Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy

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Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy. / Mancini, Manuela; Taavitsainen, Veli-Matti; Rinnan, Åsmund.

In: Waste Management, Vol. 178, 2024, p. 321-330.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Mancini, M, Taavitsainen, V-M & Rinnan, Å 2024, 'Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy', Waste Management, vol. 178, pp. 321-330. https://doi.org/10.1016/j.wasman.2024.02.033

APA

Mancini, M., Taavitsainen, V-M., & Rinnan, Å. (2024). Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy. Waste Management, 178, 321-330. https://doi.org/10.1016/j.wasman.2024.02.033

Vancouver

Mancini M, Taavitsainen V-M, Rinnan Å. Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy. Waste Management. 2024;178:321-330. https://doi.org/10.1016/j.wasman.2024.02.033

Author

Mancini, Manuela ; Taavitsainen, Veli-Matti ; Rinnan, Åsmund. / Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy. In: Waste Management. 2024 ; Vol. 178. pp. 321-330.

Bibtex

@article{ba84dcdceb154328a1f883e4ce988263,
title = "Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy",
abstract = "Recycling of post-consumer waste wood material is becoming an increasingly appealing alternative to disposal. However, its huge heterogeneity is calling for an assessment of the material characteristics in order to define the best recycling option and intended reuse. In fact, waste wood comes into a variety of uses/types of wood, along with several levels of contamination, and it can be divided into different categories based on its composition and quality grade. This study provides the measurement of more than a hundred waste wood samples and their characterisation using a hand-held NIR spectrophotometer. Three classification methods, i.e. K-nearest Neighbours (KNN), Principal Component Analysis – Linear Discriminant Analysis (PCA-LDA) and PCA-KNN, have been compared to develop models for the sorting of waste wood in quality categories according to the best-suited reuse. In addition, the classification performance has been investigated as a function of the number of the spectral measurements of the sample and as the average of the spectral measurements. The results showed that PCA-KNN performs better than the other classification methods, especially when the material is ground to 5 cm of particle size and the spectral measurements are averaged across replicates (classification accuracy: 90.9 %). NIR spectroscopy, coupled with chemometrics, turned out to be a promising tool for the real-time sorting of waste wood material, ensuring a more accurate and sustainable waste wood management. Obtaining real-time information about the quality and characteristics of waste wood material translates into a decision of the best recycling option, increasing its recycling potential.",
keywords = "Circular economy, KNN, PCA-KNN, PCA-LDA, Sorting",
author = "Manuela Mancini and Veli-Matti Taavitsainen and {\AA}smund Rinnan",
note = "Publisher Copyright: {\textcopyright} 2024 The Author(s)",
year = "2024",
doi = "10.1016/j.wasman.2024.02.033",
language = "English",
volume = "178",
pages = "321--330",
journal = "Waste Management",
issn = "0956-053X",
publisher = "Pergamon Press",

}

RIS

TY - JOUR

T1 - Comparison of classification methods performance for defining the best reuse of waste wood material using NIR spectroscopy

AU - Mancini, Manuela

AU - Taavitsainen, Veli-Matti

AU - Rinnan, Åsmund

N1 - Publisher Copyright: © 2024 The Author(s)

PY - 2024

Y1 - 2024

N2 - Recycling of post-consumer waste wood material is becoming an increasingly appealing alternative to disposal. However, its huge heterogeneity is calling for an assessment of the material characteristics in order to define the best recycling option and intended reuse. In fact, waste wood comes into a variety of uses/types of wood, along with several levels of contamination, and it can be divided into different categories based on its composition and quality grade. This study provides the measurement of more than a hundred waste wood samples and their characterisation using a hand-held NIR spectrophotometer. Three classification methods, i.e. K-nearest Neighbours (KNN), Principal Component Analysis – Linear Discriminant Analysis (PCA-LDA) and PCA-KNN, have been compared to develop models for the sorting of waste wood in quality categories according to the best-suited reuse. In addition, the classification performance has been investigated as a function of the number of the spectral measurements of the sample and as the average of the spectral measurements. The results showed that PCA-KNN performs better than the other classification methods, especially when the material is ground to 5 cm of particle size and the spectral measurements are averaged across replicates (classification accuracy: 90.9 %). NIR spectroscopy, coupled with chemometrics, turned out to be a promising tool for the real-time sorting of waste wood material, ensuring a more accurate and sustainable waste wood management. Obtaining real-time information about the quality and characteristics of waste wood material translates into a decision of the best recycling option, increasing its recycling potential.

AB - Recycling of post-consumer waste wood material is becoming an increasingly appealing alternative to disposal. However, its huge heterogeneity is calling for an assessment of the material characteristics in order to define the best recycling option and intended reuse. In fact, waste wood comes into a variety of uses/types of wood, along with several levels of contamination, and it can be divided into different categories based on its composition and quality grade. This study provides the measurement of more than a hundred waste wood samples and their characterisation using a hand-held NIR spectrophotometer. Three classification methods, i.e. K-nearest Neighbours (KNN), Principal Component Analysis – Linear Discriminant Analysis (PCA-LDA) and PCA-KNN, have been compared to develop models for the sorting of waste wood in quality categories according to the best-suited reuse. In addition, the classification performance has been investigated as a function of the number of the spectral measurements of the sample and as the average of the spectral measurements. The results showed that PCA-KNN performs better than the other classification methods, especially when the material is ground to 5 cm of particle size and the spectral measurements are averaged across replicates (classification accuracy: 90.9 %). NIR spectroscopy, coupled with chemometrics, turned out to be a promising tool for the real-time sorting of waste wood material, ensuring a more accurate and sustainable waste wood management. Obtaining real-time information about the quality and characteristics of waste wood material translates into a decision of the best recycling option, increasing its recycling potential.

KW - Circular economy

KW - KNN

KW - PCA-KNN

KW - PCA-LDA

KW - Sorting

U2 - 10.1016/j.wasman.2024.02.033

DO - 10.1016/j.wasman.2024.02.033

M3 - Journal article

C2 - 38430746

AN - SCOPUS:85186604400

VL - 178

SP - 321

EP - 330

JO - Waste Management

JF - Waste Management

SN - 0956-053X

ER -

ID: 386197846