1,410
Views
6
CrossRef citations to date
0
Altmetric
Articles

Hyperspectral NIR time series imaging used as a new method for estimating the moisture content dynamics of thermally modified Scots pine

, , &
Pages 49-57 | Received 09 Aug 2019, Accepted 18 May 2020, Published online: 04 Jun 2020

References

  • Afseth, N. K. and Kohler, A. (2012) Extended multiplicative signal correction in vibrational spectroscopy, a tutorial. Chemometrics and Intelligent Laboratory Systems, 117, 92–99.
  • Barnes, R., Dhanoa, M. and Lister, S. J. (1989) Standard normal variate transformation and de-trending of near-infrared diffuse reflectance spectra. Applied Spectroscopy, 43(5), 772–777.
  • Björck, Å and Indahl, U. G. (2017) Fast and stable partial least squares modelling: A benchmark study with theoretical comments. Journal of Chemometrics, 31(8), e2898.
  • Bohumil, K. (1992) Skandinaviske normer for testing av små feilfrie prøver av heltre (Ås, Norway: Skogforsk. Norwegian Forest Research Institute).
  • Brelid, P. L. (2013) Benchmarking and State of the Art for Modified Wood (Borås: SP Technical Research Institute of Sweden).
  • Cirule, D., Meija-Feldmane, A., Kuka, E., Andersons, B., Kurnosova, N., Antons, A. and Tuherm, H. (2015) Spectral sensitivity of thermally modified and unmodified wood. BioResources, 11(1), 324–335.
  • Curcio, J. A. and Petty, C. C. (1951) The near infrared absorption spectrum of liquid water. Journal of the Optical Society of America, 41(5), 302.
  • Dunningham, E. and Sargent, R. (2015) Review of New and Emerging International Wood Modification Technologies (Melbourne: Forest & Wood Products Australia).
  • Edward, C. P. (1957) How Wood Shrinks and Swells (Wisconsin: Forest Service, U.S. Department of Agriculture).
  • Esteves, B. and Pereira, H. (2009) Wood modification by heat treatment: A review. BioResources, 4, 370–404.
  • Fang, S., Zhu, M.-Q. and He, C.-H. (2009) Moving window as a variable selection method in potentiometric titration multivariate calibration and its application to the simultaneous determination of ions in Raschig synthesis mixtures. Journal of Chemometrics, 23(3), 117–123.
  • Fujimoto, T., Kobori, H. and Tsuchikawa, S. (2012) Prediction of wood density independently of moisture conditions using near infrared spectroscopy. Journal of Near Infrared Spectroscopy, 20(3), 353–359.
  • Fujimoto, T., Kurata, Y., Matsumoto, K. and Tsuchikawa, S. (2008) Application of near infrared spectroscopy for estimating wood mechanical properties of small clear and full length lumber specimens. Journal of Near Infrared Spectroscopy, 16(6), 529–537.
  • Geladi, P. and MacDougall, D. M. H. (1985) Linearization and scatter-correction for near-infrared reflectance spectra of Meat. Applied Spectroscopy, 39(3), 491–500.
  • Hameury, S. and Sterley, M. (2006) Magnetic resonance imaging of moisture distribution in Pinus sylvestris L. exposed to daily indoor relative humidity fluctuations. Wood Material Science and Engineering, 1(3-4), 116–126.
  • Hill, C. A. S. (2006) Wood Modification (Chichester: Wiley).
  • Javed, M. A., Kekkonen, P. M., Ahola, S. and Telkki, V.-V. (2015) Magnetic resonance imaging study of water absorption in thermally modified pine wood. Holzforschung, 69(7), 899–907.
  • Jiang, J.-H., Berry, R. J., Siesler, H. W. and Ozaki, Y. (2002) Wavelength interval selection in multicomponent spectral analysis by moving window partial least-squares regression with applications to mid-infrared and near-infrared spectroscopic data. Analytical Chemistry, 74(14), 3555–3565.
  • Kekkonen, P. M., Ylisassi, A. and Telkki, V.-V. (2014) Absorption of water in thermally modified pine wood as studied by nuclear magnetic resonance. The Journal of Physical Chemistry C, 118(4), 2146–2153.
  • Kobori, H., Gorretta, N., Rabatel, G., Bellon-Maurel, V., Chaix, G., Roger, J.-M. and Tsuchikawa, S. (2013) Applicability of Vis-NIR hyperspectral imaging for monitoring wood moisture content (MC). Holzforschung, 67(3), 307–314.
  • Martens, H. and Stark, E. (1991) Extended multiplicative signal correction and spectral interference subtraction: New preprocessing methods for near infrared spectroscopy. Journal of Pharmaceutical and Biomedical Analysis, 9(8), 625–635.
  • MATLAB (2019) MATLAB, Version 9.6.0 (R2019a) (Natick, Massachusetts: The MathWorks Inc).
  • Myronycheva, O., Sidorova, E., Hagman, O., Sehlstedt-Persson, M., Karlsson, O. and Sandberg, D. (2018) Hyperspectral imaging surface analysis for dried and thermally modified wood: An exploratory study. Journal of Spectroscopy, 2018, 1–10.
  • Nørgaard, L. S. A., Wagner, J., Nielsen, J., Munck, L. and Engelsen, S. (2000) Interval partial least-squares regression (iPLS): A comparative chemometric study with an example from near-infrared spectroscopy. Applied Spectroscopy, 54(3), 413–419.
  • Rinnan, Å, Berg, F. v. d. and Engelsen, S. B. (2009) Review of the most common pre-processing techniques for near-infrared spectra. TrAC Trends in Analytical Chemistry, 28(10), 1201–1222.
  • Sandak, A., Sandak, J. and Negri, M. (2010) Relationship between near-infrared (NIR) spectra and the geographical provenance of timber. Wood Science and Technology, 45(1), 35–48.
  • Sandak, J., Sandak, A., Pauliny, D., Krasnoshlyk, V. and Hagman, O. (2013) Near infrared spectroscopy as a tool for estimation of mechanical stresses in wood. Advanced Materials Research, 778, 448–453.
  • Sandberg, D. and Kutnar, A. (2016) Thermally modified timber: recent developments in Europe and North America. Wood and Fiber Science, 48, 28–39.
  • Savitzky, A. and Golay, M. J. E. (1964) Smoothing and differentiation of data by simplified least squares procedures. Analytical Chemistry, 36(8), 1627–1639.
  • Schweitzer, P. A. (1999) Atmospheric Degradation and Corrosion Control (New York: M. Dekker), p. 197.
  • Smeland, K. A., Liland, K. H., Sandak, J., Sandak, A., Gobakken, L. R., Thiis, T. K. and Burud, I. (2016) Near infrared hyperspectral imaging in transmission mode: Assessing the weathering of thin wood samples. Journal of Near Infrared Spectroscopy, 24(6), 595–604.
  • Stefansson, P., Fortuna, J., Rahmati, H., Burud, I., Konevskikha, T. and Martens, H. (2019a) Hyperspectral time series analysis: Hyperspectral image data streams interpreted by modeling known and unknown variations. In Jose Manuel Amigo (ed.) Hyperspectral Imaging, Volume 32, 1st ed. (Copenhagen: Elsevier), pp. 305–331.
  • Stefansson, P., Indahl, U. G., Liland, K. H. and Burud, I. (2019b) Orders of magnitude speed increase in partial least squares feature selection with new simple indexing technique for very tall datasets. Journal of Chemometrics, 33(11), 1–9.
  • Watanabe, K., Mansfield, S. D. and Avramidis, S. (2011) Application of near-infrared spectroscopy for moisture-based sorting of green hem-fir timber. Journal of Wood Science, 57(4), 288–294.