2018
DOI: 10.1002/etep.2518
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Adaptive algorithm for identifying OLTC position and its application on UHV voltage-regulating transformer differential protection

Abstract: The voltage-regulating transformer (VRT) with on-load tap changer is specifically used to adjust the voltage on the medium-voltage side of the ultra-high voltage power transformer. In practice, during the process of on-load voltage regulation, it is difficult to acquire the tap changer's positon, which is necessary for the calculation of the VRT differential current. Therefore, a novel algorithm is proposed to identify the real-time turns ratio of the VRT, adaptively, according to the structure of the ultra-hi… Show more

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Cited by 3 publications
(1 citation statement)
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References 21 publications
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“…Thus, it is a modelling idea to analyse the correlation between different parameters through a complex network structure. Although similarity exists between the UHV transformer and the 500‐kV transformer, more operating parameters should be real‐time monitored in UHV transformers due to their discrepant structure and operating conditions [26, 27]. Inputting all the monitoring data to the prediction model may increase the complexity and have an impact on the performance.…”
Section: Introductionmentioning
confidence: 99%
“…Thus, it is a modelling idea to analyse the correlation between different parameters through a complex network structure. Although similarity exists between the UHV transformer and the 500‐kV transformer, more operating parameters should be real‐time monitored in UHV transformers due to their discrepant structure and operating conditions [26, 27]. Inputting all the monitoring data to the prediction model may increase the complexity and have an impact on the performance.…”
Section: Introductionmentioning
confidence: 99%