Publication | Closed Access
Analytical and Neural Network Models for Gas Turbine Design and Off-Design Simulation #
85
Citations
6
References
2001
Year
Unknown Venue
EngineeringEnergy ModelingIndustrial EngineeringNumerical SimulationGas Turbine DesignComputer EngineeringNeural Network TrainingSystems EngineeringSimulationGas Turbine CombustionGas Turbine EngineModeling And SimulationNeural NetworksConversion SystemCompressorOff-design SimulationNeural Network ModelsFluid Machinery
This paper presents a gas turbine design and off-design model in which the difficulties due to lack of knowledge about stage-by-stage performance are overcome by constructing artificial machine maps through appropriate scaling techniques applied to generalized maps taken from the literature and validating them with test measurement data from real plants. In particular, off-design performance is obtained through compressor map modifications according to variable inlet guide vane closure. The set of equations of the developed analytical model is solved by a commercial package, which provides great flexibility in the choice of independent variables of the overall system. The results obtained from this simulator are used for neural network training: problems associated with the construction and use of neural networks are discussed and their capability as a tool for predicting machine performance is analyzed. This paper was presented at the ECOS'01 Conference in Turkey, July 4-6, 2001 and revised
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