C(NN)FD -- deep learning predictions of tip clearance variations on multi-stage axial compressors aerodynamic performance

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C(NN)FD -- deep learning predictions of tip clearance variations on multi-stage axial compressors aerodynamic performance

Authors

Giuseppe Bruni, Sepehr Maleki, Senthil K. Krishnababu

Abstract

Application of deep learning methods to physical simulations such as CFD (Computational Fluid Dynamics), have been so far of limited industrial relevance. This paper demonstrates the development and application of a deep learning framework for real-time predictions of the impact of tip clearance variations on the aerodynamic performance of multi-stage axial compressors in gas turbines. The proposed C(NN)FD architecture is proven to be scalable to industrial applications, and achieves in real-time accuracy comparable to the CFD benchmark. The deployed model, is readily integrated within the manufacturing and build process of gas turbines, thus providing the opportunity to analytically assess the impact on performance and potentially reduce requirements for expensive physical tests.

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