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金属矿山 ›› 2026, Vol. 55 ›› Issue (2): 31-39.

• 采矿工程 • 上一篇    下一篇

基于多统计参数的岩石节理粗糙度系数集成树估测

李兵磊1 陈鈺瑶1 张化进1 刘德平2 李天龙3   

  1. 1. 福州大学紫金地质与矿业学院,福建 福州 350108;2. 紫金矿业集团股份有限公司紫金山金铜矿,福建 上杭 364200;
    3. 中冶集团铜锌有限公司,北京 100028
  • 出版日期:2026-02-15 发布日期:2026-03-02
  • 通讯作者: 张化进(1996—),男,讲师,博士,硕士研究生导师。
  • 作者简介:李兵磊(1982—),男,教授,博士,博士研究生导师。
  • 基金资助:
    福建省自然科学基金项目(编号:2022J01567)。

Ensemble Tree Estimation of Rock Joint Roughness Coefficient Based on Multiple Statistical Parameters

LI Binglei1 CHEN Yuyao1 ZHANG Huajin1 LIU Deping2 LI Tianlong3   

  1. 1. Zijin School of Geology and Mining,Fuzhou University,Fuzhou 350108,China;2. Zijinshan Gold-Copper Mine,
    Zijin Mining Group Co. ,Ltd. ,Shanghang 364200,China;3. MCC Tongsin Resources Co. ,Ltd. ,Beijing 100028,China
  • Online:2026-02-15 Published:2026-03-02

摘要: 针对单一统计参数和传统机器学习评估节理粗糙度系数准确性不足的难题,提出基于多统计参数的岩
石节理粗糙度系数集成树估测方法。基于112 条岩石节理粗糙度剖面线数据集,选取表征节理剖面几何形态的8 种
统计参数,构建袋装法、随机森林、极端随机树、自适应提升、极度梯度提升树、轻量级梯度提升机6 种代表性集成树模
型;结合贝叶斯算法优化其超参数,并与5 种传统单一机器学习模型对比,系统分析6 种集成树在节理粗糙度预测中
的适用性与性能差异。最后,通过沙普利可加性特征解释方法,揭示了集成树模型中各统计参数对节理粗糙度预测
结果的影响程度。研究结果表明,集成树模型预测效果整体优于传统单一机器学习模型,尤其是极端随机树模型,其
均方误差为0. 081 0,平均绝对误差为0. 066 6,决定系数高达0. 995 6,预测精度高,泛化能力强。本研究为岩石节理
粗糙度确定提供方法依据和借鉴,推荐采用极端随机树算法预测节理粗糙度系数。

关键词: 节理粗糙度 统计参数 集成树 贝叶斯优化 可解释性分析

Abstract: Aiming at the problem of insufficient accuracy of joint roughness coefficient evaluated by single statistical parameter
and traditional machine learning,an integrated tree estimation method of rock joint roughness coefficient based on multiple
statistical parameters is proposed. Based on the data set of 112 rock joint roughness profiles,eight statistical parameters
representing the geometric shape of joint profiles are selected,and six representative ensemble tree models,including bag method,
random forest,extreme random tree,adaptive lifting,extreme gradient lifting tree and lightweight gradient lifting tree,are
constructed. Combined with Bayesian algorithm to optimize its hyperparameters,and compared with five traditional single machine
learning models,the applicability and performance differences of six ensemble trees in joint roughness prediction are systematically
analyzed. Finally,the influence of each statistical parameter in the ensemble tree model on the prediction results of
joint roughness is revealed by Shapley additive feature interpretation method. The experimental results show that the prediction
effect of the integrated tree model is better than that of the traditional single machine learning model,especially the extreme
random tree model. The mean square error is 0. 081 0,the average absolute error is 0. 066 6,the coefficient of determination is
as high as 0. 995 6,the prediction accuracy is high,and the generalization ability is strong. This study provides a method basis
and reference for the determination of rock joint roughness,and it is recommended to use the extreme random tree algorithm to
predict the joint roughness coefficient.

Key words: joint roughness,statistical parameters,ensemble tree,Bayesian optimization,interpretability analysis

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