This work proposes a Bayesian optimization (BO) method for solving multi-objective robust design optimization (RDO) problems of steel frames under aleatory uncertainty in external loads and material properties. Joint and individual probabilistic constrained RDO problems are formulated to consider two different ways the frame reaches its collapse state. Each problem involves three conflicting objective functions, namely, the total mass of the frame, the mean and variance of the maximum inter-story drift. Since the uncertain objective and probabilistic constraint functions of both problems are implicit within a finite element analysis program and the computation of the probabilistic constraints is an NP-hard problem, BO is used to guide the o...
This contribution presents a general approach for solving structural design problems formulated as a...
The concept of performance-based design is considered in the framework of Robust Design Optimization...
Solutions to the deterministic design optimization cannot consider the uncertainties that may occur ...
This work proposes a Bayesian optimization (BO) method for solving multi-objective robust design opt...
This study presents a new random search method for solving discrete robust design optimization (RDO)...
A new method is presented for an application of the Gaussian mixture model (GMM) to a multi-objectiv...
In engineering problems the randomness and uncertainties are inherent, thus the scatter of structura...
In this work the uncertainty of a structural system is taken into account in the framework of a str...
This work presents a novel sequential sampling approach to the multi-objective reliability-based des...
Bayesian optimization is a popular tool for optimizing time-consuming objective functions with a lim...
A data-driven computational framework combining Bayesian regression for imperfection-sensitive quant...
In engineering problems, the randomness and uncertainties are inherent and the scatter of structural...
Design codes are migrating from prescriptive procedures intended to preserve life safety to reliabil...
Design codes are migrating from prescriptive procedures intended to preserve life safety to reliabil...
In this work attention is directed to general structural optimization problems considering discrete–...
This contribution presents a general approach for solving structural design problems formulated as a...
The concept of performance-based design is considered in the framework of Robust Design Optimization...
Solutions to the deterministic design optimization cannot consider the uncertainties that may occur ...
This work proposes a Bayesian optimization (BO) method for solving multi-objective robust design opt...
This study presents a new random search method for solving discrete robust design optimization (RDO)...
A new method is presented for an application of the Gaussian mixture model (GMM) to a multi-objectiv...
In engineering problems the randomness and uncertainties are inherent, thus the scatter of structura...
In this work the uncertainty of a structural system is taken into account in the framework of a str...
This work presents a novel sequential sampling approach to the multi-objective reliability-based des...
Bayesian optimization is a popular tool for optimizing time-consuming objective functions with a lim...
A data-driven computational framework combining Bayesian regression for imperfection-sensitive quant...
In engineering problems, the randomness and uncertainties are inherent and the scatter of structural...
Design codes are migrating from prescriptive procedures intended to preserve life safety to reliabil...
Design codes are migrating from prescriptive procedures intended to preserve life safety to reliabil...
In this work attention is directed to general structural optimization problems considering discrete–...
This contribution presents a general approach for solving structural design problems formulated as a...
The concept of performance-based design is considered in the framework of Robust Design Optimization...
Solutions to the deterministic design optimization cannot consider the uncertainties that may occur ...