Huang Yuankai, Zhong Shifa, Gan Lan, Chen Yongsheng
School of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332, United States.
Department of Environmental Science, School of Ecological and Environmental Sciences, East China Normal University, Shanghai 200241, China.
ACS ES T Eng. 2024 Mar 25;4(7):1702-1711. doi: 10.1021/acsestengg.4c00087. eCollection 2024 Jul 12.
Polyvinyl chloride (PVC) membrane-based ion-selective electrode (ISE) sensors are common tools for water assessments, but their development relies on time-consuming and costly experimental investigations. To address this challenge, this study combines machine learning (ML), Morgan fingerprint, and Bayesian optimization technologies with experimental results to develop high-performance PVC-based ISE cation sensors. By using 1745 data sets collected from 20 years of literature, appropriate ML models are trained to enable accurate prediction and a deep understanding of the relationship between ISE components and sensor performance ( = 0.75). Rapid ionophore screening is achieved using the Morgan fingerprint based on atomic groups derived from ML model interpretation. Bayesian optimization is then applied to identify optimal combinations of ISE materials with the potential to deliver desirable ISE sensor performance. Na, Mg, and Al sensors fabricated from Bayesian optimization results exhibit excellent Nernst slopes with less than 8.2% deviation from the ideal value and superb detection limits at 10 M level based on experimental validation results. This approach can potentially transform sensor development into a more time-efficient, cost-effective, and rational design process, guided by ML-based techniques.
基于聚氯乙烯(PVC)膜的离子选择性电极(ISE)传感器是水评估的常用工具,但其开发依赖于耗时且成本高昂的实验研究。为应对这一挑战,本研究将机器学习(ML)、摩根指纹和贝叶斯优化技术与实验结果相结合,以开发高性能的基于PVC的ISE阳离子传感器。通过使用从20年文献中收集的1745个数据集,训练了合适的ML模型,以实现准确预测并深入理解ISE组件与传感器性能之间的关系( = 0.75)。基于从ML模型解释中得出的原子基团,使用摩根指纹实现了快速离子载体筛选。然后应用贝叶斯优化来确定具有提供理想ISE传感器性能潜力的ISE材料的最佳组合。根据实验验证结果,由贝叶斯优化结果制造的Na、Mg和Al传感器表现出出色的能斯特斜率,与理想值的偏差小于8.2%,并且在10 M水平具有出色的检测限。这种方法有可能将传感器开发转变为一个更高效、更具成本效益且合理的设计过程,由基于ML的技术指导。