Abstract The tobacco drying process in tobacco processing production lines exhibits the characteristics of high-dimensional time series, scarcity of labeled data, and dynamic process coupling, which pose significant challenges for anomaly detection. This article proposes an unsupervised anomaly detection framework based on graph neural networks. The main innovations include: 1) a prior knowledge-driven graph representation method that models the production line as a directed graph, where nodes represent process units and edges encode material flow relationships, enabling spatio-temporal feature learning based on GNN; 2) a hybrid detection architecture that combines the advantages of predictive and reconstruction models, integrating historical patterns with short-term trends to enhance detection sensitivity for sudden faults and gradual deviations; and 3) introduction of a dual graph attention network to adapt to the bidirectional influence between process parameters and quality indicators caused by the PID feedback control mechanism. Experiments conducted on an actual production line of a tobacco manufacturing company demonstrate that this method outperforms existing approaches in terms of accuracy, recall, and F1-score, achieving 0.958, 0.979, and 0.976, respectively. The research results provide a robust solution for real-time anomaly detection in complex industrial production environments.
Prior knowledge enhanced graph attention network for real-time anomaly detection in tobacco drying processes
Jian Wang,Chen Yang,Wencai Wang,Yuntai Yang,Hanxing Shan
Published 2026 in Drying Technology
ABSTRACT
PUBLICATION RECORD
- Publication year
2026
- Venue
Drying Technology
- Publication date
2026-01-01
- Fields of study
Not labeled
- Identifiers
- External record
- Source metadata
Semantic Scholar
CITATION MAP
EXTRACTION MAP
CLAIMS
- No claims are published for this paper.
CONCEPTS
- No concepts are published for this paper.
REFERENCES
Showing 1-41 of 41 references · Page 1 of 1
CITED BY
- No citing papers are available for this paper.
Showing 0-0 of 0 citing papers · Page 1 of 1