2020 Virtual AIChE Annual Meeting
(83a) A New Group Contribution Method for Organosilicon Structures and Its Application in the Design of Electronics Cooling Fluids
In this work, we develop group contribution models for silicon-based compounds with a focus on functional group selection. We formulate an optimization problem to decompose each molecular structure into the smallest number of non-overlapping sub-molecular groups. Each resulting functional group is structurally simple but holds maximum information. Additionally, we propose a hierarchical tree structure to represent the multi-level relationships among different orders of functional groups. Higher-order functional groups in this tree are selected if and only if their corresponding lower-order constituents are selected. For each property data set, we select a model by minimizing an information criterion, thus preventing overfitting, reducing root mean square error over the training data, and increasing generalization. The black-box modeling tool ALAMO [2] is used to solve the constrained regression problem with an objective to minimize Bayesian Information Criterion (BIC). The resulting GC models are embedded in a CAMD framework [3] to generate organosilicon compounds to 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] A. Cozad, N. V. Sahinidis and D. C. Miller, Learning surrogate models for simulation-based optimization, AIChE Journal, 60, 2211-2227, 2014.
[3] A. Samudra and N. V. Sahinidis, Optimization-based framework for computer-aided molecular design, AIChE Journal, 59:3686â3701, 2013