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首页> 外文期刊>Journal of Colloid and Interface Science >Molecular surface area based predictive models for the adsorption and diffusion of disperse dyes in polylactic acid matrix
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Molecular surface area based predictive models for the adsorption and diffusion of disperse dyes in polylactic acid matrix

机译:基于分子表面积的分散染料在聚乳酸基质中吸附和扩散的预测模型

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Two predictive models were presented for the adsorption affinities and diffusion coefficients of disperse dyes in polylactic acid matrix. Quantitative structure-sorption behavior relationship would not only provide insights into sorption process, but also enable rational engineering for desired properties. The thermodynamic and kinetic parameters for three disperse dyes were measured. The predictive model for adsorption affinity was based on two linear relationships derived by interpreting the experimental measurements with molecular structural parameters and compensation effect: AH vs. dye size and AS vs, AN. Similarly, the predictive model for diffusion coefficient was based on two derived linear relationships: activation energy of diffusion vs. dye size and logarithm of pre-exponential factor vs. activation energy of diffusion. The only required parameters for both models are temperature and solvent accessible surface area of the dye molecule. These two predictive models were validated by testing the adsorption and diffusion properties of new disperse dyes. The models offer fairly good predictive ability. The linkage between structural parameter of disperse dyes and sorption behaviors might be generalized and extended to other similar polymer-penetrant systems. (C) 2015 Elsevier Inc. All rights reserved.
机译:针对分散染料在聚乳酸基质中的吸附亲和力和扩散系数,提出了两种预测模型。定量的结构-吸附行为关系不仅可以提供对吸附过程的深入了解,还可以对所需的性能进行合理的设计。测量了三种分散染料的热力学和动力学参数。吸附亲和力的预测模型基于两个线性关系,这些线性关系是通过解释具有分子结构参数和补偿效果的实验测量值得出的:AH对染料大小和AS对AN。同样,扩散系数的预测模型基于两个导出的线性关系:扩散的活化能与染料的大小以及指数前因子的对数与扩散的活化能。这两个模型唯一需要的参数是染料分子的温度和溶剂可及表面积。通过测试新型分散染料的吸附和扩散特性,验证了这两种预测模型。这些模型提供了相当好的预测能力。分散染料的结构参数和吸附行为之间的联系可能会得到推广,并扩展到其他类似的聚合物渗透体系。 (C)2015 Elsevier Inc.保留所有权利。

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