人工智能技术在有色金属火法冶金中的应用进展
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中国恩菲工程技术有限公司, 北京 100038

作者简介:

金鑫(1989—),男,江苏常州人,博士,工程师,主要从事有色冶金过程多相反应流动方向的研究。

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TF8;TP183

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中国五矿集团有限公司集团公司青年科技基金(2024QNJJB02)


Review on the application of artificial intelligence in nonferrous metal pyrometallurgy
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China ENFI Engineering Corporation, Beijing 100038 , China

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    摘要:

    有色金属火法冶金是我国铜、铅、锌、镍等基础金属工业化提取的核心工艺,其高温、多相、强耦合的反应特征导致长期存在能效偏低、污染物排放强度高、过程控制精度不足等问题;而人工智能技术在冶金工业的应用正逐步深入,在提升效率、降低成本、保障安全与环保等方面展现出系统性价值。本研究基于“数据采集-参数预测-过程优化-设备运维”全链条视角,深入探讨了多模态传感网络构建、高温多相体系关键参数预测、多目标动态优化控制及设备状态智能诊断等核心技术在冶金工业的实现路径。目前,人工智能方法通过提升工艺参数在线检测精度、强化多变量协同调控能力及实现设备全生命周期管理,显著提高了冶炼过程能效与环境效益;但现有技术仍面临高温极端环境下数据质量波动、复杂工况下模型泛化能力受限、多时空尺度耦合机制解析不足等挑战。未来需重点发展物理信息融合建模方法、跨尺度动态优化算法及工业级智能决策系统,通过冶金热力学、过程系统工程与信息科学的深度交叉,构建面向绿色低碳目标的火法冶金智能技术体系。

    Abstract:

    Pyrometallurgy of non-ferrous metals is the core technology for the industrial extraction of base metals such as copper, lead, zinc and nickel in China. However, its high-temperature, multiphase, and strongly coupled reaction characteristics lead to long-standing issues such as low energy efficiency, high pollutant emissions, and insufficient process control accuracy. As artificial intelligence (AI) technologies continue to penetrate the metallurgical industry, they demonstrate systematic value in improving efficiency, reducing costs, and enhancing safety and environmental performance. This review, from a full-process perspective of “data acquisition-parameter prediction-process optimization-equipment maintenance,” comprehensively explores the implementation of key technologies, including multimodal sensor network construction, critical parameter prediction in high-temperature multiphase systems, multi-objective dynamic optimization control, and intelligent fault diagnosis. Studies show that AI-based methods significantly enhance process energy efficiency and environmental performance by improving the accuracy of online parameter monitoring, strengthening multivariable coordinated control, and enabling full-lifecycle management of critical equipment. Nonetheless, challenges remain, such as fluctuating data quality under extreme thermal conditions, limited model generalization in complex scenarios, and insufficient understanding of multi-scale spatiotemporal coupling mechanisms. Future research should focus on developing physics-informed modeling approaches, cross-scale dynamic optimization algorithms, and industrial-grade intelligent decision systems . Through the deep integration of metallurgical thermodynamics, process systems engineering, and information science, a smart pyrometallurgical technology framework aligned with green and low-carbon goals can be established.

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金鑫,陈学刚. 人工智能技术在有色金属火法冶金中的应用进展[J].中国有色冶金,2025,54(6):1-12.

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  • 收稿日期:2025-08-28
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  • 在线发布日期: 2025-12-26
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