A rare failure detection model for aircraft predictive maintenance using a deep hybrid learning approach

被引:0
|
作者
Maren David Dangut
Ian K. Jennions
Steve King
Zakwan Skaf
机构
[1] Cranfield University Bedfordshire,Integrated Vehicle Health Management Centre (IVHM)
[2] Higher Colleges of Technology,Mechanical Engineering Department
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关键词
Predictive maintenance; Deep learning; Extremely rare failure; Auto-encoder; GRU network; Aircraft;
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学科分类号
摘要
The use of aircraft operation logs to develop a data-driven model to predict probable failures that could cause interruption poses many challenges and has yet to be fully explored. Given that aircraft is high-integrity assets, failures are exceedingly rare. Hence, the distribution of relevant log data containing prior signs will be heavily skewed towards the typical (healthy) scenario. Thus, this study presents a novel deep learning technique based on the auto-encoder and bidirectional gated recurrent unit networks to handle extremely rare failure predictions in aircraft predictive maintenance modelling. The auto-encoder is modified and trained to detect rare failures, and the result from the auto-encoder is fed into the convolutional bidirectional gated recurrent unit network to predict the next occurrence of failure. The proposed network architecture with the rescaled focal loss addresses the imbalance problem during model training. The effectiveness of the proposed method is evaluated using real-world test cases of log-based warning and failure messages obtained from the fleet database of aircraft central maintenance system records. The proposed model is compared to other similar deep learning approaches. The results indicated an 18% increase in precision, a 5% increase in recall, and a 10% increase in G-mean values. It also demonstrates reliability in anticipating rare failures within a predetermined, meaningful time frame.
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页码:2991 / 3009
页数:18
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