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Predicting the sorption efficiency of heavy metal based on the biochar characteristics, metal sources, and environmental conditions using various novel hybrid machine learning models

机译:使用各种新型混合机学习模型预测基于生物炭特性,金属源和环境条件的重金属的吸附效率

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摘要

Heavy metals in water and wastewater are taken into account as one of the most hazardous environmental issues that significantly impact human health. The use of biochar systems with different materials helped significantly remove heavy metals in the water, especially wastewater treatment systems. Nevertheless, heavy metal's sorption efficiency on the biochar systems is highly dependent on the biochar characteristics, metal sources, and environmental conditions. Therefore, this study implicates the feasibility of biochar systems in the heavy metal sorption in water/wastewater and the use of artificial intelligence (AI) models in investigating efficiency sorption of heavy metal on biochar. Accordingly, this work investigated and proposed 20 artificial intelligent models for forecasting the sorption efficiency of heavy metal onto biochar based on five machine learning algorithms and bagging technique (BA). Accordingly, support vector machine (SVM), random forest (RF), artificial neural network (ANN), M5Tree, and Gaussian process (GP) algorithms were used as the key algorithms for the aim of this study. Subsequently, the individual models were bagged with each other to generate new ensemble models. Finally, 20 intelligent models were developed and evaluated, including SVM, RF, M5Tree, GP, ANN, BA-SVM, BA-RF, BA-M5Tree, BA-GP, BA-ANN, SVM-RF, SVM-M5Tree, SVM-GP, SVM-ANN, RF-M5Tree, RF-GP, RF-ANN, M5Tree-GP, M5Tree-ANN, GP-ANN. Of those, the hybrid models (i.e., BA-SVM, BA-RF, BA-M5Tree, BA-GP, BA-ANN, SVM-RF, SVM-M5Tree, SVM-GP, SVM-ANN, RF-M5Tree, RF-GP, RF-ANN, M5Tree-GP, M5Tree-ANN, GP-ANN) are introduced as the novelty of this study for estimating the heavy metal's sorption efficiency on the biochar systems. Also, the biochar characteristics, metal sources, and environmental conditions were comprehensively assessed and used, and they are considered as a novelty of the study as well. For this aim, a dataset of sorption efficiency of heavy metal was collected and processed with 353 experimental tests. Various performance indexes were applied to evaluate the models, such as RMSE, R-2, MAE, color intensity, Taylor diagram, box and whiskers plots. This study's findings revealed that AI models could predict heavy metal's sorption efficiency onto biochar with high reliability, and the efficiency of the ensemble models is higher than those of individual models. The results also reported that the SVM-ANN ensemble model is the most superior model among 20 developed models. The predictive model proposed that heavy metal's efficiency sorption on biochar can be accurately forecasted and early warning for the water pollution by heavy metal. (C) 2021 Elsevier Ltd. All rights reserved.
机译:作为最大危险的环境问题之一,水和废水中的重金属被视为显着影响人类健康的危险环境之一。使用不同材料的生物炭系统有助于显着地除去水中的重金属,特别是废水处理系统。然而,Biochar系统的重金属的吸附效率高度依赖于生物炭特征,金属来源和环境条件。因此,该研究介绍了生物炭系统在水/废水中重金属吸附中的可行性以及使用人工智能(AI)模型在研究BioChar上的重金属效率吸附。因此,这项工作研究和提出了20种人工智能模型,用于预测基于五种机器学习算法和袋装技术(BA)的重金属到生物炭的吸附效率。因此,支持向量机(SVM),随机林(RF),人工神经网络(ANN),M5Tree和高斯过程(GP)算法用作本研究目的的关键算法。随后,各个模型彼此袋装以产生新的集合模型。最后,开发和评估了20种智能型号,包括SVM,RF,M5Tree,GP,ANN,BA-SVM,BA-RF,BA-AN,SVM-RF,SVM-M5Tree,SVM -GP,SVM-ANN,RF-M5TREE,RF-GP,RF-ANN,M5Tree-GP,M5Tree-ANN,GP-ANN。其中,混合模型(即Ba-SVM,Ba-RF,Ba-M5Tree,Ba-GP,Ba-Ann,SVM-RF,SVM-M5Tree,SVM-GP,SVM-ANN,RF-M5TREE,RF -GP,RF-ANN,M5Tree-GP,M5Tree-ANN,GP-ANN)作为本研究的新颖性,用于估算BioChar系统上的重金属的吸附效率。此外,全面评估和使用生物炭特征,金属来源和环境条件,并且它们也被视为研究的新颖性。为此目的,收集重金属的吸附效率数据集并用353个实验测试加工。应用各种性能指标来评估模型,例如RMSE,R-2,MAE,颜色强度,泰勒图,框和晶须图。本研究表明,AI模型可以将重金属的吸附效率预测到具有高可靠性的生物炭,并且集合模型的效率高于各个模型。结果还报告说,SVM-ANN集合模型是20个开发模型中最优越的模型。预测模型提出了重金属对生物炭的效率吸附,可以准确地预测和重金属水污染的预警。 (c)2021 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Chemosphere》 |2021年第8期|130204.1-130204.22|共22页
  • 作者单位

    Wuhan Univ Technol Sch Resources & Environm Engn Wuhan 430070 Hubei Peoples R China|Wuchang Univ Technol Sch Urban Construct Wuhan 430223 Peoples R China;

    Hanoi Univ Min & Geol Min Fac Dept Surface Min Duc Thang Ward 18 Pho Vien Hanoi 100000 Vietnam;

    Hanoi Univ Min & Geol Min Fac Dept Surface Min Duc Thang Ward 18 Pho Vien Hanoi 100000 Vietnam|Hanoi Univ Min & Geol Ctr Min Electromech Res Duc Thang Ward 18 Pho Vien Hanoi 100000 Vietnam;

    Hanoi Univ Min & Geol Fac Geosci & Geoengn Duc Thang Ward 18 Vien St Hanoi 100000 Vietnam|Hanoi Univ Min & Geol Ctr Excellence Anal & Expt Duc Thang Ward 18 Vien St Hanoi 100000 Vietnam;

    Pukyong Natl Univ Dept Energy Resources Engn Busan 48513 South Korea;

    Cent South Univ Sch Resources & Safety Engn Changsha 410083 Hunan Peoples R China;

    Univ Teknol Malaysia Dept Energy Resources Engn Johor Baharu Malaysia;

    Univ Bucharest Res Inst 90-92 Sos Panduri 5th Dist Bucharest Romania;

    Ton Duc Thang Univ Inst Computat Sci Div Computat Math & Engn Ho Chi Minh City 70000 Vietnam|Ton Duc Thang Univ Fac Math & Stat Ho Chi Minh City 700000 Vietnam;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Heavy metals; Biochar system; Sorption; Machine learning; Hybrid model; Ensemble model; Soft computing;

    机译:重金属;生物炭系统;吸附;机器学习;混合模型;集合模型;软计算;

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