Intelligent condition monitoring with CNN and signal enhancement for undersampled signals

ISA Trans. 2024 Jun:149:124-136. doi: 10.1016/j.isatra.2024.04.005. Epub 2024 Apr 8.

Abstract

High-frequency signals like vibration and acoustic emission are crucial for condition monitoring, but their high sampling rates challenge data acquisition, especially for online monitoring. Our research developed a novel method for condition identification in undersampled signals using a modified convolutional neural network integrated with a signal enhancement approach. A frequency-domain filtering is applied to suppress similar sidebands and obtain more discriminative features of different conditions, followed by an interpolation-based upsampling in the time domain to restore the signal length and strengthen the low-frequency harmonic information. Enhanced signals are converted into two-dimensional grayscale images for neural network analysis. Tested on bearing datasets and real-world data from regenerative thermal oxidizer lift valve leakage, our method effectively extracts features from low-frequency signals, achieving over 95% fault identification accuracy.

Keywords: Condition monitoring; Convolutional neural network; Signal enhancement; Undersampled signals.