artículo
Denoising and Voltage Estimation in Modular Multilevel Converters Using Deep Neural-Networks
Denoising and Voltage Estimation in Modular Multilevel Converters Using Deep Neural-Networks
Fecha
2020Registro en:
10.1109/ACCESS.2020.3038552
2169-3536
Autor
Langarica Chavira, Saúl Alberto
Pizarro Lorca, Germán Eduardo
Poblete Durruty, Pablo Martín
Radrigán Sepúlveda, Felipe Ignacio
Pereda Torres, Javier Eduardo
Rodriguez, Jose
Núñez Retamal, Felipe Eduardo
Institución
Resumen
Modular Multilevel Converters (MMCs) have become one of the most popular power converters for medium/high power applications, from transmission systems to motor drives. However, to operate properly, MMCs require a considerable number of sensors and communication of sensitive data to a central controller, all under relevant electromagnetic interference produced by the high frequency switching of power semiconductors. This work explores the use of neural networks (NNs) to support the operation of MMCs by: i) denoising measurements, such as stack currents, using a blind autoencoder NN; and ii) estimating the sub-module capacitor voltages, using an encoder-decoder NN. Experimental results obtained with data from a three-phase MMC show that NNs can effectively clean sensor measurements and estimate internal states of the converter accurately, even during transients, drastically reducing sensing and communication requirements.