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Permutation invariant polynomial neural network approach to fitting potential energy surfaces. III. Molecule-surface interactions

机译:置换不变多项式神经网络方法拟合势能面。三,分子-表面相互作用

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The permutation invariant polynomial-neural network (PIP-NN) method for constructing highly accurate potential energy surfaces (PESs) for gas phase molecules is extended to molecule-surface interaction PESs. The symmetry adaptation in the NN fitting of a PES is achieved by employing as the input symmetry functions that fulfill both the translational symmetry of the surface and permutation symmetry of the molecule. These symmetry functions are low-order PIPs of the primitive symmetry functions containing the surface periodic symmetry. It is stressed that permutationally invariant cross terms are needed to avoid oversymmetrization. The accuracy and efficiency are demonstrated in fitting both a model PES for the H_2+ Cu(111) system and density functional theory points for the H_2+ Ag(111) system.
机译:用于构建气相分子的高精度势能表面(PES)的置换不变多项式神经网络(PIP-NN)方法已扩展到分子-表面相互作用PES。 PES NN拟合中的对称适应是通过使用输入对称函数来实现的,该函数既满足表面的平移对称性又满足分子的排列对称性。这些对称函数是包含表面周期对称性的原始对称函数的低阶PIP。需要强调的是,需要排列不变的交叉项,以避免过度对称。在针对H_2 + Cu(111)系统的模型PES和针对H_2 + Ag(111)系统的密度泛函理论点的拟合中,证明了准确性和效率。

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