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首页> 外文期刊>The Journal of Chemical Physics >Comparing the accuracy of high-dimensional neural network potentials and the systematic molecular fragmentation method: A benchmark study for all-trans alkanes
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Comparing the accuracy of high-dimensional neural network potentials and the systematic molecular fragmentation method: A benchmark study for all-trans alkanes

机译:比较高维神经网络电位和系统分子裂解方法的准确性:全反式烷烃的基准研究

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摘要

Many approaches, which have been developed to express the potential energy of large systems, exploit the locality of the atomic interactions. A prominent example is the fragmentation methods in which the quantum chemical calculations are carried out for overlapping small fragments of a given molecule that are then combined in a second step to yield the system's total energy. Here we compare the accuracy of the systematic molecular fragmentation approach with the performance of high-dimensional neural network (HDNN) potentials introduced by Behler and Parrinello. HDNN potentials are similar in spirit to the fragmentation approach in that the total energy is constructed as a sum of environment-dependent atomic energies, which are derived indirectly from electronic structure calculations. As a benchmark set, we use all-trans alkanes containing up to eleven carbon atoms at the coupled cluster level of theory. These molecules have been chosen because they allow to extrapolate reliable reference energies for very long chains, enabling an assessment of the energies obtained by both methods for alkanes including up to 10 000 carbon atoms. We find that both methods predict high-quality energies with the HDNN potentials yielding smaller errors with respect to the coupled cluster reference. Published by AIP Publishing.
机译:已经开发出许多表达大型系统潜在能量的方法,它们利用了原子相互作用的局部性。一个著名的例子是碎片化方法,其中对给定分子的重叠小片段进行量子化学计算,然后在第二步中合并以产生系统的总能量。在这里,我们将系统分子碎片方法的准确性与Behler和Parrinello引入的高维神经网络(HDNN)电位的性能进行了比较。 HDNN电位在本质上与碎片化方法相似,因为总能量被构造为与环境有关的原子能的总和,这些原子能是从电子结构计算中间接得出的。作为基准设定,我们在理论的耦合簇水平上使用包含多达11个碳原子的全反式烷烃。选择这些分子是因为它们可以推断出非常长的链的可靠参考能量,从而可以评估两种方法所获得的含最多10000个碳原子的烷烃的能量。我们发现,这两种方法都可以预测高质量能量,而HDNN势能相对于耦合簇参考产生较小的误差。由AIP Publishing发布。

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