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Dipolar Filtered magic-sandwich-echoes as a tool for probing molecular motions using time domain NMR
arXiv
Authors: Jefferson G. Filgueiras, Uilson B. da Silva, Giovanni Paro, Marcel N. d'Eurydice, Márcio F. Cobo, Eduardo R. deAzevedo
Year
2017
Paper ID
43957
Status
Preprint
Abstract Read
~2 min
Abstract Words
145
Citations
N/A
Abstract
We present a simple 1H NMR approach for characterizing intermediate to fast regime molecular motions using 1H time-domain NMR at low magnetic field. The method is based on a Goldmann Shen dipolar filter (DF) followed by a Mixed Magic Sandwich Echo (MSE). The dipolar filter suppresses the signals arising from molecular segments presenting sub kHz mobility, so only signals from mobile segments are detected. Thus, the temperature dependence of the signal intensities directly evidences the onset of molecular motions with rates higher than kHz. The DF-MSE signal intensity is described by an analytical function based on the Anderson Weiss theory, from where parameters related to the molecular motion (e.g. correlation times and activation energy) can be estimated when performing experiments as function of the temperature. Furthermore, we propose the use of the Tikhonov regularization for estimating the width of the distribution of correlation times.
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- This paper contributes to the Quantum Chemistry research area in the Quantum Articles archive.
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- We present a simple ^1H NMR approach for characterizing intermediate to fast regime molecular motions using ^1H time-domain NMR at low magnetic field.
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