Aero-Engine Fault Detection with an LSTM Auto-Encoder Combined with a Self-Attention Mechanism
Wenyou Du,
Jingyi Zhang,
Guanglei Meng
et al.
Abstract:The safe operation of aero-engines is crucial for ensuring flight safety, and effective fault detection methods are fundamental to achieving this objective. In this paper, we propose a novel approach that integrates an auto-encoder with long short-term memory (LSTM) networks and a self-attention mechanism for the anomaly detection of aero-engine time-series data. The dataset utilized in this study was simulated from real data and injected with fault information. A fault detection model is developed utilizing n… Show more
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