Multifidelity domain-aware learning for the design of re-entry vehicles

Volume: 64, Issue: 5, Pages: 3017 - 3035
Published: Oct 4, 2021
Abstract
The multidisciplinary design optimization (MDO) of re-entry vehicles presents many challenges associated with the plurality of the domains that characterize the design problem and the multi-physics interactions. Aerodynamic and thermodynamic phenomena are strongly coupled and relate to the heat loads that affect the vehicle along the re-entry trajectory, which drive the design of the thermal protection system (TPS). The preliminary design and...
Paper Details
Title
Multifidelity domain-aware learning for the design of re-entry vehicles
Published Date
Oct 4, 2021
Volume
64
Issue
5
Pages
3017 - 3035
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