于使用PD分类。

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