整合选择性絮凝技术,提高生产工艺效率:通过人工神经网络建模的新方法

Rakesh Kumar , Bipin Kumar Singh , Amit Kumar , Ashwini Kumar , Ajay Kumar , Parveen Kumar
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引用次数: 0

摘要

由于高品位铁矿石储量的枯竭和严格的环保法案/规定,中低品位铁矿石的使用正逐渐变得更加重要。铁矿石洗选产生的矿渣被丢弃在尾矿坝中;但目前也在考虑从超细矿石中回收铁的价值。有大量的细矿渣仍未得到利用。因此,本研究试图深入探讨铁矿渣的优化问题,这也是工业生产和设计的一个实际要求。利用絮凝工艺和人工神经网络(ANN)预测模型,基里布鲁加工厂成为铁矿石粘泥样本的主要来源。对收集到的铁矿石样品进行的化学分析显示,其成分的特点是铁含量为 58.24%,Al2O3 为 3.47%,SiO2 为 4.72%,LOI(点火损失)为 5.18%。调查探讨了絮凝技术在不同 pH 值、不同纸浆密度和不同絮凝剂用量下的性能。此外,所选的不同参数包括 pH 值从 6 到 11,纸浆密度从 1 % 到 15 %,絮凝剂剂量从 0.03 到 0.27 mg/g。研究结果表明,在 pH 值为 10、絮凝剂用量为 0.09 mg/g 的条件下,铁矿石的铁品位大幅提高,从 58.24% 提高到 66.12%,回收率高达 82.54%。此外,以回收率为关键参数,使用 ANN 预测模型对铁矿渣选择性絮凝法进行了性能评估。该模型的输入参数包括 pH 值、矿浆密度和絮凝剂用量。该研究采用了具有 3-3-1 结构的三层 ANN 模型,并利用了前馈反向传播技术,结果表明预测值与实验数据非常接近,证实了该模型在实际生产应用中的有效性。应考虑该模型的铁矿石粘泥选矿功效在制造业的潜在应用信息。这可能会减少浪费、提高效率或节约成本。强调对可持续发展或环境可能产生的任何影响,这将使研究具有更广泛的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating selective flocculation techniques for enhanced efficiency in manufacturing processes: A novel approach through artificial neural network modeling

The use of medium and low-grade iron ore is gradually becoming more important due to the depletion of high-grade iron ore reserves and stringent environmental acts/rules. Slimes from iron ore washing were discarded in tailing dams; however, there is currently consideration for recovering iron values from ultra-fines as well. There are enormous fine dumps that are still unutilised. Hence, this study attempt to delve the optimization of iron ore slimes an indeed requirement for manufacturing and design in industries. Leveraging a flocculation process, coupled with the implementation of an Artificial Neural Network (ANN) predictive model, the Kiriburu processing plant serves as the primary source for iron ore slime samples. Chemical analyses of the collected iron samples reveal a composition featuring 58.24 % iron content, 3.47 % Al2O3, 4.72 % SiO2, and 5.18 % LOI (Loss on Ignition). The investigation explores the performance of the flocculation technique under varying pH levels, different pulp densities, and diverse flocculant dosages. Furthermore, the varying parameters selected are pH from 6 to 11, pulp density from 1 % to 15 %, and flocculant dose from 0.03 to 0.27 mg/g. The study's findings showcase a substantial improvement in the Fe grade of iron ore, escalating from 58.24 % to 66.12 %, with an impressive recovery rate of 82.54 % achieved using a flocculant dosage of 0.09 mg/g at pH 10. Additionally, a performance assessment of the selective flocculation method for iron ore slimes is conducted using an ANN predictive model, with recovery as the pivotal parameter. The input parameters for this model encompass pH, pulp density, and flocculant dosages. Employing a three-layer ANN model with a 3–3–1 architecture and utilizing feed-forward back propagation, the study demonstrates a close alignment between predicted values and experimental data, confirming the model's effectiveness for practical manufacturing applications. Information regarding the potential applications of the model's iron ore slime beneficiation efficacy for the manufacturing sector should be considered. This could entail lower waste, more effectiveness, or cost savings. Emphasise any possible ramifications for sustainability or the environment that would make the study pertinent in a larger perspective.

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