MOE Key Laboratory of Intelligent Manufacturing Technology, Department of Civil and Environmental Engineering, College of Engineering, Shantou University, Shantou, Guangdong, 515063, China; Discipline of Civil and Infrastructure, School of Engineering, Royal Melbourne Institute of Technology (RMIT), Victoria, 3001, Australia.
MOE Key Laboratory of Intelligent Manufacturing Technology, Department of Civil and Environmental Engineering, College of Engineering, Shantou University, Shantou, Guangdong, 515063, China.
Environ Pollut. 2022 Sep 1;308:119611. doi: 10.1016/j.envpol.2022.119611. Epub 2022 Jun 15.
Many technologies have been designed to monitor, evaluate, and improve surface water quality, as high-quality water is essential for human activities including agriculture, livestock, and industry. As such, in this study, we investigated water quality indices (WQIs), trophic status indices (TSIs), and heavy metal indices (HMIs) for assessing surface water quality. Based on these indices, we summarised and compared water assessment models using expert system (ES) and machine learning (ML) methods. We also discussed the current status and future perspectives of water quality management. The results of our analyses showed that assessment indices can be used in three aspects of surface water quality assessment: WQIs are aggregated from multiple parameters and commonly used in surface water quality classification; TSIs are calculated from the concentrations of different nutrients required for algae and bacteria, and employed to evaluate the eutrophication levels of lakes and reservoirs; HMIs are mainly applied for human health risk assessment and the analysis of correlation of heavy metal sources. ES- and ML-based assessment models have been developed to efficiently generate assessment indices and predict water quality status based on big data obtained from new techniques. By implementing dynamic monitoring and analysis of water quality, we designed a next-generation water quality management system based on the above indices and assessment models, which shows promise for improving the accuracy of water quality assessment.
许多技术被设计用于监测、评估和改善地表水水质,因为高质量的水对于包括农业、畜牧业和工业在内的人类活动至关重要。因此,在本研究中,我们调查了水质指数(WQIs)、营养状态指数(TSIs)和重金属指数(HMIs),以评估地表水水质。基于这些指数,我们使用专家系统(ES)和机器学习(ML)方法总结和比较了水评估模型。我们还讨论了水质管理的现状和未来展望。我们的分析结果表明,评估指数可用于地表水水质评估的三个方面:WQIs 是从多个参数汇总得到的,常用于地表水水质分类;TSIs 是根据藻类和细菌所需的不同营养物质的浓度计算得出的,用于评估湖泊和水库的富营养化水平;HMIs 主要用于人体健康风险评估和重金属来源的相关性分析。已经开发了基于 ES 和 ML 的评估模型,以根据新技术获得的大数据高效地生成评估指数并预测水质状况。通过实施水质的动态监测和分析,我们设计了一种基于上述指数和评估模型的下一代水质管理系统,有望提高水质评估的准确性。