Convolutional neural network and transfer learning based mineral prospectivity modeling for geochemical exploration of Au mineralization within the Guandian–Zhangbaling area, Anhui Province, China

Applied Geochemistry - Tập 122 - Trang 104747 - 2020
He Li1,2, Xiaohui Li1,2, Feng Yuan1,2, Simon M. Jowitt3, Mingming Zhang1,2, Jie Zhou1,2, Taofa Zhou1,2, Xiangling Li1,2, Can Ge1,2, Bangcai Wu1,2
1Ore Deposit and Exploration Centre (ODEC), School of Resources and Environmental Engineering, Hefei University of Technology, Hefei 230009, China
2Anhui Province Engineering Research Center for Mineral Resources and Mine Environments, Hefei University of Technology, Hefei, Anhui 230009, China
3Department of Geoscience, University of Nevada Las Vegas, 4505 S Maryland Parkway, Las Vegas, NV 89154-4010, USA

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