Litcius/Paper detail

Intelligent analysis of carbendazim in agricultural products based on a ZSHPC/MWCNT/SPE portable nanosensor combined with machine learning methods

Xu Wang, Liang He, Lulu Xu, Zhongshou Liu, Yao Xiong, Weiqi Zhou, Hang Yao, Yangping Wen, Xiang Geng, Ruimei Wu

2023Analytical Methods14 citationsDOI

Abstract

, RMSE, MAE and RPD for the prediction set samples were 0.9924, 0.6190, 0.5360 and 10.3097, respectively. The average recovery range of CBZ in tea and rice was 98.77-109.32% and that of RSD was 0.47-2.58%, indicating that the rapid analysis of CBZ pesticide residues in agricultural products based on a portable electrochemical detection system combined with machine learning was feasible.

Topics & Concepts

NanosensorCarbendazimNanocompositeMaterials scienceCarbon nanotubeNanotechnologyChemical engineeringChemistryFungicideEngineeringAgronomyBiologyElectrochemical sensors and biosensorsElectrochemical Analysis and ApplicationsConducting polymers and applications