Volume 6: Ceramics; Controls, Diagnostics, and Instrumentation; Education; Manufacturing Materials and Metallurgy 2018
DOI: 10.1115/gt2018-76887
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A Benchmarking Analysis of a Data-Driven Gas Turbine Diagnostic Approach

Abstract: In an effort to better compare particular gas turbine diagnostic solutions and recommend the best solution, the software tool called Propulsion Diagnostic Method Evaluation Strategy (ProDiMES) has been developed. This benchmarking platform includes a simulator of the aircraft engine fleet with healthy and faulty engines. The platform presents a public approach, at which different investigators can verify and compare their algorithms for the diagnostic stages of feature extraction, fault detection, and fault id… Show more

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Cited by 10 publications
(29 citation statements)
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“…However, the difference in comparison with SVM remains small (0.86% for RELM and 1.13% for RELM-SRC). In this case, the increase of the number of training samples (from 760 to 1900 engines) does not produce a significant improvement in P since there is a general increase of 0.69% without considering PNN (the method was excluded for further analysis in [23]). In the third configuration, the hybrid approach wins by 1.31% compared to SVM.…”
Section: Comparison Of Diagnostic Frameworkmentioning
confidence: 99%
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“…However, the difference in comparison with SVM remains small (0.86% for RELM and 1.13% for RELM-SRC). In this case, the increase of the number of training samples (from 760 to 1900 engines) does not produce a significant improvement in P since there is a general increase of 0.69% without considering PNN (the method was excluded for further analysis in [23]). In the third configuration, the hybrid approach wins by 1.31% compared to SVM.…”
Section: Comparison Of Diagnostic Frameworkmentioning
confidence: 99%
“…The models are assessed quantitatively with coefficient determination and then applied to the ProDiMES turbofan engine fleet to perform anomaly detection. Using different diagnosis analysis and validation data, Loboda et al [23] benchmarked a data-driven gas turbine diagnostic methodology based on three well-known methods: (1) multi-layer perceptron, (MLP) whose learning process consists of looking for such weight and bias coefficients that minimize the error through the backpropagation algorithm. The output is a measure of the closeness of an input sample and a class.…”
Section: Introductionmentioning
confidence: 99%
“…As reported by Litt, Parker, and Chatterjee (2003), the degradation trajectories tend to become more linear as the engine ages. Loboda et al, (2018) employed polynomial functions to plot measurement deviation trends for fleet engines. Differently, we applied an AANN to predict gradual deterioration in terms of isentropic efficiency and flow capacity indices.…”
Section: Short-term Fault Diagnostics Using Aannmentioning
confidence: 99%
“…Instead, as shown in Figure 7, a MLP was applied to estimate IPC and HPC bleed valve leakage faults for the target turbofan engine. MLP is one of the most commonly applied ANN methods in gas turbine diagnostics (Loboda et al, 2018). The engine gas path measurements and two parameters related to magnitude of the two bleed valve leakages were input and output of the structure, respectively.…”
Section: Bleed Valve Leakage Identification Using Mlpmentioning
confidence: 99%
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