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首页> 外文期刊>International Journal of Quantum Chemistry >Neural network-based approaches for building high dimensional and quantum dynamics-friendly potential energy surfaces
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Neural network-based approaches for building high dimensional and quantum dynamics-friendly potential energy surfaces

机译:基于神经网络的方法来构建高维和量子动力学友好的势能面

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摘要

Development and applications of neural network (NN)-based approaches for representing potential energy surfaces (PES) of bound and reactive molecular systems are reviewed. Specifically, it is shown that when the density of ab initio points is low, NNs-based potentials with multibody or multimode structure are advantageous for representing high-dimensional PESs. Importantly, with an appropriate choice of the neuron activation function, PESs in the sum-of-products form are naturally obtained, thus addressing a bottleneck problem in quantum dynamics. The use of NN committees is also analyzed and it is shown that while they are able to reduce the fitting error, the reduction is limited by the nonrandom nature of the fitting error. The approaches described here are expected to be directly applicable in other areas of science and engineering where a functional form needs to be constructed in an unbiased way from sparse data. (c) 2014 Wiley Periodicals, Inc.
机译:审查了基于神经网络(NN)的方法来表示绑定和反应性分子系统的势能面(PES)的开发和应用。具体地,示出了当从头开始点的密度低时,具有多体或多模结构的基于NNs的电势对于表示高维PES是有利的。重要的是,与所述神经元的激活函数的适当选择,在的PES和 - 的副产物形式获得自然,从而解决在量子动力学一个瓶颈问题。还分析了神经网络委员会的使用情况,结果表明,尽管它们能够减少拟合误差,但其减少受到拟合误差的非随机性的限制。预期此处描述的方法可直接应用于其他科学和工程领域,在这些领域中,需要根据稀疏数据以无偏倚的方式构造功能形式。 (c)2014年威利期刊有限公司

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