Affiliation:
1. Division of Forest and Biomaterials Science, Graduate School of Agriculture Kyoto University Kitashirakawa Oiwake‐cho, Sakyo‐ku Kyoto 6068502 Japan
2. Gen Gen Corporation 74 Aza Nakano Ori, Kamori‐cho Tsushima city Aichi 4960005 Japan
Abstract
AbstractThis study presents an approach for nondestructive detection of inapparent deterioration in waterborne acrylic coatings (containing cellulose nanofibers (CNFs)) for wood by using mid‐infrared spectroscopy and machine learning. The method evaluates films that mimic coatings before and after 500 h of accelerated weathering, equivalent to roughly 1 year of outdoor exposure. No noticeable transformation in film appearance is evident with a spectrophotometer following the accelerated weathering. Chemiluminescence analysis indicates oxidative degradation predominantly in the acrylic resin, an impact that the CNFs seem to mitigate. Whereas attenuated total reflectance (ATR)‐Fourier transform infrared (FTIR) spectroscopy commonly identifies chemical changes in visibly degraded coatings, it does not clearly discern prior, inapparent deterioration. In this context, machine learning algorithms (such as k‐nearest neighbors, decision tree, random forest (RF), and support vector machine (SVM)) categorize these nuanced changes by using the absorbance from 400 to 4000 cm−1 as explanatory variables. The SVM model exhibits the highest predictive accuracy, and the RF recognizes crucial variables in some wavenumber zones. This approach has the potential for enhancing recoating schedules, cutting costs, and encouraging sustainable use of wood.
Funder
Japan Science and Technology Agency
Adaptable and Seamless Technology Transfer Program through Target-Driven R and D
Subject
General Environmental Science,Renewable Energy, Sustainability and the Environment
Cited by
1 articles.
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