Research on comparison of different algorithms in diagnosing faults of aircraft (aviation) engines
Keywords:
Aircraft engine, Fault diagnosis, Random forest, Particle swarm optimization-back-propagation, Air flow, Fuel-air ratioAbstract
For the aircraft, the engine is its core component. Once the engine fails, the flight safety will be seriously affected; therefore, it is necessary to diagnose the failure in time. This paper briefly introduced three aircraft engine fault diagnosis algorithms based on support vector machine (SVM), random forest, and particle swarm optimization-back-propagation (PSO-BP) and carried out a simulation experiment on the performance of the three algorithms in MATLAB software. The results showed that the PSO-BP-based diagnosis algorithm had the highest recognition accuracy and the SVM-based diagnosis algorithm had the lowest, both for artificial fault data and real fault data. The PSO-BP-based diagnosis algorithm took the least average recognition time, and the SVM-based diagnosis algorithm took the longest time.Downloads
Published
2021-10-04
Issue
Section
Original Papers
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