Foroughi Maryam, Zolghadr Nasab Hassan, Shokoohi Reza, Ahmadi Azqhandi Mohammad Hossein, Nadali Azam, Mazaheri Ashraf
Department of Environmental Health, School of Health, Torbat Heydariyeh University of Medical Sciences Torbat Heydariyeh Iran.
Health Sciences Research Center, Torbat Heydariyeh University of Medical Sciences Torbat Heydariyeh Iran.
RSC Adv. 2019 May 24;9(28):16083-16094. doi: 10.1039/c9ra02881a. eCollection 2019 May 20.
In real-scale applications, where NPs are injected into the aqueous environment for remediation, they may interact with natural organic matter (NOM). This interaction can alter nanoparticles' (NPs) physicochemical properties, sorption behavior, and even ecological effects. This study aimed to investigate sorption of Pb(ii) onto multi-walled carbon nanotube (MWCNT) in presence of NOM. The predominant behavior of the process was examined comparatively using response surface methodology (RSM) and boosted regression tree (BRT)-based models. The influence of four main effective parameters, namely Pb(ii) and humic acid (HA) concentrations (mg L), pH, and time (min) on Pb removal (%) was evaluated by contributing factor importance rankings (BRT) and analysis of variance (RSM). The applicability of the BRT and RSM models for description of the predominant behavior in the design space was checked and compared using statistics of absolute average deviation (AAD), mean absolute error (MAE), root mean square error (RMSE), and multiple correlation coefficient ( ). The results showed that although both approaches exhibited good performance, the BRT model was more precise, indicating that it could be a powerful method for the modeling of NOM-presence studies. Importance rankings of BRT displayed that the effectiveness order of the studied parameters is pH > time > Pb(ii) concentration > HA concentration. Although HA concentration showed the least effect in comparison with three other studied parameters theoretically, the experimental results revealed that Pb(ii) removal is enhanced in presence of HA (73% 81.77%), which was confirmed by SEM/EDX analyses. Hence, maximum removal (% = 81.77) was attained at an initial Pb(ii) concentration of 9.91 mg L, HA concentration of 0.3 mg L, pH of 4.9, and time of 55.2 min.
在实际规模的应用中,纳米颗粒(NPs)被注入水环境进行修复时,它们可能会与天然有机物(NOM)发生相互作用。这种相互作用会改变纳米颗粒(NPs)的物理化学性质、吸附行为,甚至生态效应。本研究旨在探究在存在NOM的情况下,Pb(II)在多壁碳纳米管(MWCNT)上的吸附情况。使用响应面方法(RSM)和基于增强回归树(BRT)的模型对该过程的主要行为进行了比较研究。通过贡献因子重要性排名(BRT)和方差分析(RSM)评估了四个主要有效参数,即Pb(II)和腐殖酸(HA)浓度(mg/L)、pH值和时间(min)对Pb去除率(%)的影响。使用绝对平均偏差(AAD)、平均绝对误差(MAE)、均方根误差(RMSE)和多重相关系数( )等统计量,检验并比较了BRT和RSM模型在描述设计空间中主要行为的适用性。结果表明,尽管两种方法都表现出良好的性能,但BRT模型更精确,这表明它可能是一种用于模拟存在NOM研究的强大方法。BRT的重要性排名显示,所研究参数的有效性顺序为pH值>时间>Pb(II)浓度>HA浓度。虽然理论上HA浓度与其他三个研究参数相比影响最小,但实验结果表明,在HA存在的情况下Pb(II)的去除率有所提高(73% 81.77%),这通过扫描电子显微镜/能谱分析(SEM/EDX)得到了证实。因此,在初始Pb(II)浓度为9.91 mg/L、HA浓度为0.3 mg/L、pH值为4.9和时间为55.2 min时,达到了最大去除率(% = 81.77)。