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首页> 外文期刊>Npj Computational Materials >Completing density functional theory by machine learning hidden messages from molecules
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Completing density functional theory by machine learning hidden messages from molecules

机译:通过机器学习来自分子的隐藏消息完成密度泛函理论

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Kohn-Sham density functional theory (DFT) is the basis of modern computational approaches to electronic structures. Their accuracy heavily relies on the exchange-correlation energy functional, which encapsulates electron-electron interaction beyond the classical model. As its universal form remains undiscovered, approximated functionals constructed with heuristic approaches are used for practical studies. However, there are problems in their accuracy and transferability, while any systematic approach to improve them is yet obscure. In this study, we demonstrate that the functional can be systematically constructed using accurate density distributions and energies in reference molecules via machine learning. Surprisingly, a trial functional machine learned from only a few molecules is already applicable to hundreds of molecules comprising various first- and second-row elements with the same accuracy as the standard functionals. This is achieved by relating density and energy using a flexible feed-forward neural network, which allows us to take a functional derivative via the back-propagation algorithm. In addition, simply by introducing a nonlocal density descriptor, the nonlocal effect is included to improve accuracy, which has hitherto been impractical. Our approach thus will help enrich the DFT framework by utilizing the rapidly advancing machine-learning technique.
机译:Kohn-Maf密度功能理论(DFT)是现代计算电子结构的基础。它们的准确性严重依赖于交换相关能量功能,其封装了经典模型之外的电子 - 电子相互作用。由于其普遍形式仍然是未被发现的,以启发式方法构建的近似函数用于实际研究。然而,他们的准确性和可转移性存在问题,而任何系统的改善方法都尚不起。在这项研究中,我们证明可以通过机器学习使用准确的密度分布和能量来系统地构造功能。令人惊讶的是,从少数分子中学习的试验功能机器已经适用于数百个分子,该分子包括具有与标准功能相同的精度的各种第一和二排元素。这是通过使用柔性前馈神经网络相关的密度和能量来实现的,这允许我们通过背传播算法采用功能衍生物。另外,简单地通过引入非识别密度描述符,包括非识别效应以提高迄今为止是不切实际的。因此,我们的方法将通过利用快速推进的机器学习技术来帮助丰富DFT框架。

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