A deep learning neural network approach for predicting the factors influencing heavy-metal adsorption by clay minerals

IF 1.1 4区 地球科学 Q4 CHEMISTRY, PHYSICAL Clay Minerals Pub Date : 2022-03-01 DOI:10.1180/clm.2022.20
R. Liu, Lei Zuo, Jiajia Zhao, D. Tao
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引用次数: 1

Abstract

Abstract The treatment of water containing heavy metals has attracted increasing attention because the ingestion of such water poses risks to human health. Due to their relatively large specific surface areas and surface charges, clay minerals play a significant role in the adsorption of heavy metals in water. However, the major factors that influence the adsorption rates of clay minerals are not well understood, and thus methods to predict the sorption of heavy metals by clay minerals are lacking. A method that can identify the most appropriate clay minerals for removal of a given heavy metal, based on the predicted sorption of the clay minerals, is required. This paper presents a widely applicable deep learning neural network approach that yielded excellent predictions of the influence of the sorption ratio on the adsorption of heavy metals by clay minerals. The neural network model was based on datasets of heavy-metal parameters that are available generally. It yielded highly accurate predictions of the adsorption rate based on training data from the dataset and was able to account for a wide range of input parameters. A Pearson sensitivity analysis was used to determine the contributions of individual input parameters to the adsorption rates predicted by the neural network. This newly developed method can predict the major factors influencing heavy-metal adsorption rates. The model described here could be applied in a wide range of scenarios.
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粘土矿物吸附重金属影响因素预测的深度学习神经网络方法
摘要含重金属的水的处理越来越受到关注,因为摄入此类水会对人类健康造成风险。粘土矿物由于其相对较大的比表面积和表面电荷,在吸附水中重金属方面发挥着重要作用。然而,影响粘土矿物吸附速率的主要因素尚不清楚,因此缺乏预测粘土矿物吸附重金属的方法。需要一种方法,根据粘土矿物的预测吸附,确定最适合去除给定重金属的粘土矿物。本文提出了一种广泛应用的深度学习神经网络方法,该方法对吸附率对粘土矿物吸附重金属的影响进行了极好的预测。神经网络模型基于通常可用的重金属参数数据集。它基于数据集的训练数据对吸附速率进行了高度准确的预测,并能够考虑广泛的输入参数。使用Pearson灵敏度分析来确定单个输入参数对神经网络预测的吸附速率的贡献。这种新开发的方法可以预测影响重金属吸附速率的主要因素。这里描述的模型可以应用于广泛的场景中。
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来源期刊
Clay Minerals
Clay Minerals 地学-矿物学
CiteScore
3.00
自引率
20.00%
发文量
25
审稿时长
6 months
期刊介绍: Clay Minerals is an international journal of mineral sciences, published four times a year, including research papers about clays, clay minerals and related materials, natural or synthetic. The journal includes papers on Earth processes soil science, geology/mineralogy, chemistry/material science, colloid/surface science, applied science and technology and health/ environment topics. The journal has an international editorial board with members from fifteen countries.
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