Application of Probabilistic Clustering Algorithms to Determine Mineralization Areas in Regional-Scale Exploration Studies

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نوع سند: مقاله ژورنالی
زبان: English
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JR_JMAE-11-4_010

تاریخ نمایه سازی: 21 اردیبهشت 1400

Abstract:

In this work, we aim to identify the mineralization areas for the next exploration phases. Thus, the probabilistic clustering algorithms due to the use of appropriate measures, the possibility of working with datasets with missing values, and the lack of trapping in local optimal are used to determine the multi-element geochemical anomalies. Four probabilistic clustering algorithms, namely PHC, PCMC, PEMC, PDBSCAN, and ۴۱۳۸ stream sediment samplings, are used to divide the samples into the three clusters of background, possible anomaly, and probable anomaly populations. In order to determine these anomalies, ten and eight metal elements are selected as the chalcophile and siderophile elements, respectively. The results obtained show the areas of ​​approximately ۵۰۰ and ۵,۰۰۰ km۲ as the areas of the probable and possible anomalies, respectively. The composite geochemical anomalies of the chalcophile and siderophile elements are mostly dominant in the metamorphic-acidic-intermediate rock units and the alkaline-metamorphic-intermediate rock units of the studied area, respectively. Besides, the obtained anomalies of the four clustering algorithms also cover about ۶۵% of the mineralized areas, all mines, and almost ۶۰% of the alteration areas. The validity criterion of the clustering methods show more than ۷۰% validity for the obtained anomalies. The results obtained indicate that the probabilistic clustering algorithms can be an appropriate statistical tool in the regional-scale geochemical explorations.

Authors

H. Geranian

Department of Mining Engineering, Birjand University of Technology, Birjand, Iran

Z. Khajeh Miry

Industry, Mine & Trade Organization of South Khorasan Province, Birjand, Iran

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  • Haldar, S.K. (2013). Mineral Exploration: Principles and Applications, Elsevier, 372 ...
  • Galuszka, A. (2007). A review of geochemical background concepts and ...
  • Wellmer, F.W. (1998). Statistical Evaluations in Exploration for Mineral Deposits, ...
  • Chork, C.Y. (1990). Unmasking multivariate anomalous observations in exploration geochemical ...
  • Geranian, H., Mokhtari, A.R. and Cohen, D.R. (2013). A comparison ...
  • Wang, J. and Zuo, R. (2016). An extended local gap ...
  • Ghavami-Riabia, R., Seyedrahimi-Niaraqa, M.M., Khalokakaiea, R. and Hazarehb, M.R. (2010). ...
  • Cheng, Q., Xu, Y. and Grunsky, E. (2000). Integrated Spatial ...
  • Cheng, Q., Agterberg, F.P. and Bonham-Carter, G.F. (1996). A spatial ...
  • Daya, A.A. (2015). Comparative study of C–A, C–P, and N–S ...
  • Jimenez-Espinosa, R., Sousa, A.J. and Chica-Olmo, M. (1993). Identification of ...
  • Cao, M., and Lu, L. (2015). Application of the multivariate ...
  • Meng, H.D., Song, Y.C., Son, F.Y. and Shen, H.T. (2011). ...
  • Zaremotlagh, S., Hezarkhani, A. and Sadeghi, M. (2016). Detecting homogenous ...
  • Collyer, P.L. and Merriam, D.F. (1973). An application of cluster ...
  • Roy, A. (1981). Application of cluster analysis in the interpretation ...
  • Ellefsen, K.J. and Smith, D.B. (2016). Manual hierarchical clustering of ...
  • Morrison, J.M., Goldhaber, M.B., Ellefsen, K.J. and Mills, C.T. (2011). ...
  • Fatehi, M. and Asadi, H.H. (2017). Application of semi-supervised fuzzy ...
  • Ellefsen, K.J., Smith, D.B. and Horton, J.D. (2014). A modified ...
  • Aggarwal, C.C. and Reddy, C.K. (2013). Data Clustering: Algorithms and ...
  • Han, J., Kamber, M. and Pei, J. (2011). Data mining: ...
  • Brauer, S. (2014). A Probabilistic Expectation Maximization Algorithm for Multivariate ...
  • Fan, J. (2019). OPE-HCA: an optimal probabilistic estimation approach for ...
  • Krishnapuram, R. and Keller, J.M. (1993). A Possibilistic approach to ...
  • Xie, Z., Wang, S. and Chung, F.L. (2008). An enhanced ...
  • Salgado, P. and Igrejas, G. (2007). Probabilistic Clustering Algorithms for ...
  • Celeux, G. and Diebolt, J. (1985). The SEM algorithm: A ...
  • Quost, B. and Denœux, T. (2016). Clustering and classification of ...
  • González, M., Minuesa, C. and Puerto, I. (2016). Maximum likelihood ...
  • Hu, T. and Sung, S.Y. (2006). A hybrid EM approach ...
  • Kriegel, H.P. and Pfeifle, M. (2005). Density-based clustering of uncertain ...
  • Xu, H. and Li, G. (2008). Density-Based Probabilistic Clustering of ...
  • Zhang, X., Liu, H., Zhang, X. and Liu, X. (2014). ...
  • Beckmann, N., Kriegel, H.P., Schneider, R. and Seeger, B. (1990). ...
  • Erdem, A. and Gűndem, T.I. (2014). M-FDBSCAN: A multicore density-based ...
  • Halkidi, M., Batistakis, Y. and Vazirgiannis, M. (2002). Clustering validity ...
  • Rendón, E., Abundez, I., Arizmendi, A. and Quiroz, E.M. (2011). ...
  • Halkidi, M., Batistakis, Y. and Vazirgiannis, M. (2002). Clustering validity ...
  • Gurrutxaga, I., Albisua, I., Arbelaitz, O., Martın, J.I., Muguerza, J., ...
  • Liu, Y., Li, Z., Xiong, H., Gao, X. and Wu, ...
  • Bröcker, M., Fotoohi Rad, G., Abbaslu, F. and Rodionov, N. ...
  • Mirnejad, H., Blourian, G.H., Kheirkhah, M., Akrami, M.A. and Tutti, ...
  • Asadi, S. and Kolahdani, S. (2014). Tectono-magmatic evolution of the ...
  • Mazhari, S.A. and Safari, M. (2013). High-K Calc-alkaline Plutonism in ...
  • Pang, K.N., Chung, S.L., Zarrinkoub, M.H., Mohammadi, S.S., Yang, H.M., ...
  • Mahmoudi, S., Masoudi, F., Corfu, F. and Mehrabi, B. (2010). ...
  • Malekzadeh Shafaroudi, A. and Karimpour, M.H. (2015). Mineralogic, fluid inclusion, ...
  • Arjmandzadeh, R., Karimpour, M.H., Mazaheri, S.A., Santos, J.F., Medina, J.M. ...
  • Wilmsen, M., Fürsich, F.T. and Majidifard, M.R. (2013). The Shah ...
  • Arjmandzadeh, R. and Santos, J.F. (2014). Sr-Nd isotope geochemistry and ...
  • Arjmandzadeh, R., Karimpour, M.H., Mazaheri, S.A., Santos, J.F., Medina, J.M. ...
  • Eshraghi, H., Rastad, E. and Motevali, K. (2010). Auriferous sulfides ...
  • Ghorban, M. (2013). The economic geology of Iran: Mineral Deposits ...
  • Pirajno, F. (2009). Hydrothermal Processes and Mineral Systems, Springer Publication, ...
  • White, W.M. (2013). Geochemistry, Wiley-Blackwell Publications, 668 p ...
  • Santoa, A.P., Jacobsenb, S.B. and Baker, J. (2004). Evolution and ...
  • Hawkes, H.E. and Webb, J.S. (1962). Geochemistry in Mineral Exploration. ...
  • Clark, R.N., Swayze, G.A., Gallagher, A.J., King, T.V.V. and Calvin, ...
  • Kruse, F., Lefkoff, A., Boardman, J., Heidebrecht, K., Shapiro, A., ...
  • Nabavi, M.H. (1976). An introduction to geology of Iran. Geological ...
  • Stӧcklin, J. (1968). Structural history and tectonics of Iran; a ...
  • Thompson, M. and Howarth, R.J. (1976). Duplicate analysis in geochemical ...
  • Zhou, S., Zhou, K., Wang, J., Yang, G. and Wang, ...
  • نمایش کامل مراجع