A review on material analysis of food safety based on fluorescence spectrum combined with artificial neural network technology

Trias Mahmudiono, - and Raed Obaid Saleh, - and Gunawan Widjaja, - and Tzu-Chia Chen, - and Ghulam Yasin, - and Lakshmi Thangavelu, - and Usama Salim Altimari, - and Supat Chupradit, - and Mustafa Mohammed Kadhim, - and Haydar Abdulameer Marhoon, - (2022) A review on material analysis of food safety based on fluorescence spectrum combined with artificial neural network technology. Food Science and Technology, 42. ISSN 1678-457X

[img] Text (artikel)
Artikel C18.pdf

Download (999kB)
[img] Text (turnitin)
Turnitin A1.pdf

Download (3MB)
[img] Text (validasi)
C18_Validasi.pdf

Download (438kB)
Official URL: https://www.scielo.br/j/cta/

Abstract

Aiming at the problem that it is difficult to achieve rapid and accurate detection of pesticide residues, the artificial neural network method is used to separate the mixed fluorescence spectra in the measurement of acetamiprid pesticide residues, and a fluorescence spectrum that can quickly detect the pesticide residues of acetamiprid on solid surfaces is designed. According to the back-propagation algorithm, the three-layer artificial neural network principle is used to detect the acetamiprid residue in the mixed system of acetamiprid and filter paper with severely overlapping fluorescence spectra. In the range of 340nm~400nm, using the fluorescence intensity values ​​at 20 characteristic wavelengths as the characteristic network parameters, after network training and testing, the recovery rates of acetamiprid concentrations of 40mg/kg and 90mg/kg are 102% and 97%, respectively. The relative standard deviations of the determination results were 1.4% and 1.9%, respectively. The experimental results show that the BP neural network-assisted fluorescence spectroscopy method for the determination of acetamiprid pesticide residues on filter paper has the characteristics of fast network training, short detection period, and high measurement accuracy.

Item Type: Article
Subjects: R Medicine
Divisions: 10. Fakultas Kesehatan Masyarakat > Gizi Kesehatan
Creators:
CreatorsNIM
Trias Mahmudiono, -NIDN0024038105
Raed Obaid Saleh, --
Gunawan Widjaja, --
Tzu-Chia Chen, --
Ghulam Yasin, --
Lakshmi Thangavelu, --
Usama Salim Altimari, --
Supat Chupradit, --
Mustafa Mohammed Kadhim, --
Haydar Abdulameer Marhoon, --
Depositing User: Tn Chusnul Chuluq
Date Deposited: 27 Apr 2023 14:08
Last Modified: 27 Apr 2023 14:08
URI: http://repository.unair.ac.id/id/eprint/124848
Sosial Share:

Actions (login required)

View Item View Item