Litcius/Paper detail

Machine learning assisted dual-functional nanophotonic sensor for organic pollutant detection and degradation in water

Junhu Zhou, Ziqian Wu, Congran Jin, John X. J. Zhang

2024npj Clean Water32 citationsDOIOpen Access PDF

Abstract

Abstract This study presents a dual-functional thin film, known as Ag nanoparticles decorated, ZnO nanorods coated silica nanofibers (AgNP-ZnONR-SNF), which demonstrates remarkable capabilities in both water purification and organic pollutants sensing. The 3D fibrous structure of ZnONR-SNF provides a large surface-area-to-volume ratio for piezo- and photo-catalytic degradation of organic pollutants under UV irradiation, achieving over 98% efficiency. Ag nanoparticles decorated on ZnONR-SNF form “hot-spot” that significantly enhance the surface-enhanced Raman spectroscopy (SERS) signal, resulting in an enhancement factor of 1056 and an experimental detection limit of 1 pg mL −1 . Furthermore, a machine learning algorithm is developed for the qualitative and quantitative detection of multiple contaminants, achieving high accuracy (92.3%) and specificity (89.3%) without the need for preliminary processing of Raman spectra. This work provides a promising nanoengineering solution for water purification and sensing with improved detection accuracy, purification efficiency, and cost-effectiveness.

Topics & Concepts

Materials scienceRaman spectroscopyDetection limitPollutantSurface-enhanced Raman spectroscopyDegradation (telecommunications)NanotechnologyNanoparticleCatalysisNanoengineeringChemical engineeringRaman scatteringComputer scienceChromatographyChemistryOpticsOrganic chemistryPhysicsTelecommunicationsEngineeringBiosensors and Analytical DetectionWater Quality Monitoring TechnologiesGas Sensing Nanomaterials and Sensors