DC Side Voltage Monitoring Model of Transformer based on Pattern Recognition

Autor: Liu Xian-Zhong, Shao Wen-Mian
Rok vydání: 2020
Předmět:
Zdroj: 2020 IEEE International Conference on Industrial Application of Artificial Intelligence (IAAI).
DOI: 10.1109/iaai51705.2020.9332908
Popis: Aiming at the problem that the transformer DC side voltage is affected by the voltage quality during the monitoring process, its monitoring performance is greatly reduced. In order to improve the monitoring effect of the transformer DC side voltage, a transformer DC side voltage monitoring model based on pattern recognition is designed. Pattern recognition based on the RMS method using DC voltage transformer discrete signal processing using a pure sinusoidal AC signal with the average RMS mathematical relationship, by calculating the average of the AC voltage, indirectly, of the DC voltage transformer Valid values. From the OPP-CI model that ignores the influence of the ZIB node and the OPP-CI model that considers the influence of the ZIB node, pattern recognition is used to establish the transformer DC side voltage OPP-CI model, and the transformer DC side voltage monitoring process design is combined to realize the transformer DC Monitoring of side voltage. The experimental results show that the error of the monitoring results of the proposed model is relatively low, indicating that the method can improve the monitoring effect of the transformer DC side voltage.
Databáze: OpenAIRE