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Representing molecule-surface interactions with symmetry-adapted neural networks

机译:用对称适应的神经网络表示分子-表面相互作用

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摘要

The accurate description of molecule-surface interactions requires a detailed knowledge of the underlying potential-energy surface (PES). Recently, neural networks (NNs) have been shown to be an efficient technique to accurately interpolate the PES information provided for a set of molecular configurations, e.g., by first-principles calculations. Here, we further develop this approach by building the NN on a new type of symmetry functions, which allows to take the symmetry of the surface exactly into account. The accuracy and efficiency of such symmetry-adapted NNs is illustrated by the application to a six-dimensional PES describing the interaction of oxygen molecules with the Al(111) surface.
机译:分子表面相互作用的准确描述需要对潜在的势能表面(PES)的详细了解。最近,神经网络(NN)已被证明是一种有效的技术,例如通过第一原理计算,可以精确地内插为一组分子构型提供的PES信息。在这里,我们通过在一种新型的对称函数上构建NN来进一步开发这种方法,该函数可以精确考虑表面的对称性。这种对称适应的NN的准确性和效率通过应用到描述氧分子与Al(111)表面相互作用的六维PES来说明。

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