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Prediction of miscible mixtures flash-point from UNIFAC group contribution methods

机译:用UNIFAC组贡献方法预测可混溶混合物的闪点

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摘要

Flash point is one of the most important variables used to characterize fire and explosion hazard of liquids. This paper predicts the flash point of miscible mixtures by using the flash point prediction model of Liaw and Chiu (J. Hazard. Mater. 137 (2006) 38-46) handling non-ideal behavior through liquid phase activity coefficients evaluated with UNIFAC-type models, which do not need experimentally regressed binary parameters. Validation of this entirely predictive model is conclusive with the experimental data over the entire flammable composition range for twenty four flammable solvents and aqueous-organic binary and ternary mixtures, ideal mixtures as well as Raoult's law negative or positive deviation mixtures. All the binary-mixture types, which are known to date, have been included in the validated samples. It is also noticed that the greater the deviation from Raoult's law, the higher the probability for a mixture to exhibit extreme (minimum or maximum) flash point behavior, provided that the pure compound flash point difference is not too large. Overall, the modified UNIFAC-Dortmund 93 is recommended, due to its good predictive capability and more completed database of binary interaction parameters. Potential application for this approach concerns the classification of flammable liquid mixtures in the implementation of GHS.
机译:闪点是用于表征液体着火和爆炸危险的最重要变量之一。本文使用Liaw和Chiu的闪点预测模型(J. Hazard。Mater。137(2006)38-46)通过用UNIFAC型评估的液相活度系数来处理非理想行为,从而预测可混溶混合物的闪点。不需要实验回归的二进制参数的模型。这个完全可预测的模型的验证与在二十四种可燃溶剂和水性有机二元和三元混合物,理想混合物以及拉乌尔定律的负偏差或正偏差混合物的整个易燃成分范围内的实验数据相一致。迄今为止,所有已知的二元混合物类型均已包含在经过验证的样品中。还应注意的是,如果纯化合物闪点差不会太大,则与拉乌尔定律的偏差越大,混合物显示极端(最小或最大)闪点行为的可能性就越大。总体而言,由于其良好的预测能力和更完整的二元相互作用参数数据库,因此建议使用改进的UNIFAC-Dortmund 93。这种方法的潜在应用涉及在实施GHS时对易燃液体混合物的分类。

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