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金属矿山 ›› 2026, Vol. 55 ›› Issue (5): 54-62.

• • 上一篇    下一篇

成本控制的模拟退火膏体充填双向决策优化研究

李 刚1,2 乔登攀1 杨天雨1   

  1. 1. 昆明理工大学国土资源工程学院,云南 昆明 650093;2. 贵州省矿山安全科学研究院有限公司,贵州 贵阳 550025
  • 出版日期:2026-05-15 发布日期:2026-06-02
  • 通讯作者: 乔登攀(1969—),男,教授,博士,博士研究生导师。
  • 作者简介:李 刚(1986—),男,正高级工程师,博士。
  • 基金资助:
    贵州省科技支撑项目(编号:黔科合重大专项[2021]3001);云南省科技厅青年基金项目(编号:2021 01AU070022)。

Study on Simulated Annealing Bidirectional Decision Optimization of Paste Filling Cost Control

LI Gang1,2 QIAO Dengpan1 YANG Tianyu1   

  1. 1. Faculty of Land Resource Engineering,Kunming University of Science and Technology,Kunming 650093,China;
    2. Guizhou Mine Safety Scientific Research Institute Co. ,Ltd. ,Guiyang 550025,China
  • Online:2026-05-15 Published:2026-06-02

摘要: 随着工业4. 0 时代的到来,矿山行业也在积极探索智能化和数字化转型,将物联网、人工智能等新兴技
术与膏体充填技术深度融合,能够使充填过程与质量控制更加精准高效,降低成本和能耗,对于进一步推动绿色矿山
建设意义重大。因此,针对充填决策中配合比最优化设计关键问题展开研究,提出了基于目标强度反演的双向决策
充填精准设计方法。通过模拟退火优化反馈与机器学习预测模型正向分析的有效结合,以及充填强度设计理论的灵
活运用,构建了一种充填强度与配合比双向决策的膏体配合比优化策略。设计了基于成本控制的最优化决策算法,
将工程应用实践中最为关键的成本核算指标,归纳为一个目标线性规划问题,构建了多约束条件下的成本最小化目
标函数,进一步支撑充填决策支持,实现膏体配合比数据的再优化、再筛选。以落凼矿区空场嗣后充填采矿方法为例,
对所提出的充填决策算法进行实践及分析,采用SLAM Studio 软件获取采场结构参数得到强度设计值,通过模拟退火
以及成本控制决策,得出最优化的膏体物料配合比组合,既满足强度要求以及输送条件,又达到了经济性工程目标,
表明提出的方法能够经济、高效地辅助充填工程应用。

关键词: 膏体充填 , 模拟退火 , 成本控制 , 强度反演 , 线性规划

Abstract: With the advent of the Industrial 4. 0 era,the mining industry is also actively exploring intelligent and digital
transformation. The deep integration of emerging technologies such as the Internet of Things and artificial intelligence with paste
filling technology can make the filling process and quality control more precise and efficient,reduce costs and energy consumption,
and is of great significance for further promoting the construction of green mines. Therefore,research has been conducted
on the key issue of the optimal design of the mix ratio in filling decisions,and a precise design method for bidirectional decision-
making filling based on target strength inversion has been proposed. By effectively combining the feedback of simulated annealing
optimization with the forward analysis of machine learning prediction models,as well as the flexible application of filling
strength design theory,a bidirectional decision-making paste mix ratio optimization strategy for filling strength and mix ratio has
been constructed. An optimization decision algorithm based on cost control has been designed,which reduces the most critical
cost accounting indicators in engineering practice to a target linear programming problem,and builds a cost minimization objective
function under multiple constraints,further supporting filling decision support and achieving the re-optimization and rescreening
of paste mix ratio data. Finally,taking the open stoping and subsequent filling mining method of Luodang mining area
as an example,the proposed filling decision-making algorithm was practiced and analyzed. The SLAM Studio software was used
to obtain the stope structural parameters and derive the strength design values. Through simulated annealing and cost control
decision-making,the optimized paste material mix ratio combination was obtained,which not only meets the strength requirements
and transportation conditions but also achieves the economic engineering goal. This indicates that the proposed method
can assist in filling engineering applications economically and efficiently.

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