A Micro-Genetic Algorithm for Multiobjective Optim
2016-08-23
0 0 0
4.0
Other
Earn points
based on A Micro-Genetic Algorithm for Multiobjective Optimization paper developed by Gregorio Toscano Pulido .
a multiobjective optimization approach based on a micro genetic algorithm (micro-GA) which is a genetic algorithm with a very small population (four individuals were used in our experiment) and a reinitialization process. We use three forms of elitism and a memory to generate the initial population of the micro-GA. Our approach is tested with several standard functions found in the specialized literature. The results obtained are very encouraging, since they show that this simple approach can produce an important portion of the Pareto front at a very low computational cost.
a multiobjective optimization approach based on a micro genetic algorithm (micro-GA) which is a genetic algorithm with a very small population (four individuals were used in our experiment) and a reinitialization process. We use three forms of elitism and a memory to generate the initial population of the micro-GA. Our approach is tested with several standard functions found in the specialized literature. The results obtained are very encouraging, since they show that this simple approach can produce an important portion of the Pareto front at a very low computational cost.
c++
算法
目标
遗传
优化
Related Source Codes
Local Path Planning Algorithm - DWA Algorithm
0
0
no vote
Classic Interview Questions for Digital City Front
0
0
no vote
enDAQ-Shock-Data-Share-SRS-Blog
0
0
no vote
HDU-2553 N Queen Question
0
0
no vote
Calling chatGPT in a Windows application
0
0
no vote
No comment