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Learning from the density to correct total energy and forces in first principle simulations

机译:从密度学习以纠正第一原理模拟的总能量和力量

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摘要

We propose a new molecular simulation framework that combines the transferability, robustness, and chemical flexibility of an ab initio method with the accuracy and efficiency of a machine learning model. The key to achieve this mix is to use a standard density functional theory (DFT) simulation as a preprocessor for the atomic and molecular information, obtaining a good quality electronic density. General, symmetry preserving, atom-centered electronic descriptors are then built from this density to train a neural network to correct the baseline DFT energies and forces. These electronic descriptors encode much more information than local atomic environments, allowing a simple neural network to reach the accuracy required for the problem of study at a negligible additional cost. The balance between accuracy and efficiency is determined by the baseline simulation. This is shown in results where high level quantum chemical accuracy is obtained for simulations of liquid water at standard DFT cost or where high level DFT-accuracy is achieved in simulations with a low-level baseline DFT calculation at a significantly reduced cost. Published under license by AIP Publishing.
机译:我们提出了一种新的分子仿真框架,将AB Initio方法的可转移性,鲁棒性和化学灵活性与机器学习模型的准确性和效率相结合。实现这种混合的关键是使用标准密度泛函理论(DFT)模拟作为原子和分子信息的预处理器,获得优质的电子密度。一般,对称性保留,原子为中心的电子描述符,然后从这种密度构建以训练神经网络以校正基线DFT能量和力。这些电子描述符比局部原子环境编码更多信息,允许简单的神经网络以可忽略的额外成本达到研究问题所需的准确性。精度与效率之间的平衡由基线模拟决定。这在结果中显示了高水位量子化学精度,以便在标准DFT成本下模拟液态水或在模拟中实现高水平的DFT准确度,以低级别的基线DFT计算成本显着降低。通过AIP发布在许可证下发布。

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