Abstract:
The temperature profile of the seeded suspension polymerization process was optimized to maximize molecular
weight, shell thickness and monomer conversion ratio of core–shell polymer particles. Extreme learning machine
radial basis function neural networks with R2 values greater than 0.93 were developed, to predict polymer
properties at any point in time, using data generated by a computational fluid dynamics model. The optimal
combination of input parameters for each neural network was selected from a pool of 44 variables, by using a
weight-based method that uses a support vector regression model, and a global exhaustive search algorithm,
consecutively. The neural networks developed were incorporated into a genetic algorithm that maximizes the
molecular weight, monomer conversion ratio and shell thickness. The optimum temperature profile generated by
the algorithm satisfactorily maximized all target polymer properties. This study also demonstrates that a support
vector machine classifier could be reliably used for imposing nonlinear inequality constraints for solving dynamic
optimization problems.
Citation:
Jayaweera, C. D., & Narayana, M. (2021). Multi-objective dynamic optimization of seeded suspension polymerization process. Chemical Engineering Journal, 426, 130797. https://doi.org/10.1016/j.cej.2021.130797