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首页> 外文期刊>The Journal of Chemical Physics >The fitting of potential energy surfaces using neural networks: Application to the study of vibrational levels of H-3(+)
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The fitting of potential energy surfaces using neural networks: Application to the study of vibrational levels of H-3(+)

机译:神经网络对势能面的拟合:在H-3(+)振动能级研究中的应用

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摘要

A back-propagation neural network is utilized to fit the potential energy surfaces of the H-3(+) ion, using the ab initio data points of Dykstra and Swope, and the Meyer, Botschwina, and Burton ab initio data points. We used the standard back-propagation formulation and have also proposed a symmetric formulation to account for the symmetry of the H-3(+) molecule. To test the quality of the fits we computed the vibrational levels using the correlation function quantum Monte Carlo method. We have compared our results with the available experimental results and with results obtained using other potential energy surfaces. The vibrational levels are in very good agreement with the experiment and the back-propagation fitting is of the same quality of the available potential energy surfaces. (C) 1998 American Institute of Physics. [S0021-9606(98)30644-3]. [References: 31]
机译:利用Dykstra和Swope的从头算点以及Meyer,Botschwina和Burton的从头算点,利用反向传播神经网络拟合H-3(+)离子的势能面。我们使用了标准的反向传播配方,并提出了一种对称配方来说明H-3(+)分子的对称性。为了测试拟合的质量,我们使用相关函数量子蒙特卡罗方法计算了振动水平。我们将结果与可用的实验结果以及使用其他势能面获得的结果进行了比较。振动水平与实验非常吻合,并且反向传播配件与可用势能面的质量相同。 (C)1998美国物理研究所。 [S0021-9606(98)30644-3]。 [参考:31]

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