用于优化浮选选择性的增强型机器学习分子模拟:展望论文

IF 4.9 2区 工程技术 Q1 ENGINEERING, CHEMICAL Minerals Engineering Pub Date : 2024-10-10 DOI:10.1016/j.mineng.2024.109016
D. Dell’Angelo , Y. Foucaud , J. Mesquita , J. Lainé , H. Turrer , M. Badawi
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引用次数: 0

摘要

在泡沫浮选工业中回收有价值的矿物有赖于找到能选择性吸附表面和界面的廉价环保试剂。计算机模拟,尤其是扩展模拟,可提供有关溶剂配置的详细机理信息,并可确定吸附过程中的关键动态事件。此外,硅学高通量筛选可以避免高昂的实验成本和相关的环境风险。然而,必须在准确性和计算成本之间取得更好的平衡。机器学习(ML)模拟可以缓解后者的问题,并提出能够提高浮选效率的亲固试剂,为辨别能够准确捕捉分子与表面相互作用性质的描述符提供新的思路。在这项工作中,介绍了我们最近在基于主动学习 ab initio 分子动力学轨迹的新型精确矿物-水界面建模方面取得的进展。我们将以采矿业中释放的一些常见氧化物和矿物为例。
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Enhanced Machine Learning Molecular Simulations for optimization of flotation selectivity: A perspective paper
The recovery of valuable minerals in froth flotation industry relies on finding inexpensive and environmentally friendly reagents that selectively adsorb upon surfaces and interfaces. Computer simulations, especially when extended, provide access to detailed mechanistic information on solvent configurations and may ascertain crucial dynamical events over the adsorption process. Further, in silico throughput screening can prevent both the high cost of experiments and the related risks to the environment. Yet, a better compromise between accuracy and computational cost must be met. Machine learning (ML) simulations may ease the latter and suggest solidophilic reagents able to improve the flotation efficiency, shedding new light on discerning descriptors able to accurately capture the nature of the molecule-surface interaction. In this work, our recent advancements in modeling of new accurate mineral-water interfaces based on active learning of ab initio molecular dynamics trajectories have been introduced. The case of some habitual oxides and minerals liberated in mining industry will be taken as examples.
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来源期刊
Minerals Engineering
Minerals Engineering 工程技术-工程:化工
CiteScore
8.70
自引率
18.80%
发文量
519
审稿时长
81 days
期刊介绍: The purpose of the journal is to provide for the rapid publication of topical papers featuring the latest developments in the allied fields of mineral processing and extractive metallurgy. Its wide ranging coverage of research and practical (operating) topics includes physical separation methods, such as comminution, flotation concentration and dewatering, chemical methods such as bio-, hydro-, and electro-metallurgy, analytical techniques, process control, simulation and instrumentation, and mineralogical aspects of processing. Environmental issues, particularly those pertaining to sustainable development, will also be strongly covered.
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