Multi-objective optimization of complex engineering systems is a challenging problem. The design goals can exhibit dynamic and nonlinear behaviour with respect to the system's parameters. Additionally, modern engineering is driven by simulation-based design which can be computationally expensive due to the complexity of the system under study. Bayesian optimization (BO) is a popular technique to tackle this kind of problem. In multi-objective BO, a data-driven surrogate model is created for each design objective. However, not all of the objectives may be expensive to compute. We develop an approach that can deal with a mix of expensive and cheap-to-evaluate objective functions. As a result, the proposed technique offers lower complexity tha...
Black-box function optimization is a challenging problem worldwide. Bayesian Optimization is a power...
The advancements in science and technology in recent years have extended the scale of engineering pr...
Engineering design optimization problems increasingly require computationally expensive high-fidelit...
Multi-objective optimization of complex engineering systems is a challenging problem. The design goa...
Multi-objective Bayesian optimization (BO) is a highly useful class of methods that can effectively ...
In engineering design, it is commonplace to modify design parameters such that a set of properties o...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
International audienceThis article addresses the problem of derivative-free (single- or multi-object...
International audienceThis communication addresses the problem of derivative-free multi-objective op...
Optimizing multiple, non-preferential objectives for mixed-variable, expensive black-box problems is...
Optimization requires the quantities of interest that define objective functions and constraints to ...
In most engineering design problems, there exist multiple models of varying fidelities for use in pr...
National audienceThis communication addresses the problem of derivative-free multi-objective optimiz...
Bayesian optimization is a popular tool for optimizing time-consuming objective functions with a lim...
Summary: Bayesian optimization (BO) can accelerate material design requiring time-consuming experime...
Black-box function optimization is a challenging problem worldwide. Bayesian Optimization is a power...
The advancements in science and technology in recent years have extended the scale of engineering pr...
Engineering design optimization problems increasingly require computationally expensive high-fidelit...
Multi-objective optimization of complex engineering systems is a challenging problem. The design goa...
Multi-objective Bayesian optimization (BO) is a highly useful class of methods that can effectively ...
In engineering design, it is commonplace to modify design parameters such that a set of properties o...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
International audienceThis article addresses the problem of derivative-free (single- or multi-object...
International audienceThis communication addresses the problem of derivative-free multi-objective op...
Optimizing multiple, non-preferential objectives for mixed-variable, expensive black-box problems is...
Optimization requires the quantities of interest that define objective functions and constraints to ...
In most engineering design problems, there exist multiple models of varying fidelities for use in pr...
National audienceThis communication addresses the problem of derivative-free multi-objective optimiz...
Bayesian optimization is a popular tool for optimizing time-consuming objective functions with a lim...
Summary: Bayesian optimization (BO) can accelerate material design requiring time-consuming experime...
Black-box function optimization is a challenging problem worldwide. Bayesian Optimization is a power...
The advancements in science and technology in recent years have extended the scale of engineering pr...
Engineering design optimization problems increasingly require computationally expensive high-fidelit...