Capacitor Parameter Estimation Based on Wavelet Transform and Convolution Neural Network
Hongjian Xia, Yi Zhang, Minyou Chen, Dan Luo, Wei Lai, Huai Wang
Abstract
This paper proposes a capacitor parameter estimation method based on wavelet transform and convolution neural network (CNN). By fully utilizing wavelet transforms and the inherently non-ideal properties of bandpass filters, the lowfrequency and mid-frequency band features contained in capacitor voltages are extracted with high resolution. Leveraging these features, a subsequent CNN network simultaneously estimates two crucial aging indicators of capacitors, i.e., capacitance and equivalent series resistance (ESR). While most existing methods can only identify either capacitance or ESR, the proposed method stands out by addressing both. The integration of two different frequency features enables the proposed method to exhibit broader applicability across different modulation schemes and control strategies, and is less sensitive to load conditions and sampling frequency. Experiment results based on a modular multilevel converter case study prove the effectiveness of the proposed method