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    新型混合重取样算法在岩爆预测中的应用

    谷琼 蔡之华 朱莉 王贤明

    谷琼, 蔡之华, 朱莉, 王贤明, 2010. 新型混合重取样算法在岩爆预测中的应用. 地球科学, 35(2): 311-316. doi: 10.3799/dqkx.2010.032
    引用本文: 谷琼, 蔡之华, 朱莉, 王贤明, 2010. 新型混合重取样算法在岩爆预测中的应用. 地球科学, 35(2): 311-316. doi: 10.3799/dqkx.2010.032
    GU Qiong, CAI Zhi-hua, ZHU Li, WANG Xian-ming, 2010. A Novel Hybrid Re-Sampling Algorithm and Its Application in Predicting Rockburst. Earth Science, 35(2): 311-316. doi: 10.3799/dqkx.2010.032
    Citation: GU Qiong, CAI Zhi-hua, ZHU Li, WANG Xian-ming, 2010. A Novel Hybrid Re-Sampling Algorithm and Its Application in Predicting Rockburst. Earth Science, 35(2): 311-316. doi: 10.3799/dqkx.2010.032

    新型混合重取样算法在岩爆预测中的应用

    doi: 10.3799/dqkx.2010.032
    基金项目: 

    国家高技术研究发展“863”计划 No.2009AA12Z117

    襄樊学院规划项目 No.2009YA012

    详细信息
      作者简介:

      谷琼(1973-),女,博士研究生,主要从事地学信息相关方面的智能计算等研究工作.E-mail: gujone@163.com

    • 中图分类号: TU457

    A Novel Hybrid Re-Sampling Algorithm and Its Application in Predicting Rockburst

    • 摘要: 针对岩爆现象发生的不均衡及发生机理受多因素影响的问题,在分析重取样技术的基础上,设计并实现了自适应选择近邻的混合重取样算法,并将其用于岩爆危险性预测.该方法结合过取样和欠取样方法的优势,改进了SMOTE过取样算法在产生合成样本过程中存在的盲目性及只能复制生成数值属性的问题,新算法能根据实例样本集内部分布的真实特性,自适应调整近邻选择策略,对不同属性的数据采取不同的复制方法生成新的少数类实例,控制和提高合成样本的质量;并通过对合成之后的数据集,用改进的邻域清理方法进行适当程度欠取样,去掉多数类中的冗余实例和边界上的噪音数据,减少其规模,在一定程度上达到相对均衡,从而,可有效地处理非均衡数据分类问题,提高分类器的性能.该算法在VCR采场岩爆实例上进行实验,预测的结果与实际情况完全一致,表明在工程实例岩爆危险性实例数据非均衡情况下实施混合重取样方案是可行的,预测准确率高,具有良好的工程应用前景.采用该方法可找到岩爆发生的主控因素,为深部开采工程的合理设计与安全施工提供科学依据.

       

    • 图  1  ADSNN-Hybrid RS算法处理流程图

      Fig.  1.  ADSNN-Hybrid RS algorithm flow chart

      图  2  VCR采场岩爆实例数据生成的修剪过的决策树

      Fig.  2.  Pruned decision tree on rockburst instances at VCR mining stope

      表  1  分类结果

      Table  1.   Classification results

      === Detailed Accuracy By Class ===
      TP rate FP rate Precision Recall F-measure Class
      1 0 1 1 1 发生岩爆
      1 0 1 1 1 不发生岩爆
      === Confusion matrix ===
      a b<--classified as
      3 0|a=发生岩爆
      0 2|b=不发生岩爆
      下载: 导出CSV

      表  2  VCR采场岩爆预测结果

      Table  2.   Rockburst prediction results at VCR mining stope

      样本编号 特征矢量输入 预测输出 实际情况
      100 10010100010100100000000010010001 01 不发生岩爆
      101 10010100100100100000000010001010 01 不发生岩爆
      102 01001010100100100010000000010001 10 发生岩爆
      103 10010100100100001000010000010100 10 发生岩爆
      104 01010001100100100000000001010010 10 发生岩爆
      下载: 导出CSV
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    出版历程
    • 收稿日期:  2009-04-26
    • 刊出日期:  2010-03-01

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