
KNN algorithm and multivariate analysis to select and classify starch films
2022; Elsevier BV; Volume: 34; Linguagem: Inglês
10.1016/j.fpsl.2022.100976
ISSN2214-2894
AutoresMaurício Madson dos Santos Freitas, Jhonatas Rodrigues Barbosa, Emilly Marry dos Santos Martins, Luiza Helena da Silva Martins, Fabrício de Souza Farias, Lúcia de Fátima Henriques Lourenço, Natácia da Silva e Silva,
Tópico(s)Nanocomposite Films for Food Packaging
ResumoBiodegradable starch films are promising as primary food packaging, and the k-Nearest Neighbor (KNN) algorithm enables selection and classification according to pre-established parameters. Here, the KNN algorithm and principal component analysis prove to be useful tools for sorting and selecting biodegradable starch packaging. Twelve biodegradable films were produced using starch from different botanical sources by the casting method. The KNN analysis evaluated data on thickness, water vapor permeability, tensile strength, elongation, water activity, transparency, and opacity, to obtain an information bank with 36 samples. Biodegradable films are visually homogeneous, transparent, without deformation, and easy to handle. The formulation (Cassava 5%) was classified as the best film, with WVP 1.21 × 10−10 (g. m−1. s−1. Pa−1), TS 2.34 (MPa), thickness 0.193 (mm), Aw 0.408, transparency 0.55 and opacity 0.63. The KNN algorithm and principal component analysis are advanced tools for classifying and selecting biodegradable starch films.
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