Sequential prediction of TBM penetration rate using a gradient boosted regression tree during tunneling |
Lee, Hang-Lo
(Disposal Performance Demonstration Research Division, Korea Atomic Energy Research Institute)
Song, Ki-Il (Department of Civil Engineering, Inha University) Qi, Chongchong (School of Resources and Safety Engineering, Central South University) Kim, Kyoung-Yul (Next Generation Transmission & Substation Laboratory, KEPCO Research Institute) |
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