Computational effort and convergence problems can pose serious challenges when employing advanced thermodynamic models in process simulation and optimization. Data-based surrogate modeling helps to overcome these problems at the cost of additional modeling effort. The present work extends the range of methods for efficient data-based surrogate modeling of liquid-liquid equilibria. A new model formulation is presented that enables smaller surrogates with box-constrained input domains and reduced input dimensions. Sample data are generated efficiently by using numerical continuation. The new methods are demonstrated for the surrogate modeling and optimization of a process for the hydroformylation of 1-decene in a thermomorphic multiphase system.
CITATION STYLE
Kunde, C., Keßler, T., Linke, S., McBride, K., Sundmacher, K., & Kienle, A. (2019). Surrogate modeling for liquid-liquid equilibria using a parameterization of the binodal curve. Processes, 7(10). https://doi.org/10.3390/pr7100753
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