Laboratory of Environmental Aquatic Chemistry, Department of Environmental Science, School of Geography and Tourism, Shaanxi Normal University, Xi'an, 710062, China.
Shaanxi Key Laboratory of Earth Surface System and Environmental Carrying Capacity, College of Urban and Environmental Sciences, Northwest University, Xi'an, 710127, China.
Environ Sci Pollut Res Int. 2024 Apr;31(18):26555-26566. doi: 10.1007/s11356-024-32791-3. Epub 2024 Mar 6.
Drinking water is vital for human health and life, but detecting multiple contaminants in it is challenging. Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct analysis and rapid detection method of three indicators of arsenic, cadmium, and selenium in complex drinking water systems by combining a novel long-path spectral imager with machine learning models. Our technique can obtain multiple parameters in about 1 s. The experiment involved setting up samples from various drinking water backgrounds and mixed groups, totaling 9360 injections. A raw visible light source ranging from 380 to 780 nm was utilized, uniformly dispersing light into the sample cell through a filter. The residual beam was captured by a high-definition camera, forming a distinctive spectrum. Three deep learning models-ResNet-50, SqueezeNet V1.1, and GoogLeNet Inception V1-were employed. Datasets were divided into training, validation, and test sets in a 6:2:2 ratio, and prediction performance across different datasets was assessed using the coefficient of determination and root mean square error. The experimental results show that a well-trained machine learning model can extract a lot of feature image information and quickly predict multi-dimensional drinking water indicators with almost no preprocessing. The model's prediction performance is stable under different background drinking water systems. The method is accurate, efficient, and real-time and can be widely used in actual water supply systems. This study can improve the efficiency of water quality monitoring and treatment in water supply systems, and the method's potential for environmental monitoring, food safety, industrial testing, and other fields can be further explored in the future.
饮用水对人类健康和生命至关重要,但检测其中的多种污染物具有挑战性。传统的测试方法既耗时又费力,缺乏捕捉水质在短时间内急剧变化的能力。本文提出了一种将新型长路径光谱成像仪与机器学习模型相结合,直接分析和快速检测复杂饮用水系统中砷、镉和硒三种指标的方法。我们的技术可以在大约 1 秒内获得多个参数。该实验涉及设置来自各种饮用水背景和混合组的样本,共进行了 9360 次注射。使用了一个原始的可见光光源,波长范围为 380 到 780nm,通过滤光片将光均匀地分散到样品池中。剩余的光束由高清相机捕获,形成独特的光谱。使用了三种深度学习模型——ResNet-50、SqueezeNet V1.1 和 GoogLeNet Inception V1。数据集以 6:2:2 的比例分为训练集、验证集和测试集,使用决定系数和均方根误差评估不同数据集的预测性能。实验结果表明,经过良好训练的机器学习模型可以提取大量特征图像信息,并在几乎无需预处理的情况下快速预测多维饮用水指标。该模型在不同背景饮用水系统下的预测性能稳定。该方法准确、高效、实时,可广泛应用于实际供水系统。本研究可以提高供水系统水质监测和处理的效率,未来还可以进一步探索该方法在环境监测、食品安全、工业测试等领域的潜力。