SHE Chun-feng, YANG Hua-zhong, HU Guan-zhang, et al. The Convergence of Floating Genetic Algorithms and Its Application in Model Parameter Extraction[J]. Acta Electronica Sinica, 2000, 28(3): 134-136.
DOI:
SHE Chun-feng, YANG Hua-zhong, HU Guan-zhang, et al. The Convergence of Floating Genetic Algorithms and Its Application in Model Parameter Extraction[J]. Acta Electronica Sinica, 2000, 28(3): 134-136.DOI:
The Convergence of Floating Genetic Algorithms and Its Application in Model Parameter Extraction
Floating genetic algorithms (FGAs) are optimization methods simulating the natural evolution mechanism.FGAs have been widely used in science and technology by virtue of their simplicity
robustness
freedom of calculating the gradient of the objective function
high precision and the ability of solving multi-dimensional numerical problems.With the convergence analysis of FGAs
it is proved in this paper that FGAs with the fittest individual holding in each generation can converge to the global optimum while simple FGAs can not.In the light of the theoretical convergence analysis
improved FGAs with the fittest individual holding and the continuous mutation are proposed
which overcome the incompatibility between the high precision and low computational cost.The improved FGAs have been applied to extracting the semiconductor device model parameters
and have gained about 27% reduction to the computational cost.