Artificial Neural Networks for Mineral Production Forecasting in the In Situ Leaching Process: Uranium Case Study
Daniar Aizhulov,
Madina Tungatarova,
Maksat Kurmanseiit
et al.
Abstract:This study was conducted to assess the applicability of artificial neural networks (ANN) for forecasting the dynamics of uranium extraction over exploitation time during the process of In Situ Leaching (ISL). Currently, ISL process simulation involves multiple steps, starting with geostatistical interpolation, followed by computational fluid dynamics (CFD) and reactive transport simulation. While extensive research exists detailing each of these steps, machine learning techniques may offer the potential to dir… Show more
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