Abstrait

Genetic algorithms based on local variable weight synthesizing and its application to internal model control

Liu Jianchang, Chen Nan, Yu Xia


In this paper, a newobjective function of genetic algorithms based on local variable weight synthesizing is proposed to improve the imperfect selection of performance indicator and unclear weight distribution in objective function of controller parameters optimization. Using both error integral indicators and eigenvalues of the systemcalculated by local variableweight synthesizing as a parameters optimization objective function to achieve the purpose that eigenvalues of the system are all in a reasonable range and error integral values are smaller as well. Compared with traditional objective function, the modified objective function is more comprehensive, flexible and open.At last, applying it to the parameters optimization of internal model control and the simulation results have shown its effectiveness and superiority.


Indexé dans

  • CASS
  • Google Scholar
  • Ouvrir la porte J
  • Infrastructure nationale du savoir de Chine (CNKI)
  • CiterFactor
  • Cosmos SI
  • Répertoire d’indexation des revues de recherche (DRJI)
  • Laboratoires secrets des moteurs de recherche
  • Facteur d’impact des articles scientifiques (SAJI))
  • ICMJE

Voir plus

Flyer