A machine learning based framework to tailor properties of nanofiltration and reverse osmosis membranes for targeted removal of organic micropollutants

IF 11.4 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Water Research Pub Date : 2024-10-20 DOI:10.1016/j.watres.2024.122677
Airan Hu, Yanling Liu, Xiaomao Wang, Shengji Xia, Bart Van der Bruggen
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Abstract

Nanofiltration (NF) and reverse osmosis (RO) membranes play an increasingly important role in the removal of organic micropollutants (OMPs), which puts higher demands on the customization of membranes suitable for OMPs removal based on the rejection mechanisms. Here, the pathways of OMPs-targeted optimization for membranes were constructed by using machine learning (ML) to capture the correlations between OMPs removal efficiency with properties of membranes and OMPs. Through expertise assistance and rigorous modeling methodology, an accurate and robust Extreme Gradient Boosting (XGBoost) model was established, which could well recognize the dominant rejection mechanisms of OMPs (i.e., the size exclusion effect and electrostatic interactions). An exemplary application to another dataset of several high-risk OMPs showed how the optimized model could be used to estimate the overall efficiency of OMPs risk control and, more importantly, to provide quantitative guidance on membrane properties for specific removal targets. The satisfying prediction results demonstrated the good generalization of the ML model and consequently its ability to sensitively define the ideal membrane properties for the targeted removal of these (and any other concerned) OMPs. This study provides a feasible and universal ML-based framework to achieve the tailored selection and design of NF/RO membranes for OMPs risk control.

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基于机器学习的框架,定制纳滤膜和反渗透膜的特性,有针对性地去除有机微污染物
纳滤(NF)和反渗透(RO)膜在去除有机微污染物(OMPs)方面发挥着越来越重要的作用,这对根据排斥机制定制适合去除 OMPs 的膜提出了更高的要求。在此,通过使用机器学习(ML)捕捉 OMPs 去除效率与膜和 OMPs 特性之间的相关性,构建了针对 OMPs 的膜优化路径。通过专业知识的帮助和严格的建模方法,建立了一个准确、稳健的极端梯度提升(XGBoost)模型,该模型可以很好地识别 OMPs 的主要剔除机制(即尺寸排阻效应和静电相互作用)。对另一个包含几种高风险 OMP 的数据集的示例应用表明,优化模型可用于估算 OMP 风险控制的总体效率,更重要的是,可为特定去除目标的膜特性提供定量指导。令人满意的预测结果表明,ML 模型具有良好的通用性,因此能够灵敏地定义理想的膜特性,从而有针对性地去除这些(以及任何其他相关的)OMPs。这项研究提供了一个可行且通用的基于 ML 的框架,以实现用于 OMPs 风险控制的 NF/RO 膜的定制选择和设计。
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来源期刊
Water Research
Water Research 环境科学-工程:环境
CiteScore
20.80
自引率
9.40%
发文量
1307
审稿时长
38 days
期刊介绍: Water Research, along with its open access companion journal Water Research X, serves as a platform for publishing original research papers covering various aspects of the science and technology related to the anthropogenic water cycle, water quality, and its management worldwide. The audience targeted by the journal comprises biologists, chemical engineers, chemists, civil engineers, environmental engineers, limnologists, and microbiologists. The scope of the journal include: •Treatment processes for water and wastewaters (municipal, agricultural, industrial, and on-site treatment), including resource recovery and residuals management; •Urban hydrology including sewer systems, stormwater management, and green infrastructure; •Drinking water treatment and distribution; •Potable and non-potable water reuse; •Sanitation, public health, and risk assessment; •Anaerobic digestion, solid and hazardous waste management, including source characterization and the effects and control of leachates and gaseous emissions; •Contaminants (chemical, microbial, anthropogenic particles such as nanoparticles or microplastics) and related water quality sensing, monitoring, fate, and assessment; •Anthropogenic impacts on inland, tidal, coastal and urban waters, focusing on surface and ground waters, and point and non-point sources of pollution; •Environmental restoration, linked to surface water, groundwater and groundwater remediation; •Analysis of the interfaces between sediments and water, and between water and atmosphere, focusing specifically on anthropogenic impacts; •Mathematical modelling, systems analysis, machine learning, and beneficial use of big data related to the anthropogenic water cycle; •Socio-economic, policy, and regulations studies.
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