• 中国出版政府奖提名奖

    中国百强科技报刊

    湖北出版政府奖

    中国高校百佳科技期刊

    中国最美期刊

    留言板

    尊敬的读者、作者、审稿人, 关于本刊的投稿、审稿、编辑和出版的任何问题, 您可以本页添加留言。我们将尽快给您答复。谢谢您的支持!

    姓名
    邮箱
    手机号码
    标题
    留言内容
    验证码

    改进的加权证据权模型及其在个旧锡铜矿产资源预测中的应用

    张生元 成秋明 张素萍 徐德义

    张生元, 成秋明, 张素萍, 徐德义, 2012. 改进的加权证据权模型及其在个旧锡铜矿产资源预测中的应用. 地球科学, 37(6): 1175-1182. doi: 10.3799/dqkx.2012.125
    引用本文: 张生元, 成秋明, 张素萍, 徐德义, 2012. 改进的加权证据权模型及其在个旧锡铜矿产资源预测中的应用. 地球科学, 37(6): 1175-1182. doi: 10.3799/dqkx.2012.125
    ZHANG Sheng-yuan, CHENG Qiu-ming, ZHANG Su-ping, XU De-yi, 2012. Improvement of Weighted Weights of Evidence and Its Applications in Sn-Cu Mineral Potential Mapping in Gejiu, Yunnan Province, China. Earth Science, 37(6): 1175-1182. doi: 10.3799/dqkx.2012.125
    Citation: ZHANG Sheng-yuan, CHENG Qiu-ming, ZHANG Su-ping, XU De-yi, 2012. Improvement of Weighted Weights of Evidence and Its Applications in Sn-Cu Mineral Potential Mapping in Gejiu, Yunnan Province, China. Earth Science, 37(6): 1175-1182. doi: 10.3799/dqkx.2012.125

    改进的加权证据权模型及其在个旧锡铜矿产资源预测中的应用

    doi: 10.3799/dqkx.2012.125
    基金项目: 

    国家自然科学基金 41172299

    国家自然科学基金 40972205

    地质调查项目 1212011085468

    地质过程与矿产资源国家重点实验室开放课题 GPMR200803

    详细信息
      作者简介:

      张生元(1961-),男,博士,教授,主要从事数学地质以及矿产资源定量评价方法和开发科研和教学工作

      通讯作者:

      徐德义,E-mail: xdy@cug.edu.cn

    • 中图分类号: P628

    Improvement of Weighted Weights of Evidence and Its Applications in Sn-Cu Mineral Potential Mapping in Gejiu, Yunnan Province, China

    • 摘要: 为了探讨新的加权系数估计方法对于消除或减弱证据层不满足条件独立性假设时对预测结果的影响, 对加权证据权模型的加权系数估计方法进行了新的探讨,尝试用顺序估计法估计加权系数.加权系数的顺序估计法是将加权证据权模型与基于模糊预测对象的证据权模型相结合,将证据层按照一定顺序逐步加入到加权证据权模型中,在加入到模型的过程中依次用已经获得的后验概率作为模糊训练层对证据层加入到模型的顺序进行修正,并通过条件相关系数的方法估计加权系数.分别以1组多元正态分布模拟数据和个旧锡铜多金属矿产资源预测为例,比较了多种模型的后验概率,结果表明加权证据权模型对减弱证据层不满足条件独立性假设所产生的影响是有效的.

       

    • 图  1  4个证据图层二态图层(张生元等, 2009)

      a.构造交汇点距离6 km.白色点表示构造交汇点;b.采用S-A方法分解得到的地球化学综合异常图;c.采用局部奇异性方法得到的局部地球化学异常图;d.个旧组地层.黑色三角形表示Sn矿床

      Fig.  1.  Binary maps of four evidence maps

      图  2  3种证据权模型后验概率分级图

      a.模型Ⅰ后验概率异常分级图;b.模型Ⅱ后验概率异常分级图;c.模型Ⅲ后验概率异常分级图.黑色三角形表示Sn矿床

      Fig.  2.  Anomaly classification of posteriori probabilities obtained by three models

      表  1  各种方法计算的后验概率及排序

      Table  1.   Four posterior probability and their ranks in unique condition

      类型 $ \overline{\mathrm{ABC}}$ $ \mathrm{A} \overline{\mathrm{BC}}$ $ \overline{\mathrm{A}} \mathrm{B} \overline{\mathrm{C}}$ $\mathrm{AB} \overline{\mathrm{C}} $ $ \overline {{\rm{AB}}} {\rm{C}}$ ${\rm{A}}\overline {\rm{B}} {\rm{C}} $ $ \overline{\mathrm{A}} \mathrm{BC}$ ABC 误差
      后验概率理论值 0.034 0.409 0.249 0.765 0.235 0.752 0.590 0.966
      后验概率理论值排序 8 5 6 2 7 3 4 1
      普通证据权后验概率 0.010 0.269 0.176 0.891 0.117 0.835 0.746 0.991 55.100
      普通证据权后验概率排序 8 5 6 2 7 3 4 1
      加权证据权后验概率 0.013 0.300 0.169 0.885 0.122 0.841 0.716 0.989 45.600
      加权证据权后验概率排序 8 5 6 2 7 3 4 1
      下载: 导出CSV

      表  2  基于各个子区域3种证据权模型后验概率从大到小排序

      Table  2.   The rank of posterior probabilities obtained by using three models in unique condition

      子区域 面积单元数 所含矿床数
      ABCD 31.6 1 1 1 1
      ${\rm{ABC}}\overline {\rm{D}} $ 19.4 2 3 3 2
      ${\rm{AB}}\overline {\rm{C}} {\rm{D}} $ 22.0 3 5 4 5
      ${\rm{AB}}\overline {{\rm{CD}}} $ 10.3 0 8 8 6
      ${\rm{A}}\overline {\rm{B}} {\rm{CD}} $ 23.6 0 7 6 8
      ${\rm{A}}\overline {\rm{B}} {\rm{C}}\overline {\rm{D}} $ 20.7 0 11 10 10
      ${\rm{A}}\overline {{\rm{BC}}} {\rm{D}} $ 158.6 0 13 13 13
      ${\rm{A}}\overline {{\rm{BCD}}} $ 207.1 1 15 14 14
      $\overline {\rm{A}} {\rm{BCD}} $ 42.6 3 2 2 3
      $\overline {\rm{A}} {\rm{BC}}\overline {\rm{D}} $ 17.3 0 4 5 4
      $ \overline {\rm{A}} {\rm{B}}\overline {\rm{C}} {\rm{D}}$ 36.3 0 6 7 7
      $\overline {\rm{A}} {\rm{B}}\overline {{\rm{CD}}} $ 5.2 0 10 11 9
      $\overline {{\rm{AB}}} {\rm{CD}} $ 13.9 0 9 9 11
      $\overline {{\rm{AB}}} {\rm{C}}\overline {\rm{D}} $ 61.9 0 12 12 12
      $\overline {{\rm{ABC}}} {\rm{D}} $ 171.7 0 14 15 15
      $\overline {{\rm{ABCD}}} $ 429.7 1 16 16 16
      下载: 导出CSV
    • Agterberg, F., 2011. A modified weights-of-evidence method for regional mineral resource estimation. Natural Resources Research, 20(2): 95-101. doi: 10.1007/s11053-011-9138-0
      Agterberg, F.P., 1989. Computer programs for mineral exploration. Science, 245(4913): 76-81. doi: 10.1126/science.245.4913.76
      Agterberg, F.P., Bonham-Carter, G.F., Wright, D.F., 1989. Statistical pattern integration for mineral exploration. In: Gaál, G., Merriam, D.F., eds., Computer applications in resource estimation prediction and assessment of etals and petroleum. Pergamon Press, New York, 1-12.
      Agterberg, F.P., Cheng, Q.M., 2002. Conditional independence test for weights-of-evidence modeling. Natural Resources Research, 11(4): 249-255. doi: 10.1023/A:1021193827501
      Cheng, Q., 2012. Multiplicative cascade processes and information integration for predictive mapping. Nonlinear Processes in Geophysics, 19(1): 57-68. doi: 10.5194/npg-19-57-2012
      Cheng, Q.M., 2008. Non-linear theory and power-law models for information integration and mineral resources quantitative assessments. Mathematical Geosciences, 40(5): 503-532. doi: 10.1007/s11004-008-9172-6
      Cheng, Q.M., Agterberg, F.P., 1999. Fuzzy weights of evidence method and its application in mineral potential mapping. Natural Resources Research, 8(1): 27-35. doi: 10.1023/A:1021677510649
      Cheng, Q.M., Zhao, P.D., Chen, J.G., et al., 2009a. Application of singularity theory in prediction of tin and copper mineral deposits in Gejiu didtrict, Yunnan, China: week information extraction and mixing information decomposition. Earth Science—Journal of China University of Geosciences, 34(2): 232-242 (in Chinese with English abstract). doi: 10.3799/dqkx.2009.021
      Cheng, Q.M., Zhao, P.D., Zhang, S.Y., et al., 2009b. Application of singularity theory in prediction of tin and copper mineral deposits in Gejiu district, Yunnan, China: information integration and delineation of mineral exploration targets. Earth Science—Journal of China University of Geosciences, 34(2): 243-252(in Chinese with English abstract). doi: 10.3799/dqkx.2009.022
      Deng, M.F., 2009. A conditional dependence adjusted weights of evidence model. Natural Resources Research, 18(4): 259-258. doi: 10.1007/s11053-009-9101-5
      Journel, A.G., 2002. Combining knowledge from diverse sources: an alternative to traditional data independence hypotheses. Mathematical Geology, 34(5): 573-596. doi: 10.1023/A:1016047012594
      Krishnan, S., 2008. The tau model for data redundancy and information combination in earth sciences: theory and application. Mathematical Geosciences, 40(6): 705-727. doi: 10.1007/s11004-008-9165-5
      Krishnan, S., Boucher, A., Journel, A.G., 2005. Evaluating information redundancy through the tau model. Quantitative Geology and Geostatistics, 14(5): 1037-1046. doi: 10.1007/978-1-4020-3610-1_108
      Polyakova, E.I., Journel, A.G., 2007. The nu expression for probabilistic data integration. Mathematical Geology, 39(8): 715-733. doi: 10.1007/s11004-007-9117-5
      Schaeben, H., Boogaart, K.G., 2011. Comment on "a conditional dependence adjusted weights of evidence model" by Minfeng Deng in natural resources. research, 18(2009): 249-258. Natural Resources Research, 20(4): 401-406. doi: 10.1007/s11053-011-9146-0
      Zhang, S.Y., Cheng, Q.M., Zhang, S.P., et al., 2009. Weighted weights of evidence and stepwise weights of evidence and their application in Sn-Cu mineral potential mapping in Gejiu, Yunnan. Earth Science—Journal of China University of Geosciences, 34(2): 281-286 (in Chinese with English abstract). doi: 10.3799/dqkx.2009.028
      Zhang, S.Y., Wu, Q., Cheng, Q.M., et al., 2006. Weights of evidence method based on fuzzy training layer and its application in desertification assessment. Earth Science—Journal of China University of Geosciences, 31(3): 389-393(in Chinese with English abstract). http://www.researchgate.net/publication/286656642_Weights_of_evidence_method_based_on_fuzzy_training_layer_and_its_application_in_desertification_assessment
      成秋明, 赵鹏大, 陈建国, 等, 2009a. 奇异性理论在个旧锡铜矿产资源预测中的应用: 成矿弱信息提取和复合信息分解. 地球科学——中国地质大学学报, 34(2): 232-242. https://www.cnki.com.cn/Article/CJFDTOTAL-DQKX200902001.htm
      成秋明, 赵鹏大, 张生元, 等, 2009b. 奇异性理论在个旧锡铜矿产资源预测中的应用: 综合信息集成与靶区圈定. 地球科学——中国地质大学学报, 34(2): 243-252. https://www.cnki.com.cn/Article/CJFDTOTAL-DQKX200902002.htm
      张生元, 成秋明, 张素萍, 等, 2009. 加权证据权模型和逐步证据权模型及其在个旧锡铜矿产资源预测中的应用. 地球科学——中国地质大学学报, 34(2): 281-286. https://www.cnki.com.cn/Article/CJFDTOTAL-DQKX200902008.htm
      张生元, 武强, 成秋明, 等, 2006. 基于模糊预测对象的证据权方法及其在土地沙漠化评价中的应用. 地球科学——中国地质大学学报, 31(3): 389-393. https://www.cnki.com.cn/Article/CJFDTOTAL-DQKX200603016.htm
    • 加载中
    图(2) / 表(2)
    计量
    • 文章访问数:  530
    • HTML全文浏览量:  497
    • PDF下载量:  8
    • 被引次数: 0
    出版历程
    • 收稿日期:  2012-07-19
    • 网络出版日期:  2021-11-09
    • 刊出日期:  2012-06-15

    目录

      /

      返回文章
      返回