Stochastic Gas Turbine Engine Models

作者: Gennady G. Kulikov , Haydn A. Thompson

DOI: 10.1007/978-1-4471-3796-2_12

关键词:

摘要: Previous chapters gave an overview of conventional methods for modelling gas turbines control purposes. This chapter provides basics stochastic using controllable Markov chain techniques. Accounting properties is essential engine at system test facilities, where the real-life environment simulated. In addition, technique a promising tool condition monitoring and optimal aero engines. also introduces novel fuzzy to further improve performance.

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