Acoustic monitoring of an aircraft auxiliary power unit
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- @Article{AHMED:2023:isatra,
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author = "Umair Ahmed and Fakhre Ali and Ian Jennions",
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title = "Acoustic monitoring of an aircraft auxiliary power
unit",
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journal = "ISA Transactions",
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year = "2023",
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ISSN = "0019-0578",
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DOI = "doi:10.1016/j.isatra.2023.01.014",
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URL = "https://www.sciencedirect.com/science/article/pii/S0019057823000149",
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keywords = "genetic algorithms, genetic programming, Aircraft,
Auxiliary power unit, Condition monitoring, Acoustics,
Signal processing, Machine learning, Sensors, Feature
extraction, Fault detection, Microphones",
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abstract = "In this paper, the development and implementation of a
novel approach for fault detection of an aircraft
auxiliary power unit (APU) has been demonstrated. The
developed approach aims to target the proactive
identification of faults, in order to streamline the
required maintenance and maximize the aircraft's
operational availability. The existing techniques rely
heavily on the installation of multiple types of
intrusive sensors throughout the APU and therefore
present a limited potential for deployment on an actual
aircraft due to space constraints, accessibility issues
as well as associated development and certification
requirements. To overcome these challenges, an
innovative approach based on non-intrusive sensors
i.e., microphones in conjunction with appropriate
feature extraction, classification, and regression
techniques, has been successfully demonstrated for
online fault detection of an APU. The overall approach
has been implemented and validated based on the
experimental test data acquired from Cranfield
University's Boeing 737-400 aircraft, including the
quantification of sensor location sensitivities on the
efficacy of the acquired models. The findings of the
overall analysis suggest that the acoustic-based models
can accurately enable near real-time detection of
faulty conditions i.e., Inlet Guide Vane malfunction,
reduced mass flows through the Load Compressor and
Bleed Valve malfunction, using only two microphones
installed in the periphery of the APU. This study
constitutes an enabling technology for robust,
cost-effective, and efficient in-situ monitoring of an
aircraft APU and potentially other associated thermal
systems i.e., environmental control system, fuel
system, and engines",
- }
Genetic Programming entries for
Umair Ahmed
Fakhre Ali
Ian Jennions
Citations