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Association Rule Mining-Based Dissolved Gas Analysis for Fault Diagnosis of Power Transformers

机译:基于关联规则挖掘的溶解气体分析在电力变压器故障诊断中的应用

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摘要

This paper presents a novel association rule mining (ARM)-based dissolved gas analysis (DGA) approach to fault diagnosis (FD) of power transformers. In the development of the ARM-based DGA approach, an attribute selection method and a continuous datum attribute discretization method are used for choosing user-interested ARM attributes from a DGA data set, i.e. the items that are employed to extract association rules. The given DGA data set is composed of two parts, i.e. training and test DGA data sets. An ARM algorithm namely Apriori-Total From Partial is proposed for generating an association rule set (ARS) from the training DGA data set. Afterwards, an ARS simplification method and a rule fitness evaluation method are utilized to select useful rules from the ARS and assign a fitness value to each of the useful rules, respectively. Based upon the useful association rules, a transformer FD classifier is developed, in which an optimal rule selection method is employed for selecting the most accurate rule from the classifier for diagnosing a test DGA record. For comparison purposes, five widely used FD methods are also tested with the same training and test data sets in experiments. Results show that the proposed ARM-based DGA approach is capable of generating a number of meaningful association rules, which can also cover the empirical rules defined in industry standards. Moreover, a higher FD accuracy can be achieved with the association rule-based FD classifier, compared with that derived by the other methods.
机译:本文提出了一种新的基于关联规则挖掘(ARM)的溶解气体分析(DGA)方法来进行电力变压器故障诊断(FD)。在基于ARM的DGA方法的开发中,使用属性选择方法和连续基准属性离散化方法从DGA数据集(即用于提取关联规则的项目)中选择用户感兴趣的ARM属性。给定的DGA数据集由两部分组成,即训练和测试DGA数据集。提出了一种ARM算法,即“从部分开始优先求和”,用于从训练DGA数据集中生成关联规则集(ARS)。之后,利用ARS简化方法和规则适合度评估方法从ARS中选择有用规则,并分别为每个有用规则分配适合度值。基于有用的关联规则,开发了一种变压器FD分类器,其中采用了一种最佳规则选择方法来从分类器中选择最准确的规则,以诊断DGA测试记录。为了进行比较,在实验中还使用了相同的训练和测试数据集对五种广泛使用的FD方法进行了测试。结果表明,所提出的基于ARM的DGA方法能够生成许多有意义的关联规则,这些规则也可以涵盖行业标准中定义的经验规则。此外,与其他方法得出的结果相比,基于关联规则的FD分类器可以实现更高的FD准确性。

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