2022
DOI: 10.1155/2022/6379141
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Insulator Leakage Current Prediction Using Hybrid of Particle Swarm Optimization and Gene Algorithm-Based Neural Network and Surface Spark Discharge Data

Abstract: This study proposes a new superior hybrid algorithm, which is the particle swarm optimization (PSO) and gene algorithm (GA)-based neural network to predict the leakage current of insulators. The developed algorithm was utilized for the online monitoring systems, which were completely installed on the 69 kV and 161 kV transmission towers in Taiwan. This hybrid algorithm utilizes the local meteorological data as input parameters combined with the extracted enhanced data: the percentage of spark discharge areas a… Show more

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Cited by 2 publications
(1 citation statement)
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“…This case indicated that in addition to being caused by wetting intensity, the increasing rates were influenced positively by applied voltages. The rising insulator leakage currents due to rainfall were also implied in [42], [43], [44], and [45] as a low correlation of 0.31 [46] and reciprocal to the applied voltage [47].…”
Section: F Leakage Currents To Environmental Parameter Regressionsmentioning
confidence: 99%
“…This case indicated that in addition to being caused by wetting intensity, the increasing rates were influenced positively by applied voltages. The rising insulator leakage currents due to rainfall were also implied in [42], [43], [44], and [45] as a low correlation of 0.31 [46] and reciprocal to the applied voltage [47].…”
Section: F Leakage Currents To Environmental Parameter Regressionsmentioning
confidence: 99%