TY - JOUR
T1 - The gamma distribution model for pulsed-field gradient NMR studies of molecular-weight distributions of polymers
AU - Roding, Magnus
AU - Bernin, Diana
AU - Jonasson, Jenny
AU - Sarkka, Aila
AU - Topgaard, Daniel
AU - Rudemo, Mats
AU - Nyden, Magnus
PY - 2012
Y1 - 2012
N2 - Self-diffusion in polymer solutions studied with pulsed-field gradient nuclear magnetic resonance (PFG NMR) is typically based either on a single self-diffusion coefficient, or a log-normal distribution of self-diffusion coefficients, or in some cases mixtures of these. Experimental data on polyethylene glycol (PEG) solutions and simulations were used to compare a model based on a gamma distribution of self-diffusion coefficients to more established models such as the single exponential, the stretched exponential, and the log-normal distribution model with regard to performance and consistency. Even though the gamma distribution is very similar to the log-normal distribution, its NMR signal attenuation can be written in a closed form and therefore opens up for increased computational speed. Estimates of the mean self-diffusion coefficient, the spread, and the polydispersity index that were obtained using the gamma model were in excellent agreement with estimates obtained using the log-normal model. Furthermore, we demonstrate that the gamma distribution is by far superior to the log-normal, and comparable to the two other models, in terms of computational speed. This effect is particularly striking for multi-component signal attenuation. Additionally, the gamma distribution as well as the log-normal distribution incorporates explicitly a physically plausible model for polydispersity and spread, in contrast to the single exponential and the stretched exponential. Therefore, the gamma distribution model should be preferred in many experimental situations. (C) 2012 Elsevier Inc. All rights reserved.
AB - Self-diffusion in polymer solutions studied with pulsed-field gradient nuclear magnetic resonance (PFG NMR) is typically based either on a single self-diffusion coefficient, or a log-normal distribution of self-diffusion coefficients, or in some cases mixtures of these. Experimental data on polyethylene glycol (PEG) solutions and simulations were used to compare a model based on a gamma distribution of self-diffusion coefficients to more established models such as the single exponential, the stretched exponential, and the log-normal distribution model with regard to performance and consistency. Even though the gamma distribution is very similar to the log-normal distribution, its NMR signal attenuation can be written in a closed form and therefore opens up for increased computational speed. Estimates of the mean self-diffusion coefficient, the spread, and the polydispersity index that were obtained using the gamma model were in excellent agreement with estimates obtained using the log-normal model. Furthermore, we demonstrate that the gamma distribution is by far superior to the log-normal, and comparable to the two other models, in terms of computational speed. This effect is particularly striking for multi-component signal attenuation. Additionally, the gamma distribution as well as the log-normal distribution incorporates explicitly a physically plausible model for polydispersity and spread, in contrast to the single exponential and the stretched exponential. Therefore, the gamma distribution model should be preferred in many experimental situations. (C) 2012 Elsevier Inc. All rights reserved.
KW - Pulsed-field gradient NMR
KW - Self-diffusion
KW - PEG
KW - Polymer
KW - Gamma
KW - distribution
KW - Log-normal distribution
KW - Molecular-weight distribution
UR - https://www.scopus.com/pages/publications/84865144697
U2 - 10.1016/j.jmr.2012.07.005
DO - 10.1016/j.jmr.2012.07.005
M3 - Article
SN - 1096-0856
VL - 222
SP - 105
EP - 111
JO - Journal of Magnetic Resonance
JF - Journal of Magnetic Resonance
ER -