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首页> 外文期刊>IEEE Transactions on Dielectrics and Electrical Insulation >Partial Discharge Pulse Pattern Recognition using an Inductive Inference Algorithm
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Partial Discharge Pulse Pattern Recognition using an Inductive Inference Algorithm

机译:基于归纳推理算法的局部放电脉冲模式识别

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摘要

This paper presents a novel approach in the area of time dependent partial discharge (PD) pulse pattern recognition, to applications based on the inductive learning (decision tree) approach. Different attributes based on pulse shape analysis are used as representative feature vectors that can accurately capture the unique and salient characteristics of the PD pulse shape. In the training phase, a decision tree is developed to relate the pulse shape with the cavity size by using inductive machine learning. The C4.5 machine learning algorithm is deployed to realize the tree using the training data, since it has the capability of inferring the rules and to produce the tree in terms of continuous features. During testing, the cavity size is recognized by means of the rules extracted from the decision tree. The dependency between the features and the classes are examined using the mutual information approach. The proposed algorithm possesses the inherent advantage of explaining the result via the self-created rule base as demonstrated by the results obtained. Those self-created rules can be employed as the basis for applying a fuzzy expert system for the classification of void sizes in an easily interpreted fashion.
机译:本文提出了一种基于时间的局部放电(PD)脉冲模式识别领域的新颖方法,以基于归纳学习(决策树)方法的应用。基于脉冲形状分析的不同属性用作代表特征向量,可以准确地捕获PD脉冲形状的独特和显着特征。在训练阶段,通过使用感应式机器学习来开发决策树,以将脉冲形状与腔体大小相关联。部署C4.5机器学习算法以使用训练数据实现树,因为它具有推理规则的能力并可以根据连续特征生成树。在测试过程中,通过从决策树中提取的规则来识别腔体的大小。使用互信息方法检查要素和类之间的依赖关系。所提出的算法具有固有的优势,可以通过自行创建的规则库对结果进行解释,如所获得的结果所示。这些自创建的规则可以用作将模糊专家系统以易于解释的方式应用于空隙尺寸分类的基础。

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