학술논문

Shallow Versus Deep Neural Networks in Gear Fault Diagnosis
Document Type
Periodical
Source
IEEE Transactions on Energy Conversion IEEE Trans. Energy Convers. Energy Conversion, IEEE Transactions on. 35(3):1338-1347 Sep, 2020
Subject
Power, Energy and Industry Applications
Geoscience
Gears
Feature extraction
Vibrations
Neural networks
Principal component analysis
Electronic mail
Fault detection
Classification algorithm
fault detection
fault diagnosis
gears
induction motors
multilayer perceptron
neural networks
principal component analysis
vibrations
Language
ISSN
0885-8969
1558-0059
Abstract
Accurate gear defect detection in induction machine-based systems is a fundamental issue in several industrial applications. At this aim, shallow neural networks, i.e., architectures with only one hidden layer, have been used after a feature extraction step from vibration, torque, acoustic pressure and electrical signals. Their additional complexity is justified by their ability in extracting its own features and in the very high-test classification rates. These signals are here analyzed, both geometrically and topologically, in order to estimate the class manifolds and their reciprocal positioning. At this aim, the different states of the gears are studied by using linear (Pareto charts, biplots, principal angles) and nonlinear (curvilinear component analysis) techniques, while the class clusters are visualized by using the parallel coordinates. It is deduced that the class manifolds are compact and well separated. This result justifies the use of a shallow neural network, instead of a deep one, as already remarked in the literature, but with no theoretical justification. The experimental section confirms this assertion, and also compares the shallow neural network results with the other machine learning techniques used in the literature.