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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