Litcius/Paper detail

Photodegradation Kinetics and Deep Learning-Based Intelligent Colorimetric Method for Bioavailability-Based Dissolved Iron Speciation

Jiayi Luo, Zhaojing Huang, Shunxing Li, Fengying Zheng, Fengjiao Liu, Qianyan Huang, Xuguang Huang, Haijiao Xie

2022Analytical Chemistry10 citationsDOI

Abstract

Via the photodegradation of dissolved iron (dFe) complexes in the euphotic zone, released free Fe(III) is the most important source of bioavailable iron for eukaryotic phytoplankton. There is an urgent need to establish bioavailability-based dissolved iron speciation (BDIS) methods. Herein, an intelligent system with dFe pretreatment and a colorimetric sensor is developed for real-time monitoring of newly generated Fe(III) ions. According to the photodegradation kinetics of dFe, including kinetic constant and photogenerated time of free Fe(III) ions, 3 sources, 6 kinds, and 12 species of dFe are determined by our photocatalytic-assisted colorimetric sensor and deep learning model within 20.0 min. The algal dFe-uptake for 4 days can be predicted by BDIS with correlation coefficient 0.85, which could be explained by the hard and soft acids and bases theory (HSAB) and density functional theory (DFT). These results successfully demonstrate the proof-of-concept for photodegradation kinetics-based speciation and bioavailability assessments of dissolved metals.

Topics & Concepts

ChemistryPhotodegradationBioavailabilityKineticsGenetic algorithmEnvironmental chemistryDissolved organic carbonReaction rate constantPhotocatalysisCatalysisOrganic chemistryEcologyBioinformaticsPhysicsQuantum mechanicsBiologyAdvanced Nanomaterials in CatalysisMarine and coastal ecosystemsMicrobial Community Ecology and Physiology