Paper ID: 2503.18263 • Published Mar 24, 2025
PNN: A Novel Progressive Neural Network for Fault Classification in Rotating Machinery under Small Dataset Constraint
Praveen Chopra, Himanshu Kumar, Sandeep Yadav
TL;DR
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Fault detection in rotating machinery is a complex task, particularly in
small and heterogeneous dataset scenarios. Variability in sensor placement,
machinery configurations, and structural differences further increase the
complexity of the problem. Conventional deep learning approaches often demand
large, homogeneous datasets, limiting their applicability in data-scarce
industrial environments. While transfer learning and few-shot learning have
shown potential, however, they are often constrained by the need for extensive
fault datasets. This research introduces a unified framework leveraging a novel
progressive neural network (PNN) architecture designed to address these
challenges. The PNN sequentially estimates the fixed-size refined features of
the higher order with the help of all previously estimated features and appends
them to the feature set. This fixed-size feature output at each layer controls
the complexity of the PNN and makes it suitable for effective learning from
small datasets. The framework's effectiveness is validated on eight datasets,
including six open-source datasets, one in-house fault simulator, and one
real-world industrial dataset. The PNN achieves state-of-the-art performance in
fault detection across varying dataset sizes and machinery types, highlighting
superior generalization and classification capabilities.
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