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一种用于监测饮用水中硝化作用的光学方法的开发。

Development of an Optical Method to Monitor Nitrification in Drinking Water.

作者信息

Hossain Sharif, Cook David, Chow Christopher W K, Hewa Guna A

机构信息

Scarce Resources and Circular Economy (ScaRCE), UniSA STEM, University of South Australia, Adelaide 5095, Australia.

South Australian Water Corporation, Adelaide 5000, Australia.

出版信息

Sensors (Basel). 2021 Nov 12;21(22):7525. doi: 10.3390/s21227525.

Abstract

Nitrification is a common issue observed in chloraminated drinking water distribution systems, resulting in the undesirable loss of monochloramine (NHCl) residual. The decay of monochloramine releases ammonia (NH), which is converted to nitrite (NO) and nitrate (NO) through a biological oxidation process. During the course of monochloramine decay and the production of nitrite and nitrate, the spectral fingerprint is observed to change within the wavelength region sensitive to these species. In addition, chloraminated drinking water will contain natural organic matter (NOM), which also has a spectral fingerprint. To assess the nitrification status, the combined nitrate and nitrite absorbance fingerprint was isolated from the total spectra. A novel method is proposed here to isolate their spectra and estimate their combined concentration. The spectral fingerprint of pure monochloramine solution at different concentrations indicated that the absorbance difference between two concentrations at a specific wavelength can be related to other wavelengths by a linear function. It is assumed that the absorbance reduction in drinking water spectra due to monochloramine decay will follow a similar pattern as in ultrapure water. Based on this criteria, combined nitrate and nitrite spectra were isolated from the total spectrum. A machine learning model was developed using the support vector regression (SVR) algorithm to relate the spectral features of pure nitrate and nitrite with their concentrations. The model was used to predict the combined nitrate and nitrite concentration for a number of test samples. Out of these samples, the nitrified sample showed an increasing trend of combined nitrate and nitrite productions. The predicted values were matched with the observed concentrations, and the level of precision by the method was ± 0.01 mg-N L. This method can be implemented in chloraminated distribution systems to monitor and manage nitrification.

摘要

硝化作用是在含氯胺的饮用水分配系统中观察到的常见问题,会导致一氯胺(NHCl)残留量出现不理想的损失。一氯胺的分解会释放出氨(NH),氨通过生物氧化过程转化为亚硝酸盐(NO)和硝酸盐(NO)。在一氯胺分解以及亚硝酸盐和硝酸盐生成的过程中,在对这些物质敏感的波长区域内,光谱指纹会发生变化。此外,含氯胺的饮用水会含有天然有机物(NOM),其也有光谱指纹。为了评估硝化状态,将硝酸盐和亚硝酸盐的组合吸光指纹从总光谱中分离出来。本文提出了一种新颖的方法来分离它们的光谱并估算它们的组合浓度。不同浓度的纯一氯胺溶液的光谱指纹表明,特定波长下两种浓度之间的吸光度差异可以通过线性函数与其他波长相关联。假定饮用水光谱中由于一氯胺分解导致的吸光度降低将遵循与超纯水类似的模式。基于此标准,从总光谱中分离出硝酸盐和亚硝酸盐的组合光谱。使用支持向量回归(SVR)算法开发了一个机器学习模型,以将纯硝酸盐和亚硝酸盐的光谱特征与其浓度相关联。该模型用于预测多个测试样品中硝酸盐和亚硝酸盐的组合浓度。在这些样品中,硝化后的样品显示出硝酸盐和亚硝酸盐组合生成量呈上升趋势。预测值与观测浓度相匹配,该方法的精度水平为±0.01 mg-N/L。此方法可应用于含氯胺的分配系统中,以监测和管理硝化作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/afd5/8618176/208355e46746/sensors-21-07525-g0A1.jpg

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