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首页> 外文期刊>Journal of Dispersion Science and Technology >Formula optimization of emulsifiers for preparation of multiple emulsions based on artificial neural networks
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Formula optimization of emulsifiers for preparation of multiple emulsions based on artificial neural networks

机译:基于人工神经网络的多元乳化剂乳化剂配方优化

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Formulation optimization of emulsifiers for preparing multiple emulsions was performed in respect of stability by using artificial neural network (ANN) technique. Stability of multiple emulsions was expressed by the percentage of reserved emulsion volume of freshly prepared sample after centrifugation. Individual properties of multiple emulsions such as droplet size, 8, viscosity of the primary and the multiple emulsions were also considered. A back-propagation (BP) network was well trained with experimental data pairs and then used as an interpolating function to estimate the stability of emulsions of different formulations. It is found that using mixtures of Span 80 and Tween 80 with different mass ratio as both lipophilic and hydrophilic emulsifiers, multiple W/O/W emulsions can be prepared and the stability is sensitive to the mixed HLB numbers and concentration of the emulsifiers. By feeding ANN with 39 pairs of experimental data, the ANN is well trained and can predict the influences of several formulation variables to the immediate emulsions stability. The validation examination indicated that the immediate stability of the emulsions predicted by the ANN is in good agreement with measured values. ANN therefore could be a powerful tool for rapid screening emulsifier formulation. However, the long-term stability of the emulsions is not good, possibly due to the variation of the HLB number of the mixed monolayers by diffusion of emulsifier molecules, but can be greatly improved by using a polymer surfactant Arlacel P135 to replace the lipophilic emulsifier.
机译:考虑到稳定性,通过使用人工神经网络(ANN)技术对用于制备多种乳液的乳化剂的配方进行了优化。多种乳液的稳定性用离心后新鲜制备的样品的保留乳液体积百分比表示。还考虑了多种乳液的个别性质,例如液滴尺寸,8,主要和多种乳液的粘度。使用实验数据对对反向传播(BP)网络进行了很好的训练,然后将其用作内插函数来估算不同配方乳液的稳定性。发现使用具有不同质量比的Span 80和Tween 80的混合物作为亲脂性和亲水性乳化剂,可以制备多种W / O / W乳液,并且稳定性对混合的HLB数和乳化剂浓度敏感。通过为ANN提供39对实验数据,可以对ANN进行良好的训练,并可以预测几种配方变量对即时乳液稳定性的影响。验证检查表明,ANN预测的乳液的即时稳定性与测量值高度吻合。因此,人工神经网络可以成为快速筛选乳化剂配方的强大工具。但是,乳液的长期稳定性不好,可能是由于乳化剂分子的扩散导致混合单层的HLB数变化所致,但是可以通过使用聚合物表面活性剂Arlacel P135代替亲脂性乳化剂来大大提高乳液的长期稳定性。 。

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