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Predicting polymer solubility from phase diagrams to compatibility: a perspective on challenges and opportunities.

Jeffrey G EthierEvan R AntoniukBlair K Brettmann
Published in: Soft matter (2024)
Polymer processing, purification, and self-assembly have significant roles in the design of polymeric materials. Understanding how polymers behave in solution ( e.g. , their solubility, chemical properties, etc. ) can improve our control over material properties via their processing-structure-property relationships. For many decades the polymer science community has relied on thermodynamic and physics-based models to aid in this endeavor, but all rely on disparate data sets and use-case scenarios. Hence, there are still significant challenges to predict a priori the solubility of a polymer, whether it is for selecting sustainable solvents, obtaining thermodynamic parameters for phase separation, or navigating the coexistence curve. This perspective aims to discuss the different approaches of applying computational tools to predict polymer solubility, with a significant focus on machine learning techniques to capture the rapid progress in that space. We examine challenges and opportunities that remain for creating a comprehensive solubility toolset that can accelerate the design of a broad range of applications including films, membranes, and pharmaceuticals.
Keyphrases
  • machine learning
  • public health
  • climate change
  • artificial intelligence
  • loop mediated isothermal amplification