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Article Dans Une Revue Chemical Engineering Science Année : 2008

Flash-Point prediction for binary partially miscible aqueous-organic mixtures

Horng-Jang Liaw
  • Fonction : Auteur
Chien Tsun Chen
  • Fonction : Auteur
Vincent Gerbaud

Résumé

Flash point is the most important variable used to characterize fire and explosion hazard of liquids. Herein, partially miscible mixtures are presented within the context of liquid-liquid extraction processes and heterogeneous distillation processes. This paper describes development of a model for predicting the flash point of binary partially miscible mixtures of aqueous-organic system. To confirm the predictive efficiency of the derived flash points, the model was verified by comparing the predicted values with the experimental data for the studied mixtures: water + 1-butanol; water + 2-butanol; water + isobutanol; water + 1-pentanol; and, water + octane. Results reveal that immiscibility in the two liquid phases should not be ignored in the prediction of flash point. Overall, the predictive results of this proposed model describe the experimental data well when using the LLE and VLE parameters to estimate sequentially the span of two liquid phases and the flash point, respectively. Potential application for the model concerns the assessment of fire and explosion hazards, and the development of inherently safer designs for chemical processes containing binary partially miscible mixtures of aqueous-organic system.
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Dates et versions

hal-03580226 , version 1 (18-02-2022)

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Horng-Jang Liaw, Chien Tsun Chen, Vincent Gerbaud. Flash-Point prediction for binary partially miscible aqueous-organic mixtures. Chemical Engineering Science, 2008, 6 (18), pp.4543-4554. ⟨10.1016/j.ces.2008.06.005⟩. ⟨hal-03580226⟩
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