An efficient particle swarm optimization and rule mining for fault diagnosis of dissolved gas analysis

Namrata Dehariya, Vinay Pathak, A. Dubey
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Abstract

Dissolved gas Analysis (DGA) is the most vital segment of discovering shortcoming in huge oilfilled transformers. Early recognition of beginning issues in transformers decreases unreasonable impromptu blackouts. The most important and dependable strategy for assessing the center of transformer is the disintegrated gas investigation. In this paper we have used dissolved gas analysis for the analytical and computation study which is used for the evaluation used as a diagnostic tool for evaluating the condition of the transformer. We have proposed an efficient Particle Swarm Optimization using Rule Mining for Fault Diagnosis of Dissolved Gas Analysis. In this approach we first apply associative IEC for finding the faults. Then Item based individual association are applied on different gas ratio. It is on the basis on the values taken as a data set. It shows the individual associated improvement in the concentration quantity. Then by using random particle swarm optimization it is tuned to their maximum threshold value for obtaining the saturation points. The results show the improvement in fault diagnosis and provide and approach for finding associated saturation point.
基于粒子群优化和规则挖掘的溶解气体分析故障诊断方法
溶解气体分析(DGA)是发现大型充油变压器缺陷的关键环节。及早发现变压器的初期问题可以减少不合理的临时停电。对变压器中心进行评估的最重要、最可靠的策略是气体崩解调查。本文采用溶解气体分析法进行了分析和计算研究,并将溶解气体分析法作为一种诊断工具用于评价变压器的状态。提出了一种基于规则挖掘的粒子群算法用于溶解气体分析故障诊断。在这种方法中,我们首先应用关联IEC来查找故障。然后对不同的气体比应用基于条目的个体关联。它以作为数据集的值为基础。它显示了个体在浓度量上的相关改善。然后利用随机粒子群算法将其调整到最大阈值以获得饱和点。结果表明,该方法提高了故障诊断的精度,并为寻找关联饱和点提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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