Keyword search (4,164 papers available)

"Wastewater" Keyword-tagged Publications:

Title Authors PubMed ID
1 Towards smart PFAS management: Integrating artificial intelligence in water and wastewater systems Yaghoobian S; An J; Jeong DW; Hwang JH; 41483514
ENCS
2 Production and characterization of magnetic Biochar derived from pyrolysis of waste areca nut husk for removal of methylene blue dye from wastewater Chistie SM; Naik SU; Rajendra P; Apeksha None; Mishra RK; Albasher G; Chinnam S; Jeppu GP; Arif Z; Hameed J; 40603323
ENCS
3 Integration of Membrane-Based Pretreatment Methods with Pressure-Retarded Osmosis for Performance Enhancement: A Review Pakdaman S; Nouri G; Mulligan CN; Nasiri F; 40077246
ENCS
4 Nitrogen and organic load removal from anaerobically digested leachate using a hybrid electro-oxidation and electro-coagulation process Choudhury MR; Rajagopal R; Meertens W; Rahaman MS; 35276557
ENCS
5 Treatment of decentralized low-Strength livestock wastewater using microcurrent-assisted multi-soil-layering systems: Performance Assessment and microbial analysis Liu C; Huang G; Song P; An C; Zhang P; Shen J; Ren S; Zhao K; Huang W; Xu Y; Zheng R; 34999101
ENCS
6 Electrochemical nutrient removal from natural wastewater sources and its impact on water quality Kékedy-Nagy L; English L; Anari Z; Abolhassani M; Pollet BG; Popp J; Greenlee LF; 34974342
CSFG
7 Using 3D CityGML for the Modeling of the Food Waste and Wastewater Generation-A Case Study for the City of Montreal Braun R; Padsala R; Malmir T; Mohammadi S; Eicker U; 34240049
ENCS
8 Exploring the decentralized treatment of sulfamethoxazole-contained poultry wastewater through vertical-flow multi-soil-layering systems in rural communities. Song P, Huang G, An C, Xin X, Zhang P, Chen X, Ren S, Xu Z, Yang X 33065414
ENCS
9 Performance analysis and life cycle greenhouse gas emission assessment of an integrated gravitational-flow wastewater treatment system for rural areas. Song P, Huang G, An C, Zhang P, Chen X, Ren S 31273662
ENCS
10 Start-up of oxygen-limited autotrophic partial nitrification-anammox process for treatment of nitrite-free wastewater in a single-stage hybrid bioreactor. Hosseinpour B, Saborimanesh N, Yerushalmi L, Walsh D, Mulligan CN 31378146
CSFG
11 Pilot-scale application of a single-stage hybrid airlift BioCAST bioreactor for treatment of ammonium from nitrite-limited wastewater by a partial nitrification/anammox process. Saborimanesh N, Walsh D, Yerushalmi L, Arriagada EC, Mulligan CN 31267396
BIOLOGY

 

Title:Towards smart PFAS management: Integrating artificial intelligence in water and wastewater systems
Authors:Yaghoobian SAn JJeong DWHwang JH
Link:https://pubmed.ncbi.nlm.nih.gov/41483514/
DOI:10.1016/j.jhazmat.2025.140934
Publication:Journal of hazardous materials
Keywords:Artificial intelligenceData-driven modelingEmerging contaminantsMachine learningPer- and polyfluoroalkyl substances (PFAS)Water and wastewater treatment
PMID:41483514 Category: Date Added:2026-01-04
Dept Affiliation: ENCS
1 Department of Building, Civil and Environmental Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.
2 Department of Civil Engineering, College of Engineering and Computer Science, The University of Texas Rio Grande Valley, Edinburg, TX 78539, USA.
3 Department of Environment & Energy Engineering, Changwon National University, 20 Changwondaehak-ro, Changwon, Gyeongnam 51140, Republic of Korea. Electronic address: dwjeong@changwon.ac.kr.
4 Department of Building, Civil and Environmental Engineering, Concordia University, Montreal, QC H3G 1M8, Canada. Electronic address: Jaehoon.hwang@concordia.ca.

Description:

Artificial intelligence (AI) and machine learning (ML) are increasingly integrated into Per- and polyfluoroalkyl substances (PFAS) research; however, the field remains fragmented with substantial variation in modeling objectives. This review provides one of the most comprehensive and detailed syntheses to date of AI/ML methods across the PFAS contamination management pipeline, comparing input features, dataset structure and scale, algorithmic choices, performance metrics, and interpretability strategies reported from 2019 to 2025. At the molecular level, advances in ML-based quantitative structure-activity relationship (QSAR) modeling, physics-informed descriptors, graph learning, transfer learning, and generative modeling for PFAS classification, toxicity screening, and chemical-space expansion are summarized. For PFAS detection and non-target identification, ML frameworks for spectral interpretation are evaluated. In source allocation, supervised and unsupervised models applied to concentration profiles across water, groundwater, and sediments, are compared, highlighting how model design depends on the availability of labeled data. ML-driven PFAS occurrence and risk prediction across diverse aqueous matrices are reviewed, including multilabel, multistage, and semi-supervised frameworks that capture cross-PFAS dependencies. PFAS removal processes are also assessed in terms of the ML models used for predicting removal efficiencies, interpreting mechanistic behavior, and optimizing operational conditions. Across all domains, tree-based ensembles, and neural networks achieve superior performance, while uncertainty quantification, classifier chains, transfer learning, and generative models address challenges related to sparse labels, chemical diversity, and analytical limitations. This review offers a practical reference for researchers and regulators and identifies priority directions for developing robust, and generalizable AI/ML frameworks to support PFAS contamination management.





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