2D wavelet analysis and compression of on-line industrial process data. Trygg, J., Kettaneh-Wold, N., & Wallbäcks, L. Journal of Chemometrics, 15(4):299–319, 2001.
2D wavelet analysis and compression of on-line industrial process data [link]Paper  doi  abstract   bibtex   
In recent years the wavelet transform (WT) has interested a large number of scientists from many different fields. Pattern recognition, signal processing, signal compression, process monitoring and control, and image analysis are some areas where wavelets have shown promising results. In this paper, 2D wavelet analysis and compression of near-infrared spectra for on-line monitoring of wood chips is reviewed. We introduce a new parameter for outlier detection, distance to model in wavelet space (DModW), which is analogous to the residual parameter (DModX) used in principal component analysis (PCA) and partial least squares analysis (PLS). Additionally, we describe the wavelet power spectrum (WPS), the wavelet analogue of the power spectrum. The WPS gives an overview of the time–frequency content in a signal. In the example given, wavelets improved the detection of spectral shift and compressed data 1000-fold without degrading the quality of the 2D wavelet-compressed PCA model. The example concerned an industrial process-monitoring situation where near-infrared spectra are measured on-line on top of a conveyer belt filled with wood chips at a Swedish pulp plant. Copyright © 2001 John Wiley & Sons, Ltd.
@article{trygg_2d_2001,
	title = {{2D} wavelet analysis and compression of on-line industrial process data},
	volume = {15},
	issn = {1099-128X},
	url = {https://onlinelibrary.wiley.com/doi/abs/10.1002/cem.681},
	doi = {10.1002/cem.681},
	abstract = {In recent years the wavelet transform (WT) has interested a large number of scientists from many different fields. Pattern recognition, signal processing, signal compression, process monitoring and control, and image analysis are some areas where wavelets have shown promising results. In this paper, 2D wavelet analysis and compression of near-infrared spectra for on-line monitoring of wood chips is reviewed. We introduce a new parameter for outlier detection, distance to model in wavelet space (DModW), which is analogous to the residual parameter (DModX) used in principal component analysis (PCA) and partial least squares analysis (PLS). Additionally, we describe the wavelet power spectrum (WPS), the wavelet analogue of the power spectrum. The WPS gives an overview of the time–frequency content in a signal. In the example given, wavelets improved the detection of spectral shift and compressed data 1000-fold without degrading the quality of the 2D wavelet-compressed PCA model. The example concerned an industrial process-monitoring situation where near-infrared spectra are measured on-line on top of a conveyer belt filled with wood chips at a Swedish pulp plant. Copyright © 2001 John Wiley \& Sons, Ltd.},
	language = {en},
	number = {4},
	urldate = {2021-11-02},
	journal = {Journal of Chemometrics},
	author = {Trygg, Johan and Kettaneh-Wold, Nouna and Wallbäcks, Lars},
	year = {2001},
	keywords = {2D wavelet transform, NIR, near-infrared spectroscopy, on-line process monitoring, outlier detection, time series compression, wavelet power spectrum},
	pages = {299--319},
}

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