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Parallel Multistream Training of High-Dimensional Neural Network Potentials

机译:高维神经网络电位的平行多级液训练

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Over the past years high-dimensional neural network potentials (HDNNPs), fitted to accurately reproduce ab initio potential energy surfaces, have become a powerful tool in chemistry, physics and materials science. Here, we focus on the training of the neural networks that lies at the heart of the HDNNP method. We present an efficient approach for optimizing the weight parameters of the neural network via multistream Kalman filtering, using potential energies and forces as reference data. In this procedure, the choice of the free parameters of the Kalman filter can have a significant impact on the fit quality. Carrying out a large parameter study, we determine optimal settings and demonstrate how to optimize training results of HDNNPs. Moreover, we illustrate our HDNNP training approach by revisiting previously presented fits for water and developing a new potential for copper sulfide. This material, accessible in computer simulations so far only via first-principles methods, forms a particularly complex solid structure at low temperatures and undergoes a phase transition to a superionic state upon heating. Analyzing MD simulations carried out with the Cu2S HDNNP, we confirm that the underlying ab initio reference method indeed reproduces this behavior.
机译:在过去几年中,高维神经网络电位(HDNNPS),旨在精确再现AB Initio潜在能量表面,已成为化学,物理和材料科学的强大工具。在这里,我们专注于培训位于HDNNP方法核心的神经网络。我们介绍了一种有效的方法,用于通过MultiStream Kalman滤波优化神经网络的权重参数,使用电位能量和力作为参考数据。在此过程中,卡尔曼滤波器的自由参数的选择可以对拟合质量产生显着影响。执行大型参数研究,我们确定最佳设置,并演示如何优化HDNNP的培训结果。此外,我们通过重新审视以前提出的水并为硫化铜开发新电位来说明我们的HDNNP培训方法。到目前为止通过第一原理方法可在计算机模拟中可访问这种材料,在低温下形成特别复杂的固体结构,并在加热时经历相位过渡到外部状态。分析使用CU2S HDNNP进行的MD模拟,我们确认底层AB Initio参考方法确实再现了这种行为。

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