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Investigating microcrystalline cellulose crystallinity using Raman spectroscopy
by
Faisal Waleed
, Moynihan, Humphrey A
, Vucen Sonja
, Crean Abina M
, Farag Fatma
, Queiroz Ana Luiza P
, Lawrence, Simon E
, Kerins, Brian M
, Yadav Jayprakash
, Healy, Anne-Marie
, Crowley, Mary Ellen
in
Applications programs
/ Cellulose
/ Crystal structure
/ Crystalline cellulose
/ Crystallinity
/ Dependent variables
/ Downstream effects
/ Independent variables
/ Least squares method
/ Principal components analysis
/ Raman spectra
/ Raman spectroscopy
/ Regression models
/ Spectrum analysis
/ Variability
2021
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Investigating microcrystalline cellulose crystallinity using Raman spectroscopy
by
Faisal Waleed
, Moynihan, Humphrey A
, Vucen Sonja
, Crean Abina M
, Farag Fatma
, Queiroz Ana Luiza P
, Lawrence, Simon E
, Kerins, Brian M
, Yadav Jayprakash
, Healy, Anne-Marie
, Crowley, Mary Ellen
in
Applications programs
/ Cellulose
/ Crystal structure
/ Crystalline cellulose
/ Crystallinity
/ Dependent variables
/ Downstream effects
/ Independent variables
/ Least squares method
/ Principal components analysis
/ Raman spectra
/ Raman spectroscopy
/ Regression models
/ Spectrum analysis
/ Variability
2021
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Investigating microcrystalline cellulose crystallinity using Raman spectroscopy
by
Faisal Waleed
, Moynihan, Humphrey A
, Vucen Sonja
, Crean Abina M
, Farag Fatma
, Queiroz Ana Luiza P
, Lawrence, Simon E
, Kerins, Brian M
, Yadav Jayprakash
, Healy, Anne-Marie
, Crowley, Mary Ellen
in
Applications programs
/ Cellulose
/ Crystal structure
/ Crystalline cellulose
/ Crystallinity
/ Dependent variables
/ Downstream effects
/ Independent variables
/ Least squares method
/ Principal components analysis
/ Raman spectra
/ Raman spectroscopy
/ Regression models
/ Spectrum analysis
/ Variability
2021
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Investigating microcrystalline cellulose crystallinity using Raman spectroscopy
Journal Article
Investigating microcrystalline cellulose crystallinity using Raman spectroscopy
2021
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Overview
Microcrystalline cellulose (MCC) is a semi-crystalline material with inherent variable crystallinity due to raw material source and variable manufacturing conditions. MCC crystallinity variability can result in downstream process variability. The aim of this study was to develop models to determine MCC crystallinity index (%CI) from Raman spectra of 30 commercial batches using Raman probes with spot sizes of 100 µm (MR probe) and 6 mm (PhAT probe). A principal component analysis model separated Raman spectra of the same samples captured using the different probes. The %CI was determined using a previously reported univariate model based on the ratio of the peaks at 380 and 1096 cm−1. The univariate model was adjusted for each probe. The %CI was also predicted from spectral data from each probe using partial least squares regression models (where Raman spectra and univariate %CI were the dependent and independent variables, respectively). Both models showed adequate predictive power. For these models a general reference amorphous spectrum was proposed for each instrument. The development of the PLS model substantially reduced the analysis time as it eliminates the need for spectral deconvolution. A web application containing all the models was developed.Graphic abstract
Publisher
Springer Nature B.V
Subject
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