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
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