Application of Deep Learning to Polymer Solutions
ORAL
Abstract
Characterizations of the molecular interactions in polymer solutions is a fundamental problem of polymer physics. We developed a framework that utilizes a scaling relationship between solution correlation length ξ=lgν/B and number of monomers g per correlation volume for chains with monomer projection length l and a deep learning approach for evaluation of the B-parameters. The values of Bg and Bth corresponding to exponents ν = 0.588 and 0.5 uniquely describe a solvent quality for the polymer backbone. Applying a convolutional neural network (CNN), we obtained the set {Bg, Bth,} from solution specific viscosity, ηsp, as a function of concentration, c. The CNN was trained by generating a large number of sparse images representing the normalized specific viscosity ηsp/Nw(cl3)1/(3ν-1) in solutions of chains with the weight-average degree of polymerization, Nw. This approach is capable of predicting the B-parameters with a mean absolute percentage error less than 6%. The calculated B-parameters were used to obtain the packing number, Pe and to predict the onset of entanglements in solutions of synthetic polymers and polysaccharides in water, organic solvents, and ionic liquids.
–
Presenters
-
Ryan Sayko
University of North Carolina at Chapel Hill
Authors
-
Ryan Sayko
University of North Carolina at Chapel Hill
-
Michael S Jacobs
Oak Ridge National Laboratory
-
Marissa Dominijanni
University at Buffalo
-
Andrey V Dobrynin
University of North Carolina at Chapel Hill, University of North Carolina, University of North Carolina Chapel Hill