Title of article :
Applied Pareto multi-objective optimization by stochastic solvers
Author/Authors :
Martيnez-Iranzo، نويسنده , , Miguel A. Herrero، نويسنده , , Juan M. and Sanchis-Llopis، نويسنده , , Javier and Blasco، نويسنده , , Xavier and Garcيa-Nieto، نويسنده , , Sergio، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
It is well known that many engineering design problems with different objectives, some of which can be opposed to one another, can be formulated as multi-objective functions and resolved with the construction of a Pareto front that helps to select the desired solution. Obtaining a correct Pareto front is not a trivial question, because it depends on the complexity of the objective functions to be optimized, the constraints to keep within and, in particular, the optimizer type selected to carry out the calculations. This paper presents new methods for Pareto front construction based on stochastic search algorithms (genetic algorithms, GAs and multi-objective genetic algorithms, MOGAs) that enable a very good determination of the Pareto front and fulfill some interesting specifications. The advantages of these applied methods will be proven by the optimization of well-known benchmarks for metallic supported I-beam and gearbox design.
Keywords :
Multi-objective genetic algorithms , Multi-Objective optimization , Pareto Front , Engineering design , Genetic algorithms
Journal title :
Engineering Applications of Artificial Intelligence
Journal title :
Engineering Applications of Artificial Intelligence