Cabral Thales W, Gomes Felippe V, de Lima Eduardo R, Filho José C S S, Meloni Luís G P
Department of Communications, School of Electrical and Computer Engineering, University of Campinas, Campinas 13083-852, Brazil.
Transmissora Aliança de Energia Elétrica S.A.-TAESA, Praça Quinze de Novembro, Centro, Rio de Janeiro 20010-010, Brazil.
Sensors (Basel). 2024 Nov 27;24(23):7585. doi: 10.3390/s24237585.
Instabilities in energy supply caused by equipment failures, particularly in power transformers, can significantly impact efficiency and lead to shutdowns, which can affect the population. To address this, researchers have developed fault diagnosis strategies for oil-immersed power transformers using dissolved gas analysis (DGA) to enhance reliability and environmental responsibility. However, the fault diagnosis of oil-immersed power transformers has not been exhaustively investigated. There are gaps related to real scenarios with imbalanced datasets, such as the reliability and robustness of fault diagnosis modules. Strategies with more robust models increase the overall performance of the entire system. To address this issue, we propose a novel approach based on Kolmogorov-Arnold Network (KAN) for the fault diagnosis of power transformers. Our work is the first to employ a dedicated KAN in an imbalanced data real-world scenario, named KAN, while also applying the synthetic minority based on probabilistic distribution (SyMProD) technique for balancing the data in the fault diagnosis. Our findings reveal that this pioneering employment of KAN achieved the minimal value of Hamming loss-0.0323-which minimized the classification error, guaranteeing enhanced reliability for the whole system. This ground-breaking implementation of KAN achieved the highest value of weighted average F-Score-96.8455%-ensuring the solidity of the approach in the real imbalanced data scenario. In addition, KAN gave the highest value for accuracy-96.7728%-demonstrating the robustness of the entire system. Some key outcomes revealed gains of 68.61 percentage points for KAN in the fault diagnosis. These advancements emphasize the efficiency and robustness of the proposed system.
设备故障,尤其是电力变压器故障导致的能源供应不稳定,会显著影响效率并导致停机,进而影响民众。为解决这一问题,研究人员开发了利用溶解气体分析(DGA)对油浸式电力变压器进行故障诊断的策略,以提高可靠性并增强环境责任。然而,油浸式电力变压器的故障诊断尚未得到详尽研究。在数据集不平衡的实际场景中存在一些差距,例如故障诊断模块的可靠性和鲁棒性。具有更强健模型的策略可提高整个系统的整体性能。为解决此问题,我们提出一种基于柯尔莫哥洛夫 - 阿诺德网络(KAN)的新型电力变压器故障诊断方法。我们的工作首次在不平衡数据的实际场景中采用专用的KAN,命名为KAN,同时还应用基于概率分布的合成少数过采样技术(SyMProD)来平衡故障诊断中的数据。我们的研究结果表明,这种KAN的开创性应用实现了汉明损失的最小值——0.0323——这使分类误差最小化,确保了整个系统更高的可靠性。这种KAN的突破性实现达到了加权平均F分数的最高值——96.8455%——确保了该方法在实际不平衡数据场景中的稳固性。此外,KAN的准确率最高值为96.7728%——证明了整个系统的鲁棒性。一些关键结果显示,KAN在故障诊断方面提升了68.61个百分点。这些进展强调了所提出系统的效率和鲁棒性。