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Constructing Grids for Molecular Quantum Dynamics Using an Autoencoder

机译:使用AutoEncoder构建用于分子量子动态的网格

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A challenge for molecular quantum dynamics (QD) calculations is the curse of dimensionality with respect to the nuclear degrees of freedom. A common approach that works especially well for fast reactive processes is to reduce the dimensionality of the system to a few most relevant coordinates. Identifying these can become a very difficult task, because they often are highly unintuitive. We present a machine learning approach that utilizes an autoencoder that is trained to find a low-dimensional representation of a set of molecular configurations. These configurations are generated by trajectory calculations performed on the reactive molecular systems of interest. The resulting low-dimensional representation can be used to generate a potential energy surface grid in the desired subspace. Using the G-matrix formalism to calculate the kinetic energy operator, QD calculations can be carried out on this grid. In addition to step-by-step instructions for the grid construction, we present the application to a test system.
机译:分子量子动力学(QD)计算的挑战是关于核自由度的维度诅咒。对于快速反应过程特别好的常用方法是将系统的维度降低到一些最相关的坐标。识别这些可能成为一项非常艰巨的任务,因为他们经常是高度不行性的。我们提出了一种机器学习方法,该方法利用培训的AutoEncoder,以找到一组分子配置的低维表示。这些配置是通过对感兴趣的反应分子系统执行的轨迹计算产生的。得到的低维表示可用于在所需子空间中生成潜在的能量表面电网。使用G-Matrix形式主义来计算动能运算符,可以在该网格上进行QD计算。除了网格结构的逐步说明外,我们还将应用程序介绍给测试系统。

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