On Using Machine Learning to Early Detect Catastrophic Failures in Marine Diesel Engines
arXiv cs.AI / 3/16/2026
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Key Points
- The article proposes a new method for early detection of catastrophic marine diesel engine failures by evaluating the derivatives of the deviation between actual sensor readings and expected engine variable values.
- A Random Forest model is used to generate predictions, with derivative-based features providing earlier indications of abnormal dynamics than traditional deviation-based signals.
- The approach aims to alert operators before measurements reach critical thresholds, enabling proactive shutdowns and route adjustments to enhance safety and reliability.
- Validation includes simulation results and real-world data, and a deep learning-based data augmentation procedure is employed to train the predictive algorithm.
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