Issue 46, 2021

An electrodeposited nano-porous and neural network-like Ln@HOF film for SO2 gas quantitative detection via fluorescent sensing and machine learning

Abstract

The intelligent fluorescence detection of SO2 gas has been a research focal point and machine learning (ML) for mining and analyzing data will be extensively applied during detecting chemicals in the big data era. Herein, a nano-porous and neural network-like Tb3+-functionalized HOF film (1) is successfully manufactured via electrophoretic deposition. Ligand-to-metal charge transfer (LMCT)-induced energy transfer (ET) from ME-IPA to Tb3+ ions makes 1 emit palpable green light. 1 as a fluorescent sensor can quantitatively distinguish SO2 gas concentration with chromatic and ratiometric modes. The formation of noncovalent N⋯S interaction between amino and SO2 molecules inhibiting TADF-assisted ET and LMCT-induced ET procedures can be responsible for the sensing mechanism of 1. The detection of derivatives SO32− is also carried out in aqueous solution and serum systems. Moreover, a back propagation neural network (BPNN) model based on 1 has been firstly constructed, and real test data demonstrates that the BPNN can accurately discriminate SO2 concentration by deep ML. This work not only proposes a facile pathway to fabricate a porous fluorescent HOF film as an excellent gas sensor, but also elaborates how to combine fluorescent sensing with deep ML to realize intelligent fluorescence detection of 1 toward SO2.

Graphical abstract: An electrodeposited nano-porous and neural network-like Ln@HOF film for SO2 gas quantitative detection via fluorescent sensing and machine learning

Supplementary files

Article information

Article type
Paper
Submitted
29 Sep 2021
Accepted
08 Nov 2021
First published
08 Nov 2021

J. Mater. Chem. A, 2021,9, 26391-26400

An electrodeposited nano-porous and neural network-like Ln@HOF film for SO2 gas quantitative detection via fluorescent sensing and machine learning

X. Xu, W. Ma and B. Yan, J. Mater. Chem. A, 2021, 9, 26391 DOI: 10.1039/D1TA08431C

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