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
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