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      Making wood inspection easier: FTIR spectroscopy and machine learning for Brazilian native commercial wood species identification

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          Abstract

          The molecular structure of wood is mainly based on cellulose, lignin, and hemicellulose. However, low concentrations of lipids, phenolic compounds, terpenoids, fatty acids, resin acids, and waxes can also be found. In general, their color, smell, texture, quantity, and distribution of pores are used in human sensory analysis to identify native wood species, which may lead to erroneous classification, impairing quality control and inspection of commercialized wood. This study developed a fast and accurate method to discriminate Brazilian native commercial wood species using Fourier Transform Infrared Spectroscopy (FTIR) and machine learning algorithms. It not only solves the limitations of traditional methods but also goes beyond as it allows fast analyses to be obtained at low cost and high accuracy. In this work, we provide the identification of five Brazilian native wood species: Angelim-pedra ( Hymenolobium petraeum Ducke), Cambara ( Gochnatia polymorpha), Cedrinho ( Erisma uncinatum), Champagne ( Dipteryx odorata), and Peroba do Norte ( Goupia glabra Aubl). The results showed the great potential of FTIR and multivariate analysis for wood sample classification; here, the Linear SVM differentiated the five wood species with an accuracy of 98%. The developed method allows industries, laboratories, companies, and control bodies to identify the nature of the wood product after being extracted and semi-manufactured.

          Abstract

          Sawdust molecular spectra are used as input data for the machine-learning algorithm to classify/identify different wood species.

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          Most cited references33

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          Principal component analysis

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            Biofibres and biocomposites

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              Effects of short-time vibratory ball milling on the shape of FT-IR spectra of wood and cellulose

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                Author and article information

                Journal
                RSC Adv
                RSC Adv
                RA
                RSCACL
                RSC Advances
                The Royal Society of Chemistry
                2046-2069
                1 March 2024
                29 February 2024
                1 March 2024
                : 14
                : 11
                : 7283-7289
                Affiliations
                [a ] UFMS – Universidade Federal de Mato Grosso do Sul, Optics and Photonic Lab (SISFOTON-UFMS) Campo Grande MS Brazil cicero.cena@ 123456ufms.br
                [b ] UFGD – Universidade Federal da Grande Dourados Dourados MS Brazil
                [c ] UEMS – Universidade Estadual de Mato Grosso do Sul Dourados MS Brazil
                Author information
                https://orcid.org/0000-0002-0204-2779
                https://orcid.org/0000-0002-8898-8556
                https://orcid.org/0000-0001-8766-6144
                Article
                d4ra00174e
                10.1039/d4ra00174e
                10906009
                38433943
                6e6967b0-a896-4cd8-8df5-3b3942a76725
                This journal is © The Royal Society of Chemistry
                History
                : 7 January 2024
                : 26 February 2024
                Page count
                Pages: 7
                Categories
                Chemistry
                Custom metadata
                Paginated Article

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