School of Environmental Science and Engineering, Guangdong University of Petrochemical Technology, Maoming 525000, China.
School of Environmental Science and Engineering, Guangdong University of Petrochemical Technology, Maoming 525000, China; MOE Key Laboratory of Resources and Environmental System Optimization, College of Environmental Science and Engineering, North China Electric Power University, Beijing 102206, China.
J Environ Sci (China). 2025 Mar;149:68-78. doi: 10.1016/j.jes.2024.01.023. Epub 2024 Jan 30.
The presence of aluminum (Al) and fluoride (F) ions in the environment can be harmful to ecosystems and human health, highlighting the need for accurate and efficient monitoring. In this paper, an innovative approach is presented that leverages the power of machine learning to enhance the accuracy and efficiency of fluorescence-based detection for sequential quantitative analysis of aluminum (Al) and fluoride (F) ions in aqueous solutions. The proposed method involves the synthesis of sulfur-functionalized carbon dots (C-dots) as fluorescence probes, with fluorescence enhancement upon interaction with Al ions, achieving a detection limit of 4.2 nmol/L. Subsequently, in the presence of F ions, fluorescence is quenched, with a detection limit of 47.6 nmol/L. The fingerprints of fluorescence images are extracted using a cross-platform computer vision library in Python, followed by data preprocessing. Subsequently, the fingerprint data is subjected to cluster analysis using the K-means model from machine learning, and the average Silhouette Coefficient indicates excellent model performance. Finally, a regression analysis based on the principal component analysis method is employed to achieve more precise quantitative analysis of aluminum and fluoride ions. The results demonstrate that the developed model excels in terms of accuracy and sensitivity. This groundbreaking model not only showcases exceptional performance but also addresses the urgent need for effective environmental monitoring and risk assessment, making it a valuable tool for safeguarding our ecosystems and public health.
环境中铝(Al)和氟(F)离子的存在可能对生态系统和人类健康造成危害,这凸显了对准确、高效监测的需求。本文提出了一种创新方法,利用机器学习的强大功能提高荧光检测的准确性和效率,用于顺序定量分析水溶液中的铝(Al)和氟(F)离子。该方法涉及合成硫功能化碳点(C-dots)作为荧光探针,与 Al 离子相互作用时荧光增强,检测限为 4.2 nmol/L。随后,在 F 离子存在下,荧光被猝灭,检测限为 47.6 nmol/L。使用 Python 中的跨平台计算机视觉库提取荧光图像的指纹,然后进行数据预处理。随后,使用机器学习中的 K-均值模型对指纹数据进行聚类分析,平均轮廓系数表明模型性能优异。最后,基于主成分分析方法进行回归分析,实现对铝和氟离子的更精确定量分析。结果表明,所开发的模型在准确性和灵敏度方面表现出色。这个开创性的模型不仅具有出色的性能,还解决了有效环境监测和风险评估的迫切需求,是保护我们的生态系统和公共健康的有价值的工具。