Zhao Yiqiang, Liu Meng, Xu Xiaolong, Li Chunxu, Cheng Jiaji, Wang Zhimeng, Wang Dong, Qu Wenjuan, Li Shaoxiang
College of Environmental and Safety Engineering, Qingdao University of Science and Technology, Qingdao 266042, China.
Shandong Furixuanwei New Materials Technology Co., Ltd., Weifang 261000, China.
Toxics. 2022 Dec 27;11(1):26. doi: 10.3390/toxics11010026.
Using styrene as a proxy for VOCs, a new method was developed to remove styrene gas in nitrogen atmospheres. The effect on the styrene removal efficiency was explored by varying parameters within the continuum dynamic experimental setup, such as ferrous ion concentration, hydrogen peroxide concentration, and pH values. The by-products are quantized by a TOC analyzer. The optimal process conditions were hydrogen peroxide at 20 mmol/L, ferrous ions at 0.3 mmol/L and pH 3, resulting in an average styrene removal efficiency of 96.23%. In addition, in this study, we construct a BAS-BP neural network model with experimental data as a sample training set, which boosts the goodness-of-fit of the BP neural network and is able to tentatively predict styrene gas residuals for different front-end conditions.
以苯乙烯作为挥发性有机化合物的替代物,开发了一种在氮气气氛中去除苯乙烯气体的新方法。通过在连续动态实验装置中改变参数,如亚铁离子浓度、过氧化氢浓度和pH值,探究了其对苯乙烯去除效率的影响。副产物由总有机碳分析仪进行量化。最佳工艺条件为过氧化氢浓度20 mmol/L、亚铁离子浓度0.3 mmol/L和pH值为3,此时苯乙烯的平均去除效率为96.23%。此外,在本研究中,我们以实验数据作为样本训练集构建了一个BAS-BP神经网络模型,提高了BP神经网络的拟合优度,并能够初步预测不同前端条件下的苯乙烯气体残留量。