2024
DOI: 10.21203/rs.3.rs-4315118/v1
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Steam Turbine Anomaly Detection: An unsupervised learning using Enhanced LSTM Variational Autoencoder

Peng Zhang,
weiming xu

Abstract: As a core equipment of thermal power generation, steam turbines incur significant expenses and adverse effects on operation when facing interruptions like downtime, maintenance, and damage. Accurate anomaly detection is the prerequisite for ensuring the safe and stable operation. However, challenges in steam turbine anomaly detection, including inherent anomalies, the absence of temporal information analysis, and the complexity of high-dimensional data, leading to limitations in existing unsupervised methods. … Show more

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