On Using Machine Learning to Early Detect Catastrophic Failures in Marine Diesel Engines
Francesco Maione, Paolo Lino, Giuseppe Giannino, Guido Maione

TL;DR
This paper introduces a machine learning approach using derivatives of sensor deviations and Random Forests for early detection of catastrophic marine engine failures, enabling timely warnings and preventive actions.
Contribution
It presents a novel method that employs derivatives of deviations and machine learning to detect sudden engine failures earlier than traditional threshold-based alarms.
Findings
Effective early detection of failures before critical thresholds
Validation confirms robustness on real-world data
Method allows timely preventive actions
Abstract
Catastrophic failures of marine engines imply severe loss of functionality and destroy or damage the systems irreversibly. Being sudden and often unpredictable events, they pose a severe threat to navigation, crew, and passengers. The abrupt nature makes early detection the only effective countermeasure. However, research has concentrated on modeling the gradual degradation of components, with limited attention to sudden and anomalous phenomena. This work proposes a new method for early detection of catastrophic failures. Based on real data from a failed engine, the approach evaluates the derivatives of the deviation between actual sensor readings and expected values of engine variables. Predictions are obtained by a Random Forest, which is the most suitable Machine Learning algorithm among the tested ones. Traditional methods focus on deviations of monitored signals, whereas the…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Maritime Transport Emissions and Efficiency · Reliability and Maintenance Optimization
