Development of one-class classification method for identifying healthy T. granosa from those contaminated with uncertain heavy metals by LIBS
Abstract
Keywords: laser-induced breakdown spectroscopy, Heavy metal contamination, Tegillarca granosa, one-class classification
DOI: 10.25165/j.ijabe.20231604.7666
Citation: Xie Z H, Feng X A, Chen X, Huang G Z, Chen X J, Li L M, et al. Development of one-class classification method for identifying healthy T. granosa from those contaminated with uncertain heavy metals by LIBS. Int J Agric & Biol Eng, 2023; 16(4): 201-206.
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