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Exploring density functional subspaces with genetic algorithms

机译:用遗传算法探索密度功能子空间

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We use a genetic algorithm to explore the subspace of combination and parametrization patterns spanned by a set of popular exchange and correlation functional approximations. Using the well-balanced GMTKN30 benchmark database to guide the evolutionary process, we find that the genetic algorithm is able to recover variants of several popular generalized gradient approximation functionals and hybrid functionals. For the latter class, the algorithm is able to identify a reparametrized version of the three-parameter hybrid B3PW91, which shows significantly improved performance compared to conventional versions of B3PW91. Furthermore, the possible application of this algorithm to automatically construct so-called niche-functionalsspecially tailored to specific applicationsis demonstrated.
机译:我们使用遗传算法来探索由一组流行的交换和相关功能近似跨越的组合和参数化模式的子空间。 使用良好平衡的GMTKN30基准数据库引导进化过程,我们发现遗传算法能够恢复几种流行的广义梯度近似功能和混合功能的变体。 对于后一类,该算法能够识别三参数混合B3PW91的重新定义版本,其与传统版本的B3PW91相比显着提高了性能。 此外,可以应用该算法自动构建所谓的利基功能特定定制到特定的应用程序。

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