Uncertainties in design variables and problem parameters are often inevitable and must be considered in an optimization task if reliable optimal solutions are sought. Besides a number of sampling techniques, there exist several mathematical approximations of a solution’s reliability. These techniques are coupled in various ways with optimization in the classical reliability-based optimization field. This paper demonstrates how classical reliability-based concepts can be borrowed and modified and, with integrated single and multiobjective evolutionary algorithms, used to enhance their scope in handling uncertainties involved among decision variables and problem parameters. Three different optimization tasks are discussed in which classical r...
Structural reliability technology provides analytical tools for management of uncertainty in all rel...
Probabilistic design, such as reliability-based design and robust design, offers tools for making re...
This paper examines a novel optimization technique called genetic algorithms and its application to ...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
A common trade-off in engineering design is between the reliability of a system and its expected per...
This paper studies the reliability-based multiobjective optimization by using a new interval strateg...
Within the robust design optimization, the statistical variability of the design parameter is consid...
Within the robust design optimization, the statistical variability of the design parameter is consid...
n this work, we propose an integrated framework for optimization under uncertainty that can bring bo...
Structural reliability technology provides analytical tools for management of uncertainty in all rel...
Probabilistic design, such as reliability-based design and robust design, offers tools for making re...
This paper examines a novel optimization technique called genetic algorithms and its application to ...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
Uncertainties in design variables and problem parameters are often inevitable and must be considered...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
In this paper, we combine reliability-based optimization with a multi-objective evolutionary algorit...
A common trade-off in engineering design is between the reliability of a system and its expected per...
This paper studies the reliability-based multiobjective optimization by using a new interval strateg...
Within the robust design optimization, the statistical variability of the design parameter is consid...
Within the robust design optimization, the statistical variability of the design parameter is consid...
n this work, we propose an integrated framework for optimization under uncertainty that can bring bo...
Structural reliability technology provides analytical tools for management of uncertainty in all rel...
Probabilistic design, such as reliability-based design and robust design, offers tools for making re...
This paper examines a novel optimization technique called genetic algorithms and its application to ...