Machine Learning Approach for Predicting Perfluorooctanesulfonate Rejection in Efficient Nanofiltration Treatment and Removal

IF 4.8 Q1 ENVIRONMENTAL SCIENCES
Saurabh Singh*, Gourav Suthar, Akhilendra Bhushan Gupta and Achintya N. Bezbaruah, 
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引用次数: 0

Abstract

Perfluorooctanesulfonic acid (PFOS) is a persistent environmental contaminant posing significant health risks, requiring efficient remediation methods. This study explores the use of advanced nanofiltration techniques, combined with machine learning (ML) optimization, to enhance PFOS removal from water. Key parameters such as membrane type, temperature, PFOS concentration, pH, pressure, and cation presence were analyzed for their influence on PFOS rejection efficiency. Five ML models─multiple linear regression (MLR), lasso regression, ridge regression, random forest (RF), and artificial neural networks (ANN)─were applied to improve predictive accuracy and optimize the filtration process. Data from various studies were analyzed, revealing that PFOS rejection was highly sensitive to trivalent cations and pH changes. The ANN model achieved the highest accuracy (R2 = 0.89) in predicting PFOS rejection, followed by RF, ridge, lasso, and MLR, in that order. The study highlights the importance of optimizing operational conditions to improve nanofiltration efficiency. ML integration provided valuable insights into treatment processes, offering practical solutions for more effective water purification. This study provides novel insights into PFOS rejection mechanisms, focusing on operational parameters and their interactions to optimize nanofiltration. It provides practical guidance for improving water treatment efficiency and protecting public health and the environment.

Abstract Image

全氟辛烷磺酸(PFOS)是一种持久性环境污染物,对健康构成重大风险,需要高效的修复方法。本研究探索了先进纳滤技术与机器学习(ML)优化相结合的使用方法,以提高水中全氟辛烷磺酸的去除率。研究分析了膜类型、温度、全氟辛烷磺酸浓度、pH 值、压力和阳离子存在等关键参数对全氟辛烷磺酸去除效率的影响。应用了五种多重线性回归(MLR)、套索回归、脊回归、随机森林(RF)和人工神经网络(ANN)模型来提高预测精度和优化过滤过程。对各种研究数据进行分析后发现,全氟辛烷磺酸的剔除对三价阳离子和 pH 值变化高度敏感。在预测全氟辛烷磺酸剔除率方面,ANN 模型的准确度最高(R2 = 0.89),其次依次是 RF、Ridge、Lasso 和 MLR。该研究强调了优化操作条件以提高纳滤效率的重要性。ML 整合为处理过程提供了宝贵的见解,为更有效地净化水提供了实用的解决方案。本研究提供了有关全氟辛烷磺酸排斥机制的新见解,重点关注优化纳滤的操作参数及其相互作用。它为提高水处理效率、保护公众健康和环境提供了实用指导。
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CiteScore
5.40
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0.00%
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