2019 AIChE Annual Meeting
(295a) Group Contribution Method for Organosilicon Compounds
In this work, we aim to build group contribution models for silicon-based compounds to predict the following properties: boiling point, melting point, heat of vaporization, and liquid viscosity. The key to building an accurate and reliable group contribution model is to identify an optimal set of functional groups that form the basis in the representation of the properties. For each property, we use an information-criterion based model selection method to determine a unique set of optimal groups that minimize the chosen information criterion, prevent overfitting, and reduce root mean square error over the training data. Unlike most GC models that are only linear in the number of occurrences of groups, we utilize nonlinear basis functions to capture the effect of group interactions on physical properties in addition to the linear function of occurrences. We also explicitly model the contribution of a variety of structural features. A hierarchical regression method is used to determine the contributions of all present groups, interactions terms, and features. The resulting GC models are embedded in a CAMD framework [3] to exclusively generate organosilicon compounds that can be used as electronics coolants.
[1] J. Marrero and R. Gani, Group-contribution based estimation of pure component properties, Fluid Phase Equilibria, 183â184, 183â208, 2001
[2] J. Marrero and R. Gani, Group-contribution based estimation of octanol/water partition coefficient and aqueous stability, Industrial & Engineering Chemistry Research, 41, 6623â6633, 2002
[3] A. Samudra and N. V. Sahinidis, Optimization-based framework for computer-aided molecular design, AIChE Journal, 59, 3686â3701, 2013