Abstract

Visualization of acetic anhydride flow and its heterogeneity within the wood block necessitates the development of a reliable and robust analytical method. Hyperspectral imaging has the potential to acquire a continuous spectrum of chemical analytes at different spectral channels in terms of pixels. The large set of chemical data (3-dimensional) can be expanded into relevant information in a multivariate fashion. We quantified gradients in acetylation degree over cross sections of Scots pine sapwood caused by a one-sided flow of acetic anhydride into wood blocks using near-infrared hyperspectral imaging. A principal component analysis (PCA) model was used to decompose the high-dimensional data into orthogonal components. Moreover, a partial least-squares (PLS) hyperspectral image regression model was developed to quantify heterogeneity in acetylation degree that was affected by the flow of acetic anhydride through wood blocks and into the tracheid cell walls. The model was validated and optimized with an external test data set and a prediction map using the root-mean-squared error of an individual predicted pixel. The model performance parameters are well suited, and prediction of the acetylation degree at the image level was complemented with confocal Raman imaging of selected areas on the microlevel. NIR image regression showed that the acetylation degree was determined not only by the time-dependent flow of the acetic anhydride through the wood macropores but also by the diffusion of the anhydride into the wood cell walls. Thereby, thin-walled earlywood sections were acetylated faster than the thick-walled latewood sections. Our results demonstrate the suitability of near-infrared imaging as a tool for quality control and process optimization at the industrial scale.

Highlights

  • Hyperspectral imaging is a fast, nondestructive, and leadingedge analytical technology, which couples the traditional digital imaging and spectroscopic methods in a single system

  • Out of many practical applications of hyperspectral imaging coupled with near-infrared spectroscopy in the fields of food, petrochemicals, agriculture, polymers, and textiles, it has been encompassed in wood sciences to practically predict the wooden anatomical features, chemical composition, mechanical properties, wood modification, moisture content, and degradation.[5−8] The major reason for the expansion of hyperspectral imaging is its integration with data mining to extract the useful information from the hypercube in a multivariate way

  • The reaction kinetics of acetylation were initially measured based on the weight percentage gain (WPG) of each sample

Read more

Summary

Introduction

Hyperspectral imaging is a fast, nondestructive, and leadingedge analytical technology, which couples the traditional digital imaging and spectroscopic methods in a single system. Spatial resolution is the information on the physical area of a surface captured by all the pixels in the form of a data hypercube.[2,3] The accurate analysis of hypercube information, which contains a 3D data structure, can be used to estimate reliable physical and chemical characteristics of the objects.[3,4] Out of many practical applications of hyperspectral imaging coupled with near-infrared spectroscopy in the fields of food, petrochemicals, agriculture, polymers, and textiles, it has been encompassed in wood sciences to practically predict the wooden anatomical features, chemical composition, mechanical properties, wood modification, moisture content, and degradation.[5−8] The major reason for the expansion of hyperspectral imaging is its integration with data mining to extract the useful information from the hypercube in a multivariate way. The careful implementation of chemometric methods can enhance the real-time applications of in-line or online visual inspection and monitoring in the wood industry.[10]

Methods
Results
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.