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金属矿山 ›› 2026, Vol. 55 ›› Issue (4): 213-219.

• ·机电信息工程· • 上一篇    下一篇

模型反演驱动的磨矿过程可磨性在线辨识与人机协同操作#br# #br#

骆 俊,汪健坤   

  1. 中钢集团马鞍山矿山研究总院股份有限公司,安徽 马鞍山 243000
  • 出版日期:2026-04-15 发布日期:2026-05-09
  • 通讯作者: 汪健坤(2000—),男,硕士研究生。
  • 作者简介:骆 俊(1985—),男,高级工程师。
  • 基金资助:
    安徽省重点研发计划项目(编号:202104a05020025);中钢集团马鞍山矿山研究总院股份有限公司院一级研发项目(编号:054-24YF-
    67-0002)。

Online Identification of Ore Grindability and Human-Machine Cooperative Control in Grinding Process Based on Mechanistic Model Inversion#br#

LUO Jun,WANG Jiankun   

  1. Sinosteel Maanshan General Institute of Mining Research Co. ,Ltd. ,Maanshan 243000,China
  • Online:2026-04-15 Published:2026-05-09

摘要: 针对磨矿过程中因核心扰动源———矿石可磨性无法在线测量,导致生产控制依赖主观经验、调节滞后
且能耗高的问题,本文提出一种基于耦合机理模型反演的在线辨识新方法。该方法的核心创新在于,通过参数化建
模将描述矿石破碎特性的高维选择函数矩阵,降维为一个具有明确物理意义的无量纲“在线可磨性指数”(Kg ),从而
将复杂的病态反演问题转化为鲁棒的单变量参数寻优问题。通过利用分布式控制系统(DCS)中易于实时获取的磨机
功率与循环负荷作为观测量,在线最小化机理模型预测值与实际测量值之间的偏差,实现Kg 值的动态估计。进一步,
基于Kg 辨识结果构建了标准化操作预案(SOP),形成人机协同操作策略。动态仿真验证表明,该方法能准确、快速地
跟踪矿石可磨性变化;与依赖经验的操作模式相比,应用所提策略可使产品粒度(P80 )最大偏差降低73. 4%,调节时
间缩短66. 7%,粒度合格率从68%提升至92%,并能在矿石易磨时提升3. 7%的系统处理量,实现了显著的提质、稳产
与增效。本研究为磨矿过程从被动滞后控制向主动预见性优化控制的范式转变提供了有效的理论方案与技术途径。

关键词: 磨矿 , 可磨性 , 在线辨识 , 机理模型 , 模型反演 , 操作优化

Abstract: To address the issue in the grinding process where the core disturbance—ore grindability—cannot be measured
online,leading to production control that relies on subjective experience,delayed adjustments,and high energy consumption,
this paper proposes a novel online identification method based on the inversion of a coupled mechanistic model. The core
innovation of this method lies in reducing the dimensionality of the high-dimensional selection function matrix,which describes
ore breakage characteristics,into a dimensionless " online grindability index" (Kg ) with clear physical significance through
parametric modeling. This transforms a complex ill-posed inverse problem into a robust single-variable parameter optimization
problem. By utilizing easily accessible real-time measurements from the Distributed Control System (DCS)—specifically,mill
power and circulating load—as observations,the method dynamically estimates the optimal Kg value by minimizing the deviation
between the mechanistic model predictions and actual measurements online. Furthermore,standardized operating procedures
(SOPs) are established based on the identified Kg to form a human-machine collaborative operation strategy. Dynamic
simulation verification demonstrates that the proposed method can accurately and rapidly track changes in ore grindability.
Compared to the experience-dependent operation mode,applying the proposed strategy can reduce the maximum deviation of
product particle size (P80) by 73. 4%,shorten the adjustment time by 66. 7%,increase the particle size qualification rate from
68% to 92%,and improve system throughput by approximately 3. 7% when the ore is easily grindable,achieving significant
quality improvement,production stabilization,and efficiency enhancement. This study provides an effective theoretical solution
and technical pathway for transforming the grinding process from passive,lagging control to active,predictive optimization control.

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