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Diagnosing Shorted Turns on the Windings of Power Transformers Based Upon Online FRA Using Capacitive and Inductive Couplings

机译:基于在线FRA的电容和电感耦合在线诊断电力变压器绕组的短路匝数

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摘要

Interturn faults are a significant problem in power transformers that can eventually burgeon into catastrophic faults and likely result in an overall network failure. The main problem with SFRA as one of the well-recognized diagnostic tools for detecting winding faults is its restriction to the domain of offline testing since the method requires injection of a test signal into the transformer windings through the high-voltage bushings. To address the difficulties arising from this issue, in this contribution, a new technique for online transfer function monitoring of the power transformers windings through a quite simple, economic, and noninvasive capacitive sensor installed on the surface of the transformer bushing is presented. Interturn faults with various levels of severity were imposed on the winding of a 35-kV/400-V, 100-kVA oil-immersed distribution transformer to evaluate the feasibility and sensitivity of the method. The experimental results proved that the newly developed online monitoring system is feasible and sensitive to detect unambiguously interturn faults even down to 0.2% shorted turns along the winding. As such, the proposed approach in this paper enables timely warning of a rising failure and serves a better purpose in assessing the health of a faulty transformer.
机译:匝间故障是电力变压器中的重要问题,最终可能会演变成灾难性故障,并有可能导致整个网络故障。 SFRA作为一种公认的检测绕组故障的诊断工具之一,其主要问题在于它局限于离线测试领域,因为该方法需要通过高压套管将测试信号注入变压器绕组。为了解决由该问题引起的困难,在此贡献中,提出了一种新技术,该技术通过安装在变压器套管表面上的非常简单,经济且无创的电容式传感器来在线监视电力变压器绕组。在35 kV / 400 V,100 kVA油浸式配电变压器的绕组上施加了各种严重程度的匝间故障,以评估该方法的可行性和敏感性。实验结果证明,新开发的在线监测系统既可行又灵敏,可以准确地检测出匝间故障,即使沿绕组的短路匝数低至0.2%。因此,本文中提出的方法可以及时警告上升的故障,并在评估故障变压器的运行状况方面有更好的目的。

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