Dataset supporting the publication "Low–dimensional Models for Aerofoil Icing"
Dataset supporting the publication "Low–dimensional Models for Aerofoil Icing"
This dataset contains supplementary material in support of the journal article:
D Massegur, D Clifford, A Da Ronch, R Lombardi, M Panzeri (2022) "Low–dimensional Models for Aerofoil Icing", American Institute of Aeronautics and Astronautics, https://doi.org/10.2514/6.2022-3696
The data includes results from an adaptive sampling strategy to identify the critical icing conditions across the icing envelope for continuous intermittent icing; a classical proper orthogonal decomposition; and more modern neural network architectures. The variety in simulated ice profiles, ranging from smooth to rough and irregular shapes, motivated the use of an unsupervised classification of the icing envelope. This allowed deploying the proper orthogonal decomposition locally within each cluster, improving sensibly the prediction accuracy over the global model.
The data is presented in several zipped folders:
ice_shapes_CFD.zip (.dat files)
ice_shapes_ConvAE.zip (.dat files)
ice_shapes_localPOD.zip (.dat files)
ice_shapes_globalPOD.zip (.dat files)
University of Southampton
Da Ronch, Andrea
a2f36b97-b881-44e9-8a78-dd76fdf82f1a
Da Ronch, Andrea
a2f36b97-b881-44e9-8a78-dd76fdf82f1a
Da Ronch, Andrea
(2023)
Dataset supporting the publication "Low–dimensional Models for Aerofoil Icing".
University of Southampton
doi:10.5258/SOTON/D2584
[Dataset]
Abstract
This dataset contains supplementary material in support of the journal article:
D Massegur, D Clifford, A Da Ronch, R Lombardi, M Panzeri (2022) "Low–dimensional Models for Aerofoil Icing", American Institute of Aeronautics and Astronautics, https://doi.org/10.2514/6.2022-3696
The data includes results from an adaptive sampling strategy to identify the critical icing conditions across the icing envelope for continuous intermittent icing; a classical proper orthogonal decomposition; and more modern neural network architectures. The variety in simulated ice profiles, ranging from smooth to rough and irregular shapes, motivated the use of an unsupervised classification of the icing envelope. This allowed deploying the proper orthogonal decomposition locally within each cluster, improving sensibly the prediction accuracy over the global model.
The data is presented in several zipped folders:
ice_shapes_CFD.zip (.dat files)
ice_shapes_ConvAE.zip (.dat files)
ice_shapes_localPOD.zip (.dat files)
ice_shapes_globalPOD.zip (.dat files)
Archive
ice_shapes_CFD.zip
- Dataset
Archive
ice_shapes_ConvAE.zip
- Dataset
Archive
ice_shapes_localPOD.zip
- Dataset
Archive
ice_shapes_globalPOD.zip
- Dataset
Text
D2584-_README.txt
- Dataset
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More information
Published date: 1 April 2023
Identifiers
Local EPrints ID: 490476
URI: http://eprints.soton.ac.uk/id/eprint/490476
PURE UUID: 1867559d-c7b3-4c4e-b825-da5c95bf425c
Catalogue record
Date deposited: 28 May 2024 17:00
Last modified: 29 May 2024 01:45
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