A Review of Marine Engine Fault Diagnosis Technology
DOI:
https://doi.org/10.54097/90hfmy25Keywords:
Marine Engine Fault Diagnosis, Ship Engine, Gas Turbine, Automation, Digitalization, Data-Driven, Thermodynamic Model, Knowledge-Based DiagnosisAbstract
This review focuses on marine engine fault diagnosis technology, systematically organizing and analyzing fault diagnosis methods for ship engines and gas turbines. It elaborates on the application of automation and digitalization technologies in ship engine fault diagnosis, as well as various data-driven, thermodynamic model-based, and knowledge-based diagnostic methods for gas turbines. Practical case studies demonstrate the effectiveness of these technologies, while current challenges are discussed, and future development directions are outlined, aiming to provide a comprehensive reference for research and practice in this field.
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