Stochastic optimization of a cold atom experiment using a genetic algorithm
arXiv:0810.4474 · doi:10.1063/1.3058756
Abstract
We employ an evolutionary algorithm to automatically optimize different stages of a cold atom experiment without human intervention. This approach closes the loop between computer based experimental control systems and automatic real time analysis and can be applied to a wide range of experimental situations. The genetic algorithm quickly and reliably converges to the most performing parameter set independent of the starting population. Especially in many-dimensional or connected parameter spaces the automatic optimization outperforms a manual search.
4 pages, 3 figures