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The many-body expansion combined with neural networks

机译:许多身体扩展与神经网络相结合

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Fragmentation methods such as the many-body expansion (MBE) are a common strategy to model large systems by partitioning energies into a hierarchy of decreasingly significant contributions. The number of calculations required for chemical accuracy is still prohibitively expensive for the ab initio MBE to compete with force field approximations for applications beyond single-point energies. Alongside the MBE, empirical models of ab initio potential energy surfaces have improved, especially non-linear models based on neural networks (NNs) which can reproduce ab initio potential energy surfaces rapidly and accurately. Although they are fast, NNs suffer from their own curse of dimensionality; they must be trained on a representative sample of chemical space. In this paper we examine the synergy of the MBE and NN's and explore their complementarity. The MBE offers a systematic way to treat systems of arbitrary size while reducing the scaling problem of large systems. NN's reduce, by a factor in excess of 10(6), the computational overhead of the MBE and reproduce the accuracy of ab initio calculations without specialized force fields. We show that for a small molecule extended system like methanol, accuracy can be achieved with drastically different chemical embeddings. To assess this we test a new chemical embedding which can be inverted to predict molecules with desired properties. We also provide our open-source code for the neural network many-body expansion, Tensormol. Published by AIP Publishing.
机译:诸如许多身体扩展(MBE)之类的碎片方法是通过将能量分配到大量显着贡献的层次结构中来模拟大型系统的共同策略。化学精度所需的计算次数对于AB Initio MBE仍然对竞争性场近似来说仍然非常昂贵,以便超出单点能量的应用。除了MBE旁边,AB Initio潜在能量表面的经验模型已经改进,特别是基于神经网络(NNS)的非线性模型,其可以快速且准确地再现AB Initio潜在能量表面。虽然它们很快,但NNS遭受了自己的维度诅咒;他们必须在化学空间的代表性样本上培训。在本文中,我们研究了MBE和NN的协同作用,并探讨了他们的互补性。 MBE提供了一种系统的方法来处理任意大小的系统,同时减少大型系统的缩放问题。 NN的减少,超过10(6)的因素,MBE的计算开销并再现AB Initio计算的准确性,而无需专门的力场。我们表明,对于甲醇等小分子扩展系统,可以通过众所周置不同的化学嵌入来实现精度。为了评估这一点,我们测试新的化学嵌入,可以倒置以预测具有所需性质的分子。我们还为神经网络的开放源代码提供了全身扩展,Tensormol。通过AIP发布发布。

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