AIAA AVIATION 2023 Forum 2023
DOI: 10.2514/6.2023-4261
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Efficient Acquisition Functions for Bayesian Optimization in the Presence of Hidden Constraints

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“…However, computational codes like multidisciplinary sizing codes can crash or cause unexpected errors [148] and therefore, in that case, there is a need to account for unpredictable input points through "hidden constraints". In that context, Tfaily et al [224] developed a method to account for such constraints that need to be inte-grated in our algorithms still. Moreover, our works have been realized in Python, in both the SMT toolbox [27,208] for the GP surrogates and in SEGOMOE toolbox [12] for the multi-objective BO under constraints.…”
Section: Limitations and Perspectivesmentioning
confidence: 99%
“…However, computational codes like multidisciplinary sizing codes can crash or cause unexpected errors [148] and therefore, in that case, there is a need to account for unpredictable input points through "hidden constraints". In that context, Tfaily et al [224] developed a method to account for such constraints that need to be inte-grated in our algorithms still. Moreover, our works have been realized in Python, in both the SMT toolbox [27,208] for the GP surrogates and in SEGOMOE toolbox [12] for the multi-objective BO under constraints.…”
Section: Limitations and Perspectivesmentioning
confidence: 99%