The main intent of this work is the exploration of the rotor-only fan design-space to identify correlations between fan performance and enriched geometric and kinematic parameters. In particular, the aim is to derive a multidimensional “Balje chart”, where the main geometric and operational parameters are taken into account in addition to the specific speed and diameter, to guide a fan designer towards the correct choice of parameters such as hub solidity, blade number, hub-to-tip ratio. This multidimensional chart was built using performance data derived from a quasi-3D in-house software for axisymmetric blade analysis and then explored by means of machine learning techniques suitable for big data analysis. Principal Component Analysis (PCA) and Projection to Latent Structure (PLS) allowed finding optimal values of the main geometric parameters required by each specific speed/specific diameter pair.
A multi-dimensional extension of Balje chart for axial flow turbomachinery using artificial intelligence based meta-models / Angelini, G.; Corsini, A.; Delibra, G.; Tieghi, L.. - 1:(2019). ( ASME Turbo Expo 2019: Turbomachinery Technical Conference and Exposition, GT 2019 usa 2019) [10.1115/GT2019-91588].
A multi-dimensional extension of Balje chart for axial flow turbomachinery using artificial intelligence based meta-models
Angelini G.;Tieghi L.
2019-01-01
Abstract
The main intent of this work is the exploration of the rotor-only fan design-space to identify correlations between fan performance and enriched geometric and kinematic parameters. In particular, the aim is to derive a multidimensional “Balje chart”, where the main geometric and operational parameters are taken into account in addition to the specific speed and diameter, to guide a fan designer towards the correct choice of parameters such as hub solidity, blade number, hub-to-tip ratio. This multidimensional chart was built using performance data derived from a quasi-3D in-house software for axisymmetric blade analysis and then explored by means of machine learning techniques suitable for big data analysis. Principal Component Analysis (PCA) and Projection to Latent Structure (PLS) allowed finding optimal values of the main geometric parameters required by each specific speed/specific diameter pair.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



