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Designing multi-responsive polymers using latent variable methods
Authors:Jenny Mayra Guicela Tzoc Torres  Emily Nichols  John F MacGregor  Todd Hoare
Affiliation:1. ProSensus Inc., 303-1425 Cormorant Road, Ancaster, Ontario L9G 4V5, Canada;2. Department of Chemical Engineering, McMaster University, 1280 Main Street West, Hamilton, Ontario L8S 4L7, Canada
Abstract:The design of stimulus-responsive materials, particularly those intended to respond to more than one stimulus, is an inherently challenging and typically trial-and-error process involving multiple synthesis/characterization iterations in the laboratory. In this work, latent variable models are applied to existing, “failed” polymer formulations and characterizations to facilitate the rational design of materials with specific, targeted properties and to predict responsive polymer properties before synthesizing the materials in the laboratory. The models are capable of simultaneously predicting three targeted polymer properties (cloud point, molecular weight, and % recovery of polymer mass) for poly(N-isopropylacrylamide)-based materials that can be reversibly photo-crosslinked. Model inversion and optimization are used to identify new polymer formulations that exhibit significantly improved properties relative to the formulations developed by chemical intuition based on available literature. This model-based design approach moves away from the traditional trial-and-error approach to save time, energy, and resources in the production of novel materials while at the same time generating responsive polymers with improved properties.
Keywords:Smart material design  Latent variable models  Polymer optimization
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