基于深度强化学习的铂纳米簇全局最小值识别。

IF 2.8 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Muhammad Usman, Muhammad Umar Farooq, Fuyi Chen
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引用次数: 0

摘要

由于势能面(PES)的复杂性,预测稳定的纳米团簇结构仍然是材料和纳米团簇研究中的一个重大挑战。为了克服这种复杂性,采用了一种新的深度强化学习(DRL)框架来有效地扫描PES并识别Pt13纳米簇和其他低能构型的全局最小值。DRL智能体根据奖励函数的反馈,通过调整原子位置,迭代地学习产生能量上有利的构型,奖励函数旨在促进结构稳定性,阻止不现实的几何形状,如重叠或分离原子。从随机初始结构出发,该模型成功地识别出具有二十面体对称的Pt₁₃最稳定的构型,并且该框架揭示了25种不同的低能异构体。通过对稳定结构的成功识别,验证了DRL框架的有效性。此外,密度泛函理论(DFT)计算通过计算聚能证实了Pt13纳米团簇的稳定性。负的内聚能证实了其稳定性,并在300 K时评价了其热力学稳定性。电荷、电子定位函数、电子密度、d带中心和态总密度表明,Pt13纳米团簇表现出高活性纳米催化剂的理想电子指纹。为了进一步验证DRL框架的适应性,我们在Pt10和Pt18上进行了实验。本研究强调了DRL在导航复杂能量景观、预测稳定纳米团簇配置以及优化纳米团簇方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep reinforcement learning for identifying the global minima of platinum nanoclusters.

Prediction of stable nanocluster structures remains a significant challenge in materials and nanocluster research due to the complex nature of potential energy surfaces (PES). To overcome this complexity, a novel deep reinforcement learning (DRL) framework was employed to efficiently scan the PES and identify the global minimum of the Pt13nanocluster alongside other low-energy configurations. The DRL agent iteratively learns to generate energetically favorable configurations by adjusting atomic positions based on feedback from a reward function designed to promote structural stability and discourage unrealistic geometries, such as overlapping or dissociating atoms. Starting from randomized initial structures, the model successfully identifies the most stable configuration of Pt13with icosahedral (Ih) symmetry, and the framework reveals 25 distinct low-energy isomers. The successful identification of a stable structure verifies the effectiveness of the DRL framework. Additionally, Density Functional Theory calculations confirm the stability of the Pt13nanocluster by finding the cohesive energy. The negative cohesive energy confirms the stability, and thermodynamic stability was also assessed at 300 K. The charge, electron localization function, electron density, d-band center, and total density of states indicate that Pt13nanoclusters exhibit the ideal electronic fingerprint of a highly active nano-catalyst. To further check the DRL framework's adaptability, we performed experiments on Pt10and Pt18. This study highlights the efficacy of DRL in navigating complex energy landscapes, predicting stable nanocluster configurations, and providing a robust methodology for optimizing nanoclusters.

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来源期刊
Nanotechnology
Nanotechnology 工程技术-材料科学:综合
CiteScore
7.10
自引率
5.70%
发文量
820
审稿时长
2.5 months
期刊介绍: The journal aims to publish papers at the forefront of nanoscale science and technology and especially those of an interdisciplinary nature. Here, nanotechnology is taken to include the ability to individually address, control, and modify structures, materials and devices with nanometre precision, and the synthesis of such structures into systems of micro- and macroscopic dimensions such as MEMS based devices. It encompasses the understanding of the fundamental physics, chemistry, biology and technology of nanometre-scale objects and how such objects can be used in the areas of computation, sensors, nanostructured materials and nano-biotechnology.
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