Please use this identifier to cite or link to this item: https://hdl.handle.net/10356/171447
Title: Transfer learning of full molecular weight distributions via high-throughput computer-controlled polymerization
Authors: Tan, Jin Da
Ramalingam, Balamurugan
Wong, Swee Liang
Cheng, Jayce Jian Wei
Lim, Yee-Fun
Chellappan, Vijila
Khan, Saif A.
Kumar, Jatin
Hippalgaonkar, Kedar
Keywords: Engineering::Materials
Issue Date: 2023
Source: Tan, J. D., Ramalingam, B., Wong, S. L., Cheng, J. J. W., Lim, Y., Chellappan, V., Khan, S. A., Kumar, J. & Hippalgaonkar, K. (2023). Transfer learning of full molecular weight distributions via high-throughput computer-controlled polymerization. Journal of Chemical Information and Modeling, 63(15), 4560-4573. https://dx.doi.org/10.1021/acs.jcim.3c00504
Project: A1898b0043 
Journal: Journal of Chemical Information and Modeling 
Abstract: The skew and shape of the molecular weight distribution (MWD) of polymers have a significant impact on polymer physical properties. Standard summary metrics statistically derived from the MWD only provide an incomplete picture of the polymer MWD. Machine learning (ML) methods coupled with high-throughput experimentation (HTE) could potentially allow for the prediction of the entire polymer MWD without information loss. In our work, we demonstrate a computer-controlled HTE platform that is able to run up to 8 unique variable conditions in parallel for the free radical polymerization of styrene. The segmented-flow HTE system was equipped with an inline Raman spectrometer and offline size exclusion chromatography (SEC) to obtain time-dependent conversion and MWD, respectively. Using ML forward models, we first predict monomer conversion, intrinsically learning varying polymerization kinetics that change for each experimental condition. In addition, we predict entire MWDs including the skew and shape as well as SHAP analysis to interpret the dependence on reagent concentrations and reaction time. We then used a transfer learning approach to use the data from our high-throughput flow reactor to predict batch polymerization MWDs with only three additional data points. Overall, we demonstrate that the combination of HTE and ML provides a high level of predictive accuracy in determining polymerization outcomes. Transfer learning can allow exploration outside existing parameter spaces efficiently, providing polymer chemists with the ability to target the synthesis of polymers with desired properties.
URI: https://hdl.handle.net/10356/171447
ISSN: 1549-9596
DOI: 10.1021/acs.jcim.3c00504
Schools: School of Materials Science and Engineering 
Organisations: Institute of Materials Research & Engineering, A*STAR 
Institute of Functional Intelligent Materials, NUS 
Rights: © 2023 American Chemical Society. All rights reserved.
Fulltext Permission: none
Fulltext Availability: No Fulltext
Appears in Collections:MSE Journal Articles

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