Comparison of Machine Learning Approaches for Prediction of the Equivalent Alkane Carbon Number for Microemulsions Based on Molecular Properties
Nicholas R. Furth,
Adam E. Imel,
Thomas A. Zawodzinski
Abstract:The chemical properties of oils are vital in the design of microemulsion systems. The hydrophilic−lipophilic difference equation used to predict microemulsions' phase behavior expresses the oils' physiochemical properties as the equivalent alkane carbon number (EACN). The experimental determination of EACN requires knowledge of the temperature dependence of the microemulsion system and the effects of different surfactant concentrations. Thus, the experimental determination is timeintensive and tedious, requiri… Show more
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