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Diagnosis and clustering of power transformer winding fault types by cross-correlation and clustering analysis of FRA results

机译:基于FRA结果的互相关和聚类分析对电力变压器绕组故障类型进行诊断和聚类

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摘要

The power transformer is one of the vital and substantial elements of each country's power grid which not only require high investment, but they are also important in terms of economy, social, political, and strategy. Since this equipment is exposed to different electrical and mechanical winding faults during operation, they should be monitored continuously. One of the main monitoring methods is the use of frequency response analysis (FRA), which has a high sensitivity. The main challenge of the FRA is that the detecting task of the status of the transformer is done by a specialist and with a visual evaluation of the records. To overcome this problem, first, frequency responses in the healthy and present states are calculated through simulation of electrical and mechanical fault in the winding of the transformer and then, new statistical methods are used to interpret FRA results based on the obtained transfer function. In this study, for the first time, clustering analysis and cross-correlation methods are used to interpret FRA results for clustering and diagnosis of different short circuits turns, axial displacement, and radial deformation. Results and simulations verify ability and advantage of these methods in detection and determination of different faults.
机译:电力变压器是每个国家电网的重要组成部分之一,不仅需要大量投资,而且在经济,社会,政治和战略方面也很重要。由于此设备在运行期间会遭受不同的电气和机械绕组故障,因此应对其进行连续监视。主要的监视方法之一是使用频率响应分析(FRA),它具有很高的灵敏度。 FRA的主要挑战在于,由专业人员完成变压器状态的检测任务,并对记录进行视觉评估。为了克服这个问题,首先,通过仿真变压器绕组中的电气和机械故障,计算出健康状态和当前状态下的频率响应,然后,基于获得的传递函数,使用新的统计方法来解释FRA结果。在本研究中,首次使用聚类分析和互相关方法来解释FRA结果,以对不同的短路匝数,轴向位移和径向变形进行聚类和诊断。结果和仿真验证了这些方法在检测和确定不同故障中的能力和优势。

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