DETERMINATION OF TECHNOLOGICAL OXIDATION ZONES AT URANIUM DEPOSITS IN KAZAKHSTAN USING MACHINE LEARNING METHODS MACHINE LEARNING

K. Abramov, Y. Kuchin, E. Mukhamedieva, N. Yunicheva
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Abstract

The determination of technological acidification zones in uranium deposits during leaching is necessary for precise control and optimization of the uranium extraction process. Incorrect determination of the technological acidification zone can lead to excessive use of acidic reagents, which not only increases costs, but also can cause undesirable environmental consequences. The paper proposes an approach to solving issues related to the manual determination of zones of technological acidification in uranium deposits in Kazakhstan. The approach includes the study of machine learning algorithms to automate the identification of these critical areas. The use of artificial neural network (ANN) models and the extreme gradient boosting (XGB) model has shown its effectiveness in automating and improving the identification of these important zones during the mining of uranium deposits by underground borehole leaching. Thus, the accuracy of acidification intervals according to the F1-score metric for the ANN model is 0,75, and for the XGB model it is 0,80.
利用机器学习方法确定哈萨克斯坦铀矿床的技术氧化区 机器学习
在浸出过程中确定铀矿床的工艺酸化区对于精确控制和优化铀提取工艺非常必要。工艺酸化区的不正确确定会导致酸性试剂的过度使用,这不仅会增加成本,还会造成不良的环境后果。本文提出了一种方法来解决人工确定哈萨克斯坦铀矿床技术酸化区的相关问题。该方法包括研究机器学习算法,以自动识别这些关键区域。人工神经网络(ANN)模型和极端梯度提升(XGB)模型的使用表明,在通过地下钻孔沥滤法开采铀矿床期间,其在自动识别和改进这些重要区域的识别方面非常有效。因此,根据 F1 分数指标,ANN 模型的酸化区间准确度为 0.75,XGB 模型的准确度为 0.80。
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