Locating Partial Discharges in Power Transformers with Convolutional Iterative Filtering

Author:

Wang Jonathan1,Wu Kesheng1ORCID,Sim Alex1ORCID,Hwangbo Seongwook2

Affiliation:

1. Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USA

2. Vitzrotech Co., Ltd., Seoul 425833, Republic of Korea

Abstract

The most common source of transformer failure is in the insulation, and the most prevalent warning signal for insulation weakness is partial discharge (PD). Locating the positions of these partial discharges would help repair the transformer to prevent failures. This work investigates algorithms that could be deployed to locate the position of a PD event using data from ultra-high frequency (UHF) sensors inside the transformer. These algorithms typically proceed in two steps: first determining the signal arrival time, and then locating the position based on time differences. This paper reviews available methods for each task and then propose new algorithms: a convolutional iterative filter with thresholding (CIFT) to determine the signal arrival time and a reference table of travel times to resolve the source location. The effectiveness of these algorithms are tested with a set of laboratory-triggered PD events and two sets of simulated PD events inside transformers in production use. Tests show the new approach provides more accurate locations than the best-known data analysis algorithms, and the difference is particularly large, 3.7X, when the signal sources are far from sensors.

Funder

Office of Science of the U.S. Department of Energy

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference36 articles.

1. Bartley, W.H. (2003, January 15–17). Analysis of transformer failures. Proceedings of the International Association of Engineering Insurers 36th Annual Conference, Stockholm, Sweden.

2. Haddad, A., and Warne, D. (2009). Advances in High Voltage Engineering, The Institution of Engineering and Technology.

3. Detection, Measurement, and Classification of Partial Discharge in a Power Transformer: Methods, Trends, and Future Research;Mondal;IETE Tech. Rev.,2018

4. Location of PDs inside transformer windings using UHF methods;Zheng;IEEE Trans. Dielectr. Electr. Insul.,2014

5. Robust Time Delay Estimation Method for Locating UHF Signals of Partial Discharge in Substation;Hou;IEEE Trans. Power Deliv.,2013

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3. IoT Edge-based Machine Learning Approach for Detection of Partial Discharge in Power Transformers;2023 IEEE International Conference on Artificial Intelligence, Blockchain, and Internet of Things (AIBThings);2023-09-16

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