Just‐in‐time learning for the prediction of oil sands ore characteristics using GPS data in mining applications
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Biao Huang | Nabil Magbool Jan | Aris Espejo | Fangwei Xu | Luke Zelmer | Lee Gulbransen | Biao Huang | Fangwei Xu | Nabil Magbool Jan | A. Espejo | Luke Zelmer | Lee Gulbransen
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