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首页> 外文期刊>The Journal of Chemical Physics >Using principal component analysis for neural network high-dimensional potential energy surface
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Using principal component analysis for neural network high-dimensional potential energy surface

机译:利用神经网络高维势能表面的主成分分析

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Potential energy surfaces (PESs) play a central role in our understanding of chemical reactions. Despite the impressive development of efficient electronic structure methods and codes, such computations still remain a difficult task for the majority of relevant systems. In this context, artificial neural networks (NNs) are promising candidates to construct the PES for a wide range of systems. However, the choice of suitable molecular descriptors remains a bottleneck for these algorithms. In this work, we show that a principal component analysis (PCA) is a powerful tool to prepare an optimal set of descriptors and to build an efficient NN: this protocol leads to a substantial improvement of the NNs in learning and predicting a PES. Furthermore, the PCA provides a means to reduce the size of the input space (i.e., number of descriptors) without losing accuracy. As an example, we applied this novel approach to the computation of the high-dimensional PES describing the keto-enol tautomerism reaction occurring in the acetone molecule.
机译:潜在的能量表面(PES)在我们对化学反应的理解中起着核心作用。尽管有高效的电子结构方法和代码的发展令人印象深刻,但这种计算仍然是大多数相关系统的艰巨任务。在这种情况下,人工神经网络(NNS)是承诺候选人,用于构建各种系统的PE。然而,合适的分子描述符的选择仍然是这些算法的瓶颈。在这项工作中,我们表明主成分分析(PCA)是准备最佳描述符集的强大工具,并建立高效的NN:该协议导致NNS在学习和预测PES中的大幅改善。此外,PCA提供了减少输入空间(即,描述符数量)的大小而不失去精度的方法。作为一个例子,我们将这种新方法应用于描述在丙酮分子中发生的酮烯互变异构体反应的高尺寸PE的计算。

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