Condition Assessment of Power Circuit Breakers Based on Machine Learning
Algorithms
Abstract
This paper presents two approaches to power circuit condition
assessment. The first one covers a wide variety of machine learning
classification algorithms where the input for the classification is a
manually selected feature set. The second one utilizes deep learning
classification based on the convolutional neural network. Both
approaches revolve around the idea behind spectral kurtosis, one of
which exploits its visual representation in the form of kurtogram. The
first approach uses a spectral kurtosis curve as the base for feature
extraction while the second approach uses a spectral kurtosis kurtogram
as a single input into the convolutional neural network. The validation
is performed on a large set of vibration signatures and compared to
competing state-of-the-art algorithms. The results indicate promising
features of the proposed approach.