2010
DOI: 10.1016/j.eswa.2009.11.004
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Artificial identification system for transformer insulation aging

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Cited by 15 publications
(7 citation statements)
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“…The PD method used by Liao Ruijin et al [5] showed that the diagnostic accuracy of this method reached 82.86% (116/140). In addition, the PD method used in [6] has 80% identification rate to correctly distinguish aging period when 30% noise disturb the original PD signal. The accuracy is satisfactory.…”
Section: E Comparisons Between the Proposed Methods And Other Existinmentioning
confidence: 99%
“…The PD method used by Liao Ruijin et al [5] showed that the diagnostic accuracy of this method reached 82.86% (116/140). In addition, the PD method used in [6] has 80% identification rate to correctly distinguish aging period when 30% noise disturb the original PD signal. The accuracy is satisfactory.…”
Section: E Comparisons Between the Proposed Methods And Other Existinmentioning
confidence: 99%
“…Both ANNs have been widely used, the last years, in the solution of many power system problems presenting very accurate results. MLP and RBF ANNs have been used for the fault location and predictive maintenance of transmission lines [9,10], for the estimation of transmission lines' distance protection [11], for lightning outage calculations and grounding resistance issues [12], for voltage stability monitoring [13], for the estimation of electric fields and the critical flashover voltage along high-voltage insulators [12,14], and for power transformer problems such as insulation aging and fault diagnosis [15,16].…”
Section: Artificial Neural Network' (Anns) Implementationmentioning
confidence: 99%
“…Particle swarm optimization (PSO) was applied to provide the optimal set of initial weights and biases for the ANN model. PSO is the first optimization technique to get the best initial weights and biases for the BP ANN and is achieved by optimizing certain objective functions [57]. The paper shows the efficiency of the scheme in identifying the insulation aging status of cast-resin transformers for both noisy and noiseless environments.…”
Section: Relevant Previous Research Work On Artificial Neural Networmentioning
confidence: 99%
“…With 30% added random noise, recognition as high as 80% for some defects was recorded. Despite the faster convergence rate implemented by Chen et al [58], the recognition rate was lower than that obtained with the same BP ANN, but implementing PSO as it was implemented by Kuo [57]. In order to improve PD recognition, there is need to investigate novel BP ANN optimization technique with resilient propagation to obtain high PD recognition in the presence of noise.…”
Section: Relevant Previous Research Work On Artificial Neural Networmentioning
confidence: 99%
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