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首页> 外文期刊>The Journal of Chemical Physics >Active learning of many-body configuration space: Application to the Cs+-water MB-nrg potential energy function as a case study
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Active learning of many-body configuration space: Application to the Cs+-water MB-nrg potential energy function as a case study

机译:主动学习许多身体配置空间:应用于CS + -WATER MB-NRG势能功能作为案例研究

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摘要

The efficient selection of representative configurations that are used in high-level electronic structure calculations needed for the development of many-body molecular models poses a challenge to current data-driven approaches to molecular simulations. Here, we introduce an active learning (AL) framework for generating training sets corresponding to individual many-body contributions to the energy of an N-body system, which are required for the development of MB-nrg potential energy functions (PEFs). Our AL framework is based on uncertainty and error estimation and uses Gaussian process regression to identify the most relevant configurations that are needed for an accurate representation of the energy landscape of the molecular system under examination. Taking the Cs+-water system as a case study, we demonstrate that the application of our AL framework results in significantly smaller training sets than previously used in the development of the original MB-nrg PEF, without loss of accuracy. Considering the computational cost associated with high-level electronic structure calculations, our AL framework is particularly well-suited to the development of many-body PEFs, with chemical and spectroscopic accuracy, for molecular-level computer simulations from the gas to the condensed phase.
机译:在许多身体分子模型开发所需的高级电子结构计算中使用的代表性配置的有效选择构成了对当前数据驱动的分子模拟方法的挑战。这里,我们介绍了一种主动学习(A1)框架,用于生成与个体许多贡献对应的训练集,该训练集对N-Bond系统的能量进行了开发MB-NRG电位能量功能(PEF)所必需的。我们的AL框架基于不确定性和错误估计,并使用高斯进程回归来识别所需分子系统的能量景观所需的最相关的配置。以CS + -Water系统为例,我们证明我们的AL框架的应用结果比以前在原始MB-NRG PEF的开发中使用的培训集明显更小,而不会损失准确性。考虑到与高电平电子结构计算相关的计算成本,我们的Al框架特别适合于许多身体PEF的发展,以化学和光谱精度,用于从气体到冷凝相的分子水平计算机模拟。

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