Predicting cobalt ion concentration in hydrometallurgy zinc process using data decomposition and machine learning.

IF 8.2 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Science of the Total Environment Pub Date : 2025-01-25 Epub Date: 2025-01-13 DOI:10.1016/j.scitotenv.2025.178420
Yinzhen Tan, Wei Xu, Kai Yang, Shahab Pasha, Hua Wang, Min Wang, Qingtai Xiao
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Abstract

Solid waste is one of the primary contributors to environmental pollution currently, it is crucial to enhance the prevention and control of solid waste pollution in environmental management. The effectiveness of the second stage of purification in the industrial zinc hydrometallurgy is determined by the concentration of cobalt ion. Manual testing and monitoring of cobalt ion concentration are time consuming and costly, and prone to delays, which can result in discharge of cobalt ion concentration that does not meet the standards, leading to water pollution. Additionally, over-addition of zinc powder leads to a waste of resources, increasing the production cost of the company. Here, this work proposes a hybrid prediction model that combines the advantages of data decomposition and machine learning algorithms to predict the metal cobalt ion concentration in the effluent solution of a section of zinc hydrometallurgy refining purification in factory A. According to the different types of experiments, ablation experiments and contrast experiments are designed in this work under the same training and test data were used in the modeling process. Analytic and experimental results show that the proposed hybrid prediction model has the smallest error and the best fit between the actual and predicted values of cobalt ion concentration, and the appropriate graphs were finally selected for quantitative metrics analysis. The root mean square error was reduced by 4.2 %-73.9 %, the mean absolute error by 7.1 %-93.4 %, the mean percentage error by 7.7 %-86.7 % and the coefficient of determination by 1.3 %-134.6 %. The hybrid prediction model not only avoided the pollution of water resources by the cobalt ion concentration discharged in the purification, which is also of practical significance for the technicians to control the input quantity of zinc powder according to the prediction data in time and reduce the waste of resources.

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利用数据分解和机器学习预测湿法炼锌过程中钴离子浓度。
固体废物是当前环境污染的主要来源之一,加强固体废物污染的防治在环境管理中至关重要。工业湿法炼锌第二阶段净化的效果是由钴离子浓度决定的。人工检测和监测钴离子浓度耗时、成本高,且容易出现延误,导致排放的钴离子浓度不符合标准,造成水污染。此外,过量添加锌粉导致资源浪费,增加了公司的生产成本。本文结合数据分解和机器学习算法的优点,提出了一种混合预测模型,用于预测a厂湿法炼锌提纯某段出水溶液中的金属钴离子浓度。根据实验类型的不同,在建模过程中使用相同的训练数据和测试数据,设计了烧蚀实验和对比实验。分析和实验结果表明,所提出的混合预测模型误差最小,钴离子浓度的实际值与预测值拟合最佳,最终选择合适的图进行定量指标分析。均方根误差减小4.2% ~ 73.9%,平均绝对误差减小7.1% ~ 93.4%,平均百分比误差减小7.7% ~ 86.7%,测定系数减小1.3% ~ 134.6%。混合预测模型不仅避免了净化过程中排放的钴离子浓度对水资源的污染,而且对技术人员根据预测数据及时控制锌粉投入量,减少资源浪费也具有现实意义。
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来源期刊
Science of the Total Environment
Science of the Total Environment 环境科学-环境科学
CiteScore
17.60
自引率
10.20%
发文量
8726
审稿时长
2.4 months
期刊介绍: The Science of the Total Environment is an international journal dedicated to scientific research on the environment and its interaction with humanity. It covers a wide range of disciplines and seeks to publish innovative, hypothesis-driven, and impactful research that explores the entire environment, including the atmosphere, lithosphere, hydrosphere, biosphere, and anthroposphere. The journal's updated Aims & Scope emphasizes the importance of interdisciplinary environmental research with broad impact. Priority is given to studies that advance fundamental understanding and explore the interconnectedness of multiple environmental spheres. Field studies are preferred, while laboratory experiments must demonstrate significant methodological advancements or mechanistic insights with direct relevance to the environment.
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