通过深度强化学习探索纳米簇势能面:全局最小搜索策略。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-10-24 Epub Date: 2024-10-13 DOI:10.1021/acs.jpca.4c04416
Rajesh K Raju
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引用次数: 0

摘要

在纳米团簇中寻找全局最小(GM)配置的过程因错综复杂的势能景观而变得复杂,其中充斥着大量局部最小值。随着纳米团簇大小和组成多样性的增加,这些势能图的复杂性也在增加。遗传算法等进化算法的收敛速度较慢,而且容易过早地找到次优解。同样,盆地跳跃技术也难以有效驾驭这些复杂的景观,尤其是在较大尺度的情况下。这些挑战凸显出需要更先进的方法来有效扫描纳米团簇的势能面。为此,我们的研究开发了一种新颖的深度强化学习(DRL)框架,专门用于探索纳米团簇的势能面(PES),旨在识别 GM 配置和其他低能状态。这项研究证明了该框架在管理各种纳米簇类型(包括单金属和多金属成分)方面的有效性,以及在浏览复杂能量景观方面的熟练程度。该模型具有出色的适应性和持续效率,即使在集群规模和特征向量维度增大的情况下也是如此。DRL 在这种情况下表现出的适应性突显了它在材料科学领域的巨大潜力,特别是在高效发现和优化新型纳米材料方面。据我们所知,这是第一个为纳米簇中的 GM 搜索而设计的 DRL 框架,代表了该领域的重大创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Nanocluster Potential Energy Surfaces via Deep Reinforcement Learning: Strategies for Global Minimum Search.

The search for global minimum (GM) configurations in nanoclusters is complicated by intricate potential energy landscapes replete with numerous local minima. The complexity of these landscapes escalates with increasing cluster size and compositional diversity. Evolutionary algorithms, such as genetic algorithms, are hampered by slow convergence rates and a propensity for prematurely settling on suboptimal solutions. Likewise, the basin hopping technique faces difficulties in navigating these complex landscapes effectively, particularly at larger scales. These challenges highlight the need for more sophisticated methodologies to efficiently scan the potential energy surfaces of nanoclusters. In response, our research has developed a novel deep reinforcement learning (DRL) framework specifically designed to explore the potential energy surfaces (PES) of nanoclusters, aiming to identify the GM configurations along with other low-energy states. This study demonstrates the framework's effectiveness in managing various nanocluster types, including both mono- and multimetallic compositions, and its proficiency in navigating complex energy landscapes. The model is characterized by remarkable adaptability and sustained efficiency, even as cluster sizes and feature vector dimensions increase. The demonstrated adaptability of DRL in this context underscores its considerable potential in materials science, particularly for the efficient discovery and optimization of novel nanomaterials. To the best of our knowledge, this is the first DRL framework designed for the GM search in nanoclusters, representing a significant innovation in the field.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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