A Machine Learning Model for Predicting Silica Concentrations through Time Series Analysis of Mining Data |
Lee, Seung Hoon
(Department of Industrial and Management Engineering, Kyonggi University)
Yoon, Yeon Ah (Department of Industrial and Management Engineering, Kyonggi University Graduate School) Jung, Jin Hyeong (Department of Industrial and Management Engineering, Kyonggi University Graduate School) Sim, Hyun su (Department of Industrial and Management Engineering, Kyonggi University Graduate School) Chang, Tai-Woo (Department of Industrial and Management Engineering, Kyonggi University) Kim, Yong Soo (Department of Industrial and Management Engineering, Kyonggi University) |
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