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基于量子化学与机器学习的矿物浮选理论研究进展

吴志强 陆夏弈 李征 陈晔

矿产保护与利用2026,Vol.46Issue(2):23-42,20.
矿产保护与利用2026,Vol.46Issue(2):23-42,20.DOI:10.13779/j.cnki.issn1001-0076.2025.12.006

基于量子化学与机器学习的矿物浮选理论研究进展

Research Progress on Mineral Flotation Theory Based on Quantum Chemistry and Machine Learning

吴志强 1陆夏弈 2李征 2陈晔2

作者信息

  • 1. 广西大学 化学化工学院,广西 南宁 530004
  • 2. 广西大学 资源环境与材料学院,广西有色金属及特色材料加工重点实验室,有色金属及材料加工新技术教育部重点实验室,广西 南宁 530004
  • 折叠

摘要

Abstract

Flotation is a core technology for mineral separation in mineral processing,and the analysis of its mechanism is crucial for optimizing the process and developing efficient reagents.However,traditional quantum chemical calculations are limited by high costs and model scale,making it difficult to simulate multi-component actual flotation systems and accurately describe the dynamic interactions at the interface between minerals,reagents,and water,thus restricting the depth of mechanism research.The collaborative application of quantum chemistry and machine learning retains the high-precision description of interatomic interactions from the former while leveraging the latter to enhance computational efficiency,opening up a new path for flotation mechanism research.This paper reviews the application progress of quantum chemistry in the field of mineral flotation,presenting research advancements in the study of mineral surface geometry and electronic properties,reagent design,and the analysis of the mechanism of reagent-mineral interface interactions.It also highlights the advantages of quantum chemistry-driven machine learning methods in high-throughput screening of reagents,which can significantly shorten the screening cycle and efficiently explore the structure-activity relationship of reagents.The paper further looks forward to the application prospects of this method in the calculation of complex interface reaction systems.At the same time,it points out the challenges currently faced in large-scale system computational efficiency,water layer simulation,and multi-parameter simulation under temperature changes.In the future,it is expected that by combining quantum chemistry calculations with machine learning,models that can simultaneously reflect atomic-level interactions and the overall flotation process can be constructed,thereby more accurately describing the dynamic process of reagent-mineral interactions.

关键词

机器学习/量子化学/浮选机理/界面作用机理/药剂设计

Key words

machine learning/quantum chemistry/flotation mechanism/interface reaction mechanism/reagent design

分类

矿业与冶金

引用本文复制引用

吴志强,陆夏弈,李征,陈晔..基于量子化学与机器学习的矿物浮选理论研究进展[J].矿产保护与利用,2026,46(2):23-42,20.

基金项目

广西科技发展专项资金项目(桂科AD25069078) (桂科AD25069078)

矿产保护与利用

1001-0076

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