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Information Journal Paper

Title

Mineral potential modeling using deep learning auto-encoder network in the Dehsalm district, eastern Iran

Pages

  77-94

Abstract

 Identification of promising areas associated with mineralization and integration of exploratory multi-resource data-sets are essential in Mineral potential modeling. In this research, Big data analysis method and an unsupervised Deep auto-encoder network algorithm were used to identify the exploratory targets areas associated with porphyry copper-gold mineralization in the Dehsalm strict of Iran. The results show that the identified exploratory target areas have strong spatial relationships with known mineral indices in the study area. The Prediction-Area (P_A) plot analysis shows that the generated model performs well. The result of this study demonstrates that Big data analytics supported by deep learning methods is a potential technique to be considered for use in mineral prospectivity mapping.

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    APA: Copy

    Keykhay Hosseinpoor, Majid, Kohsary, AmirHossein, MORSHEDY, AMIN HOSSEIN, & Porwal, Alok. (2020). Mineral potential modeling using deep learning auto-encoder network in the Dehsalm district, eastern Iran. JOURNAL OF ANALYTICAL AND NUMERICAL METHODS IN MINING ENGINEERING, 10(22 ), 77-94. SID. https://sid.ir/paper/384394/en

    Vancouver: Copy

    Keykhay Hosseinpoor Majid, Kohsary AmirHossein, MORSHEDY AMIN HOSSEIN, Porwal Alok. Mineral potential modeling using deep learning auto-encoder network in the Dehsalm district, eastern Iran. JOURNAL OF ANALYTICAL AND NUMERICAL METHODS IN MINING ENGINEERING[Internet]. 2020;10(22 ):77-94. Available from: https://sid.ir/paper/384394/en

    IEEE: Copy

    Majid Keykhay Hosseinpoor, AmirHossein Kohsary, AMIN HOSSEIN MORSHEDY, and Alok Porwal, “Mineral potential modeling using deep learning auto-encoder network in the Dehsalm district, eastern Iran,” JOURNAL OF ANALYTICAL AND NUMERICAL METHODS IN MINING ENGINEERING, vol. 10, no. 22 , pp. 77–94, 2020, [Online]. Available: https://sid.ir/paper/384394/en

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