Many engineering optimization problems are multi-objective, constrained and have uncertainty in their inputs. For such problems it is desirable to obtain solutions that are multi-objectively optimum and robust. A robust solution is one that as a result of input uncertainty has variations in its objective and constraint functions which are within an acceptable range. This paper presents a new approximation-assisted MORO (AA-MORO) technique with interval uncertainty. The technique is a significant improvement, in terms of computational effort, over previously reported MORO techniques. AA-MORO includes an upper-level problem that solves a multi-objective optimization problem whose feasible domain is iteratively restricted by constraint cuts de...
This paper deals with multi- objective nonlinear programming problem having rough intervals in the c...
This paper is concerned with a trust region approximation management framework (AMF) for solving the...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Optimization of engineering systems under uncertainty often involves problems that have multiple obj...
Uncertainty is a very critical but inevitable issue in design optimization. Compared to single-objec...
In recent years, there has been an increasing interest in the multi-objective uncertain optimization...
This paper studies the reliability-based multiobjective optimization by using a new interval strateg...
This work presents a new approach for interval-based uncertainty analysis. The proposed approach int...
Multi-objective formulations are realistic models for many complex engineering optimization problems...
This article proposes an uncertain multi-objective multidisciplinary design optimization methodology...
In design and optimization problems, a solution which is stable enough in its variability in presenc...
In this paper, we propose non-parametric estimations of robustness and reliability measures approxim...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
In optimization studies including multi-objective optimization, the main focus is placed on finding ...
In realistic situations, engineering designs should take into consideration random aberrations from ...
This paper deals with multi- objective nonlinear programming problem having rough intervals in the c...
This paper is concerned with a trust region approximation management framework (AMF) for solving the...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Optimization of engineering systems under uncertainty often involves problems that have multiple obj...
Uncertainty is a very critical but inevitable issue in design optimization. Compared to single-objec...
In recent years, there has been an increasing interest in the multi-objective uncertain optimization...
This paper studies the reliability-based multiobjective optimization by using a new interval strateg...
This work presents a new approach for interval-based uncertainty analysis. The proposed approach int...
Multi-objective formulations are realistic models for many complex engineering optimization problems...
This article proposes an uncertain multi-objective multidisciplinary design optimization methodology...
In design and optimization problems, a solution which is stable enough in its variability in presenc...
In this paper, we propose non-parametric estimations of robustness and reliability measures approxim...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
In optimization studies including multi-objective optimization, the main focus is placed on finding ...
In realistic situations, engineering designs should take into consideration random aberrations from ...
This paper deals with multi- objective nonlinear programming problem having rough intervals in the c...
This paper is concerned with a trust region approximation management framework (AMF) for solving the...
In real-world applications of optimization, optimal solutions are often of limited value, because di...