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Dissolved Gas Analysis of Power Transformer using K-means and Support Vector Machine

机译:使用K-MENCE和支持向量机电力变压器的溶解气体分析

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The power transformer is ranked as one of the most important and expensive components in the electricity sector. However, the sudden failure of the power transformer places the system into serious or critical conditions. This paper utilizes artificial intelligence techniques to detect and predict transformer faults based on Dissolved Gas Analysis method and presents an intelligent methodology KMSVM (k-means and support vector machine) based on optimization technique to properly monitor, diagnose and predict the faults in the power transformer. Furthermore, the proposed technique helps in finding an effective and reliable monitoring technique to address transformer conditions at a much faster rate and hence minimizes the challenges.
机译:电力变压器被排名为电力部门中最重要且昂贵的部件之一。然而,电力变压器的突然故障将系统置于严重或危急的条件下。本文利用人工智能技术来基于溶解气体分析方法检测和预测变压器故障,并基于优化技术呈现智能方法KMSVM(K-MEASE和支持向量机),以适当监测,诊断和预测电力变压器中的故障。此外,所提出的技术有助于找到一种以更快的速率解决变压器条件的有效和可靠的监控技术,从而最大限度地减少挑战。

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