Alessandro Pescosolido
Development of a Data-Driven Framework for the Design and Multi-Objective Optimization of Transonic Turbine Cascades.
Rel. Andrea Ferrero, Sergio Lavagnoli. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Aerospaziale, 2026
|
Preview |
PDF (Tesi_di_laurea)
- Tesi
Licenza: Creative Commons Attribution Non-commercial No Derivatives. Download (83MB) | Preview |
Abstract
Turbomachinery remains a cornerstone technology for aviation, power generation, and industrial energy conversion. The aerodynamic design of turbine cascades is particularly challenging in the transonic regime, where locally supersonic regions, shock waves, and shock-boundary-layer interactions strongly affect performance and frequently lead to non-convergent simulations or physically inconsistent designs. These difficulties make brute-force design space exploration impractical even with fast two-dimensional solvers. This thesis develops a data-driven pipeline for rapid transonic 2D turbine cascades design and optimization. A neural network surrogate model is trained on a database of inviscid-viscous coupled simulations performed with MISES, learning to predict aerody- namic performance from blade geometry across a wide range of operating conditions defined by the duty vector (α1, α2, M2, Re) and the trailing edge thickness tT E as an additional design parameter.
Blade geometries are represented through the 21 param- eters of ParaBlade, an open-source Python framework implementing a constructive NURBS-based parametrization using conventional geometric design variables such as metal angles, leading and trailing edge radii, and thickness descriptors
Relatori
Anno Accademico
Tipo di pubblicazione
Numero di pagine
Corso di laurea
Classe di laurea
Ente in cotutela
Aziende collaboratrici
URI
![]() |
Modifica (riservato agli operatori) |
