This paper presents two memetic algorithms to solve multi-objective min-max problems, such as the ones that arise in evidence-based robust optimization. Indeed, the solutions that minimize the design budgets are robust under epistemic uncertainty if they maximize the belief in the realization of the value of the design budgets. Thus robust solutions are found by minimizing with respect to the design variables the global maximum with respect to the uncertain variables. A number of problems, composed of functions whose uncertain space is modelled by means of Evidence Theory, and presenting multiple local maxima as well as concave, convex, and disconnected fronts, are used to test the performance of the proposed algorithms
The multiobjective optimization model studied in this paper deals with simultaneous minimization of ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
Abstract. Multi-objective evolutionary algorithms (MOEAs) have proven to be a powerful tool for glob...
This paper presents an evolutionary approach to solve the multi-objective min-max problem (MOMMP) th...
This paper presents a non-nested algorithm for the solution of multi-objective min-max problems (MOM...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
The paper presents a simple memetic algorithm for the solution of min-max problems. It will be shown...
This paper proposes a novel memetic algorithm for the solution of constrained min-max problems that ...
Min-max and min-min robustness are two extreme approaches discussed for single-objective robust opti...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
This work presents the state of the art in hierarchically decomposed multilevel optimization. This w...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Abstract. In this paper, an efficient multidisciplinary design optimization method based on evidence...
We investigate a general optimization problem with a linear objective in which the coefficients are ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
The multiobjective optimization model studied in this paper deals with simultaneous minimization of ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
Abstract. Multi-objective evolutionary algorithms (MOEAs) have proven to be a powerful tool for glob...
This paper presents an evolutionary approach to solve the multi-objective min-max problem (MOMMP) th...
This paper presents a non-nested algorithm for the solution of multi-objective min-max problems (MOM...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
The paper presents a simple memetic algorithm for the solution of min-max problems. It will be shown...
This paper proposes a novel memetic algorithm for the solution of constrained min-max problems that ...
Min-max and min-min robustness are two extreme approaches discussed for single-objective robust opti...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
This work presents the state of the art in hierarchically decomposed multilevel optimization. This w...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Abstract. In this paper, an efficient multidisciplinary design optimization method based on evidence...
We investigate a general optimization problem with a linear objective in which the coefficients are ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
The multiobjective optimization model studied in this paper deals with simultaneous minimization of ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
Abstract. Multi-objective evolutionary algorithms (MOEAs) have proven to be a powerful tool for glob...