Exploring the impact of thiol collectors system on copper sulfide flotation through machine learning-driven modeling

IF 1.3 4区 工程技术 Q4 CHEMISTRY, PHYSICAL Physicochemical Problems of Mineral Processing Pub Date : 2024-07-28 DOI:10.37190/ppmp/191709
Mustafa K. Guner, Ozge Akyildiz, Hakan Basarir, Pshem Kowalczuk
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Abstract

Collector selection is a critical step in flotation, as it has a direct impact on product quality, flotation recovery, and selectivity. Collectors can consist of different components, and their effectiveness can vary depending on the type of ore being processed. The general practice in both literature and in industry is to use a mixture of collectors rather than a single collector. However, the use of a collector mixture introduces several complex issues. It is challenging to determine the specific effects of each collector on different minerals, as well as to understand the synergistic effects of mixed collectors in flotation. This study presents a novel investigation focusing on the impact of blends of NAX, AEROPHINE® 3422, and AERO® MX 5149, in varying dosages and combinations, on the flotation performance of Kupferschiefer copper ore. Kinetics flotation tests were conducted using a mechanical flotation cell with various combinations and dosages of listed collectors. For this investigation, different predictive models such as machine-learning (ML) and conventional regression analyses were developed. For model construction, a database including the results of comprehensive experimental results was constructed. The best performing model was selected considering statistical performance indicators and their performance on unseen data. A sensitivity analysis was conducted on the model to justify contributions of collectors on the copper recovery and grade. The results showed that the ML-based models provide compatible results with the expert opinions and have higher statistical performance than conventional modelling tools. According to the experimental results and models’ findings, it has shown that AEROPHINE® 3422 (a blend of isopropyl ethyl thionocarbamate and dithiophosphinate) was the most influential collector for the copper recovery. In addition, two ternary graphs were generated from the modeled data to formulate mixtures for different grades and recovery priorities.
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通过机器学习驱动建模探索硫醇捕收剂系统对硫化铜浮选的影响
捕收剂的选择是浮选的关键步骤,因为它直接影响产品质量、浮选回收率和选择性。捕收剂可以由不同的成分组成,其效果会因处理的矿石类型而异。文献和工业界的一般做法是使用混合捕收剂,而不是单一的捕收剂。然而,使用混合收集器会带来一些复杂的问题。确定每种捕收剂对不同矿物的具体影响,以及了解混合捕收剂在浮选中的协同效应,都是一项挑战。本研究介绍了一项新颖的调查,重点是不同剂量和组合的 NAX、AEROPHINE® 3422 和 AERO® MX 5149 混合物对 Kupferschiefer 铜矿浮选性能的影响。使用机械浮选槽和所列捕收 剂的不同组合和用量进行了动力学浮选试验。在这项研究中,开发了不同的预测模型,如机器学习(ML)和传统的回归分析。为构建模型,建立了一个包含综合实验结果的数据库。根据统计性能指标及其在未见数据上的性能,选出了性能最佳的模型。对模型进行了敏感性分析,以证明收集器对铜回收率和品位的贡献。结果表明,与传统建模工具相比,基于 ML 的模型提供了与专家意见相一致的结果,并具有更高的统计性能。实验结果和模型结果表明,AEROPHINE® 3422(异丙基乙基硫代氨基甲酸酯和二硫代磷酸酯的混合物)是对铜回收率影响最大的捕收剂。此外,还根据建模数据生成了两个三元图,以针对不同等级和回收优先级配制混合物。
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来源期刊
Physicochemical Problems of Mineral Processing
Physicochemical Problems of Mineral Processing CHEMISTRY, PHYSICAL-MINING & MINERAL PROCESSING
自引率
6.70%
发文量
99
期刊介绍: Physicochemical Problems of Mineral Processing is an international, open access journal which covers theoretical approaches and their practical applications in all aspects of mineral processing and extractive metallurgy. Criteria for publication in the Physicochemical Problems of Mineral Processing journal are novelty, quality and current interest. Manuscripts which only make routine use of minor extensions to well established methodologies are not appropriate for the journal. Topics of interest Analytical techniques and applied mineralogy Computer applications Comminution, classification and sorting Froth flotation Solid-liquid separation Gravity concentration Magnetic and electric separation Hydro and biohydrometallurgy Extractive metallurgy Recycling and mineral wastes Environmental aspects of mineral processing and other mineral processing related subjects.
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