Prediction Of Film Cooling Effectiveness On A Gas Turbine Blade Leading Edge Using Ann And Cfd

INTERNATIONAL JOURNAL OF TURBO & JET-ENGINES(2018)

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摘要
In this work, the area-averaged film cooling effectiveness (AAFCE) on a gas turbine blade leading edge was predicted by employing an artificial neural network (ANN) using as input variables: hole diameter, injection angle, blowing ratio, hole and columns pitch. The database used to train the network was built using computational fluid dynamics (CFD) based on a two level full factorial design of experiments. The CFD numerical model was validated with an experimental rig, where a first stage blade of a gas turbine was represented by a cylindrical specimen. The ANN architecture was composed of three layers with four neurons in hidden layer and Levenberg-Marquardt was selected as ANN optimization algorithm. The AAFCE was successfully predicted by the ANN with a regression coefficient R-2 < 0.99 and a root mean square error RMSE = 0.0038. The ANN weight coefficients were used to estimate the relative importance of the input parameters. Blowing ratio was the most influential parameter with relative importance of 40.36% followed by hole diameter. Additionally, by using the ANN model, the relationship between input parameters was analyzed.
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关键词
ANN, CFD, gas turbine blade, film cooling, design of experiments, optimization
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