Epure Elena-Luiza, Oniciuc Sîziana Diana, Hurduc Nicolae, Drăgoi Elena Niculina
"Cristofor Simionescu" Faculty of Chemical Engineering and Environmental Protection, Gheorghe Asachi Technical University, 73 Prof. Dr. Doc. D. Mangeron Street, 700050 Iasi, Romania.
Polymers (Basel). 2021 Nov 27;13(23):4151. doi: 10.3390/polym13234151.
The glass transition temperature (Tg) is an important decision parameter when synthesizing polymeric compounds or when selecting their applicability domain. In this work, the glass transition temperature of more than 100 homopolymers with saturated backbones was predicted using a neuro-evolutive technique combining Artificial Neural Networks with a modified Bacterial Foraging Optimization Algorithm. In most cases, the selected polymers have a vinyl-type backbone substituted with various groups. A few samples with an oxygen atom in a linear non-vinyl hydrocarbon main chain were also considered. Eight structural, thermophysical, and entanglement properties estimated by the quantitative structure-property relationship (QSPR) method, along with other molecular descriptors reflecting polymer composition, were considered as input data for Artificial Neural Networks. The Tg's neural model has a 7.30% average absolute error for the training data and 12.89% for the testing one. From the sensitivity analysis, it was found that cohesive energy, from all independent parameters, has the highest influence on the modeled output.
玻璃化转变温度(Tg)是合成聚合物化合物或选择其适用领域时的一个重要决策参数。在这项工作中,使用一种将人工神经网络与改进的细菌觅食优化算法相结合的神经进化技术,预测了100多种具有饱和主链的均聚物的玻璃化转变温度。在大多数情况下,所选聚合物具有被各种基团取代的乙烯基型主链。还考虑了一些在直链非乙烯基烃主链中含有氧原子的样品。通过定量结构-性质关系(QSPR)方法估算的八种结构、热物理和缠结性质,以及其他反映聚合物组成的分子描述符,被视为人工神经网络的输入数据。Tg的神经模型对训练数据的平均绝对误差为7.30%,对测试数据的平均绝对误差为12.89%。通过敏感性分析发现,在所有独立参数中,内聚能对模型输出的影响最大。