Fault diagnosis based on multi-channel data plays a crucial role in rotating machinery monitoring. By leveraging signals acquired from multiple sensors, more comprehensive fault-related information can be extracted, thereby improving diagnostic accuracy. This paper proposes a novel Multi-channel data fusion-enabled Multilevel Graph-guided Framework for Diagnosis (MSGFD) to address fault diagnosis under extreme data imbalance. First, an efficient preprocessing strategy is developed to transform multi-channel signals into structured representations suitable for graph-based learning. Subsequently, a MultiGraph construction mechanism is introduced to capture discriminative and complementary fault information through four distinct graph topologies. To address the challenge of limited supervision in extremely imbalanced scenarios, a multilevel learning architecture integrating a Graph Multilayer Perceptron (MLP) and a Graph Transformer is designed to jointly model local and global feature dependencies. Furthermore, a deep divergence-based clustering (DDC) loss is incorporated to enhance inter-class separability and intra-class compactness. Extensive experiments conducted under various imbalance settings demonstrate the robustness and effectiveness of the proposed method across multiple fault categories. The source code is publicly available at: https://github.com/Polimi-YuYue .

A multi-channel data fusion-enabled multilevel graph-guided framework for fault diagnosis in rotating machinery under extreme biased data

Yu, Yue;Karimi, Hamid Reza;Zio, Enrico;
2026-01-01

Abstract

Fault diagnosis based on multi-channel data plays a crucial role in rotating machinery monitoring. By leveraging signals acquired from multiple sensors, more comprehensive fault-related information can be extracted, thereby improving diagnostic accuracy. This paper proposes a novel Multi-channel data fusion-enabled Multilevel Graph-guided Framework for Diagnosis (MSGFD) to address fault diagnosis under extreme data imbalance. First, an efficient preprocessing strategy is developed to transform multi-channel signals into structured representations suitable for graph-based learning. Subsequently, a MultiGraph construction mechanism is introduced to capture discriminative and complementary fault information through four distinct graph topologies. To address the challenge of limited supervision in extremely imbalanced scenarios, a multilevel learning architecture integrating a Graph Multilayer Perceptron (MLP) and a Graph Transformer is designed to jointly model local and global feature dependencies. Furthermore, a deep divergence-based clustering (DDC) loss is incorporated to enhance inter-class separability and intra-class compactness. Extensive experiments conducted under various imbalance settings demonstrate the robustness and effectiveness of the proposed method across multiple fault categories. The source code is publicly available at: https://github.com/Polimi-YuYue .
2026
Extreme biased data; Fault diagnosis; Feature inductive learning,; Global and local feature fusion learning; Multi-channel data; Rotating machinery;
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1314676
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