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引用次数: 0
摘要
机器学习(ML)势(如高斯近似势(GAP))在映射不同系统的结构和性质方面表现出了令人印象深刻的能力。在此,我们介绍了低维镍纳米团簇的 GAP 模型,并展示了该模型在捕捉镍纳米团簇在广泛尺寸范围内的能量、结构多样性和热力学性质方面的灵活性和有效性。通过包括模型开发、验证和应用在内的系统方法,我们评估了该模型在表示低维环境中的能量和构型特征方面的功效,同时还检验了该模型对截然不同的时空环境的外推性质。我们的分析和讨论揭示了有效训练此类模型所需的数据质量。使用图神经网络等数据驱动模型分析 GAP 模型的大规模 MD 模拟轨迹,揭示了多孔镍纳米粒子随尺寸变化的相行为和热力学稳定性特征。总之,我们的工作凸显了 ML 模型的潜力,它与数据驱动方法相结合,可作为研究低维系统和复杂材料动力学的多功能工具。
Development of a Machine Learning Potential to Study the Structure and Thermodynamics of Nickel Nanoclusters.
Machine learning (ML) potentials such as the Gaussian approximation potential (GAP) have demonstrated impressive capabilities in mapping structure to properties across diverse systems. Here, we introduce a GAP model for low-dimensional Ni nanoclusters and demonstrate its flexibility and effectiveness in capturing the energetics, structural diversity, and thermodynamic properties of Ni nanoclusters across a broad size range. Through a systematic approach encompassing model development, validation, and application, we evaluate the model's efficacy in representing energetics and configurational features in low-dimensional regimes while also examining its extrapolative nature to vastly different spatiotemporal regimes. Our analysis and discussion shed light on the data quality required to effectively train such models. Trajectories from large-scale MD simulations using the GAP model analyzed with data-driven models like graph neural networks reveal intriguing insights into the size-dependent phase behavior and thermomechanical stability characteristics of porous Ni nanoparticles. Overall, our work underscores the potential of ML models, which coupled with data-driven approaches serve as versatile tools for studying low-dimensional systems and complex material dynamics.
期刊介绍:
The Journal of Physical Chemistry A is devoted to reporting new and original experimental and theoretical basic research of interest to physical chemists, biophysical chemists, and chemical physicists.