Title of article :
Gas-turbine diagnostics using artificial neural-networks for a high bypass ratio military turbofan engine
Author/Authors :
R. B. Joly، نويسنده , , S. O. T. Ogaji، نويسنده , , R. Singh، نويسنده , , S. D. Probert، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Pages :
22
From page :
397
To page :
418
Abstract :
The Tristar aircraft, operated by the Royal Air Force, fly many thousands of hours per year in the transport and air-to-air refuelling roles. A large amount of engine data is recorded for each of the Rolls-Royce RB211-524B4 engines: it is used to aid the maintenance process. Data are also generated during test-bed engine ground-runs after repair and overhaul. In order to use recorded engine data more effectively, this paper assesses the feasibility of a pro-active engine diagnostic-tool using artificial neural networks (ANNs). Engine-health monitoring is described and the theory behind an ANN is described. An engine diagnostic structure is proposed using several ANNs. The top level distinguishes between single-component faults (SCFs) and double-component faults (DCFs). The middle-level class includes components, or component pairs, which are faulty. The bottom level estimates the values of the engine-independent parameters, for each engine component, based on a set of engine data using dependent parameters. The DCF results presented in this paper illustrate the potential for ANNs as diagnostic tools. However, there are also a number of features of ANN applications that are user-defined: ANN designs; the number of training epochs used; the training function employed; the method of performance assessment; and the degree of deterioration for each engine-componentʹs performance parameter.
Journal title :
Applied Energy
Serial Year :
2004
Journal title :
Applied Energy
Record number :
414570
Link To Document :
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