2022
DOI: 10.11591/ijpeds.v13.i2.pp1266-1276
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A long short-term memory based prediction model for transformer fault diagnosis using dissolved gas analysis with digital twin technology

Abstract: <span lang="EN-US">The most significant tool for defect diagnostics in transformers is dissolved gas analysis (DGA). The time series prediction of dissolved gas levels in oil, when combined with dissolved gas analysis, provides a foundation for transformer fault diagnosis and an early warning. A long short-term memory (LSTM) based prediction model is developed in this paper to train the digital twin for identifying the essential fault in the transformer via DGA. The model is fed with three different gas … Show more

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Cited by 2 publications
(2 citation statements)
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“…On the other hand, the acceleration coefficients c1 and c2 control the travel distance of the particle's movement at single iteration. Thus, both are set to a value of 2, although the setting of c1≠c2 could results in a good performance [21], [22]. The inertia weight ω in ( 6) is employed to drive the convergence of the PSO.…”
Section: Particle Swarm Optimizationmentioning
confidence: 99%
“…On the other hand, the acceleration coefficients c1 and c2 control the travel distance of the particle's movement at single iteration. Thus, both are set to a value of 2, although the setting of c1≠c2 could results in a good performance [21], [22]. The inertia weight ω in ( 6) is employed to drive the convergence of the PSO.…”
Section: Particle Swarm Optimizationmentioning
confidence: 99%
“…In order to testify the effectiveness of the proposed prediction model, the study uses a 500 kVA, 11000/430V transformer's online monitoring as illustration to analyze time series data [31]. In this analysis, a preprocessed dataset of one thousand fault cases is used, which was obtained from a large and unique DGA dataset [16] of test transformer available at CITD, Balangar, Hyderabad. The fault codes 1 to 7 are given to fault scenarios such as low-energy discharges (D1), high-energy discharges (D2), thermal and electrical faults (DT), partial discharges (PD), and low, medium and high-thermal faults (T1, T2, and T3) discovered by Duval's triangle [17].…”
Section: ░ 2 Dga Setmentioning
confidence: 99%