Prediction of polymer properties using infinite chain descriptors (ICD) and machine learning: Toward optimized dielectric polymeric materials

K Wu, N Sukumar, NA Lanzillo, C Wang… - Journal of Polymer …, 2016 - Wiley Online Library
K Wu, N Sukumar, NA Lanzillo, C Wang, R “Rampi” Ramprasad, R Ma, AF Baldwin…
Journal of Polymer Science Part B: Polymer Physics, 2016Wiley Online Library
To facilitate the development of new polymeric materials, we report the development of new
heuristic models to predict the dielectric constant, band gap, dielectric loss tangent, and
glass transition temperatures for organic polymers. A new set of features called infinite chain
descriptors (ICDs) was designed and developed especially to characterize organic
polymers, utilizing methods with minimal dependence on predefined fragment libraries.
Machine learning models were built for the aforementioned properties incorporating best …
Abstract
To facilitate the development of new polymeric materials, we report the development of new heuristic models to predict the dielectric constant, band gap, dielectric loss tangent, and glass transition temperatures for organic polymers. A new set of features called infinite chain descriptors (ICDs) was designed and developed especially to characterize organic polymers, utilizing methods with minimal dependence on predefined fragment libraries. Machine learning models were built for the aforementioned properties incorporating best practices in the field such as objective feature selection, cross‐validation and external test sets. All models produced in this study showed good performance in prediction. A web tool has been developed and has been made available that supports the input of novel structures. © 2016 Wiley Periodicals, Inc. J. Polym. Sci., Part B: Polym. Phys. 2016, 54, 2082–2091.
Wiley Online Library
以上显示的是最相近的搜索结果。 查看全部搜索结果