AI RESEARCH
Transfer Learning in Bayesian Optimization for Aircraft Design
arXiv CS.LG
•
ArXi:2603.28999v1 Announce Type: cross The use of transfer learning within Bayesian optimization addresses the disadvantages of the so-called \textit{cold start} problem by using source data to aid in the optimization of a target problem. We present a method that leverages an ensemble of surrogate models using transfer learning and integrates it in a constrained Bayesian optimization framework. We identify challenges particular to aircraft design optimization related to heterogeneous design variables and constraints.